On the Feasibility of Using NASS's Sampling List Frame to Evaluate Misclassification Errors of the June Area Survey

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Agricultural Surveys Program

On the Feasibility of Using NASS's Sampling List Frame to Evaluate Misclassification Errors of the June Area Survey

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United States
Department of
Agriculture

National
Agricultural
Statistics
Service
Research and
Development Division
Washington DC 20250
RDD Research Report
Number RDD-11-01

On the Feasibility of
Using NASS’s Sampling
List Frame to Evaluate
Misclassification Errors
of the June Area Survey
Denise A. Abreu
Andrea C. Lamas
Hailin Sang
Kenneth K. Lopiano
Pam Arroway
Linda J. Young

October 2011

This report was prepared for limited distribution to the research community outside the United
States Department of Agriculture. The views expressed herein are not necessarily those of the
National Agricultural Statistics Service or of the United States Department of Agriculture.

EXECUTIVE SUMMARY
During the past three years, the National Agricultural Statistics Service (NASS) has made an
effort to address, quantify and adjust for misclassification on its annual June Area Survey (JAS).
Misclassification occurs (1) when an operating arrangement is identified as a non-farm but
qualifying agricultural activity is present or (2) when a non-farm arrangement is incorrectly
identified as a farm. A farm is defined as a place from which $1,000 or more of agricultural
products were produced and sold, or normally would have been sold, during the year, and the
computation includes any government agricultural payments received. Misclassification is a
direct cause of an undercount in the number of farms indication produced annually by the JAS.
Through a cooperative agreement between NASS and the National Institute of Statistical
Sciences (NISS), a research team was created in 2009 to review the methodology associated with
the JAS and to recommend changes that would address this undercount. In 2009, the team
evaluated the use of the 2007 Census of Agriculture mailing list (CML) to assess
misclassification on the 2007 JAS. The results indicated that the CML was a rich source to
account for the undercount of farms on the JAS. However, the CML is only available every five
years. Because the JAS is an annual survey, misclassification should be assessed each year.
NASS maintains a list of farmers and ranchers, referred to as the list frame, from which the
yearly list-based surveys’ samples are selected. The list frame is updated on an on-going basis
and operators are categorized as either active or inactive. Active list records are those assumed
to have a high likelihood of being farming operations. Inactive records are those such as
deceased operators, farms no longer in business, idle facilities, landlords, etc. Many of the active
records represent agricultural establishments that operate land but do not have sufficient
production to be classified as a farm in a specific year. However, they are maintained on the list
frame as active records to help ensure high coverage of farms for the Census of Agriculture
every five years. There are also pure active status inaccuracies that exist on the list frame. That
is, there are records identified as "active" that are out-of-business or no longer operate any
agricultural land or facilities. The team is exploring the potential of using the list frame on a
yearly basis to assess misclassification on the JAS.
After the 2007 Census of Agriculture, the farm/non-farm status of 2007 list frame records was
evaluated. This analysis showed that 72 percent of the active records on the list frame were
identified as farms on the census. Thus, 28 percent of the records identified as active on the list
frame were actually non-farms. This indicates that the census list frame contains active records
that are not associated with farms (farm status inaccuracies). A similar distribution of list frame
farm status inaccuracies is anticipated for non-census years. For this work, the 2009 JAS records
were matched to the 2009 list frame and to the 2009 Farm Numbers Research Project (FNRP)
records. Characteristics associated with matched records that agreed and disagreed in the
farm/non-farm classification were explored. Subsequent efforts will focus on whether these
characteristics could be used to effectively model the probability that a list frame record is a
farm.

The results showed that 2,068 list frame records matched to FNRP records. Of these, 246
represented operations incorrectly identified as farms (using an algorithm based on active status
and total value of sales) on the list frame. These misclassified operations were mostly active
ones, and they were spread evenly across the various cultivated strata with only a few occurring
in the agri-urban or commercial strata. Half were small with less than $10,000 in agricultural
sales; 46 percent had $10,000 to $250,000 in sales, and the remaining operations had sales
exceeding $250,000. An additional 61 operations were identified as non-farms on the list frame
but were farms according to the FNRP. These operations were located primarily on nonagricultural tracts without potential and represented marginal farms with less than $10,000 in
value of sales.
Of the 2,068 list frame operations that matched to FNRP, 1,276 had a completed FNRP interview
and 792 had their FNRP data estimated. The characteristics of FNRP tracts incorrectly identified
as farms on the list frame were similar for both completed and estimated FNRP surveys. The
attributes of the list frame records incorrectly identified as non-farms were also similar for tracts
with completed and estimated surveys.
The overall results of this study showed that the FNRP was an important tool in the identification
of the list frame farm status inaccuracies and confirmed the presence of misclassification on the
list frame. Therefore, if the list frame is used to adjust for misclassification on the JAS without
considering its farm status inaccuracies, the JAS number of farms indication could be biased
upwards.

RECOMMENDATION
1. Research and evaluate potential ways in which the list frame’s farm status
inaccuracies can be reliably identified and excluded from any adjustments to the June
Area Survey (JAS). The results of this analysis confirm the presence of some list frame
farm status inaccuracies. If the list frame is used to adjust for misclassification on the
JAS without considering its farm status inaccuracies, the JAS number of farms indication
could be biased upwards.

On the Feasibility of Using NASS’s Sampling List Frame to Evaluate
Misclassification Errors of the June Area Survey
Denise A. Abreu1, Andrea C. Lamas1, Hailin Sang2, Pam Arroway3,
Kenneth K. Lopiano4, Linda J. Young4

Abstract
During the past three years, the National Agricultural Statistics Service (NASS) has made an
effort to address, quantify, and adjust for an undercount in the number of farms indication from
its annual June Area Survey (JAS), which is based on an area frame. This undercount is a direct
result of the misclassification of agricultural tracts as non-agricultural. The 2007 Census of
Agriculture mailing list (CML) was evaluated as a potential source to assess misclassification on
the 2007 JAS. The CML was found to be a rich source from which to quantify the undercount of
farms on the JAS. However, the CML is only available every five years, and misclassification
on the JAS should be assessed each year. Independently of the area frame, NASS maintains a
list of agricultural operators, referred to as the list frame. Yearly list-based samples are selected
from the list frame. In addition, the list frame serves as the foundation for building the CML.
The list frame is updated on an on-going basis and operators are categorized as either active or
inactive. Although the CML includes all active records, some of these do not qualify as farming
operations. This research report explores the potential of using the list frame on a yearly basis to
assess the misclassification of farms on the JAS.
KEY WORDS: misclassification errors, area frame, list frame, record linkage, re-screening
survey

1

National Agricultural Statistics Service, USDA, 3251 Old Lee Hwy, Fairfax VA 22030
National Institute of Statistical Sciences, 19 T.W. Alexander Drive, Research Triangle Park, NC 27709
3
Department of Statistics, North Carolina State University, Raleigh, NC 27695
4
Department of Statistics, University of Florida, Gainesville, FL 32611
2

1

1.

INTRODUCTION

Each year the National Agricultural Statistics Service (NASS) publishes an estimate of the
number of farms in the United States (U.S.) based on the June Area Survey (JAS). A farm is
defined as a place from which $1,000 or more of agricultural products were produced and sold,
or normally would have been sold, during the year, and the computation includes any
government agricultural payments received. An independent estimate of the number of farms is
published from the quinquennial Census of Agriculture, which is conducted in years ending in 2
and 7. At the end of each five-year period, the annual estimates based on the JAS number of
farms indication are adjusted based on intercensal trends. The annual estimate of the number of
farms from the JAS has been declining steadily between censuses (especially between the 2002
and 2007 Censuses) as depicted in Figure 1. In 2007, the estimate from the JAS was significantly
below that from the census; and the required intercensal trend adjustment to the JAS was
unexpectedly large as shown by the circled area in Figure 1.

Figure 1: Published estimates of the number of U.S. farms from 2000 to 2009 and bars with a length of
one standard error on either side of the estimate.

During previous studies conducted by NASS, misclassification was identified as a source of the
underestimation in the JAS (Abreu 2007; Johnson 2000). Misclassification occurs (1) when an
operating arrangement with qualifying agricultural activity is identified as a non-farm, or (2)
when a non-farm arrangement is incorrectly identified as a farm. One study of misclassification
(Abreu, Dickey and McCarthy, 2009) revealed that some agricultural operations were incorrectly
classified as non-agricultural during JAS pre-screening. These results led to more intensive
efforts to understand the source and extent of misclassification in the JAS so that it could be
addressed. One effort was the Farm Numbers Research Project (FNRP), based on an intensive
post-June survey re-screening in 2009 (Abreu, McCarthy and Colburn, 2010). Concurrently, this
undercount issue was also addressed by a team of researchers formed to review the methodology
associated with the JAS and to recommend changes, through a collaborative agreement with the
National Institute of Statistical Sciences (NISS). This latter team consists of two NASS
researchers, two university faculty members, a post doctoral fellow, and a graduate student. The
team has considered several measures to address the issue of misclassification on the JAS.
Through matching the JAS to the Census of Agriculture list frame, the team evaluated

2

misclassification on the JAS (Abreu, et al. 2010) and then developed appropriate methodology to
adjust for misclassification during non-census years (Lamas, et al. 2010). In addition to
misclassification, the team identified non-response as another source contributing to the JAS
undercount. In Lopiano, et al. (2010), the effect of estimation of agricultural activity for some
JAS sampled units is discussed, and methodology for adjusting for both non-response and
misclassification is developed. Because the census is only conducted every fifth year, the team
further proposed a yearly follow-on survey to the JAS called the Annual Land Utilization Survey
(ALUS) (Arroway et al. 2010). ALUS would make the JAS a two-phase sample. In addition to
providing information about misclassification of farms and non-farms, it would allow for proper
assessment of misclassification and result in an improvement in all JAS indications. However,
because ALUS would lead to greater costs associated with the JAS, alternative methods that
would not require enumerators to collect further data are attractive. One possibility is to use
NASS’s annual list frame to assess misclassification in the JAS during non-census years. The
team’s current effort is focused on evaluating the potential for this approach. The initial results
are discussed in this report.
2.

THE JUNE AREA SURVEY (JAS)

The June Area Survey (JAS) is based on an area-frame and collects information about U.S.
crops, livestock, grain storage capacity, and type and size of farms. The distribution of crops and
livestock can vary considerably within each state in the United States. Therefore, the precision of
the survey indications can be substantially improved by dividing the land within each state into
homogeneous groups (strata) and optimally allocating the total sample to the strata. The basic
stratification employed by NASS involves: (1) dividing the land into land-use strata such as
intensively cultivated land, urban areas and range land, and (2) further dividing each land-use
stratum into substrata by grouping areas that are agriculturally similar. The JAS uses a sample
comprised of designated land areas (segments) selected from this stratification. A typical
segment is about one square mile (i.e., 640 acres). Each segment is outlined on an aerial photo
that is provided to the appropriate field enumerator (See red outlined area in Figure 2).
Through field enumeration, a segment is divided into tracts of land, each representing a unique
land operating arrangement (Refer to blue outlined areas in Figure 2). An area screening form
that provides an inventory of all tracts within the segment and contains screening questions that
determine whether or not each tract has agricultural activity is completed for all sample
segments. Using this form, all land inside the segment is screened for agricultural activity, and
the screening applies to all land in the identified operating arrangement (both inside and outside
the segment). Those operations (tracts) that qualify as agricultural are subsequently interviewed
using the area version questionnaire, which collects detailed agricultural information about the
operator’s land, again both inside and outside the segment.

3

Figure 2: JAS Segment (outlined in red) and Tract Boundaries (outlined in blue)

The area frame is a theoretically complete sampling frame with every acre of land having a
known probability of selection. As such, it is used to estimate the number of farms and land in
farms independently of the list frame. The area frame also provides a measure of incompleteness
in the list. The JAS uses a replicated sample design. A sample rotation scheme is used to reduce
respondent burden caused by repeated interviewing and to avoid the expense of selecting a
completely new area sample each year. Once selected, a segment stays in the sample for five
years, so that annually, approximately 20 percent of the sampled segments in each land-use
stratum are replaced with newly selected segments in each land-use stratum. Full descriptions of
the JAS design and analysis procedures may be found in Davies (2009) and Lamas et al. (2011),
respectively.
3.

THE NASS LIST FRAME

Each year, NASS conducts hundreds of list-based surveys. The agency maintains a list of
farmers and ranchers from which the samples for these list-based surveys are selected. This list
frame also serves as the foundation for the development of the Census Mail List (CML). NASS
builds and improves the list on an ongoing basis by obtaining outside source lists. Sources
include lists from state and federal government agencies, producer associations, seed growers,
pesticide applicators, veterinarians, marketing associations, and a variety of other agricultural
sources. NASS also obtains special commodity lists to address specific list deficiencies. These
outside source lists are matched to the NASS list using record linkage programs. Most names on
newly acquired lists are already on the NASS list. Records not on the NASS list are treated as
potential farms until NASS can confirm their existence as a qualifying farm. Each operation on
the list frame is categorized as active or inactive. Active list records are assumed to have a high
probability of representing active farming operations. Inactive list records may be associated
with landlords, deceased operators, farms no longer in business, etc. Many of the active records
represent agricultural establishments that operate land but do not have sufficient production to be

4

classified as a farm in a specific year. However, they are maintained on the list frame as active
records to help ensure high coverage of farms for the Census of Agriculture every five years.
There are also pure active status inaccuracies that exist on the list frame. That is, there are
records identified as "active" that are out-of-business or no longer operate any agricultural land
or facilities.
The question being considered here is whether the NASS list frame can be used to assess
misclassification in the JAS in non-census years. After the 2007 Census of Agriculture, the
farm/non-farm status of 2007 list frame records was evaluated. Seventy-two percent of the active
list frame records matched to farms on the census. The remaining 28 percent were found to be
non-farms,5 indicating that the census list frame contains active records that are not associated
with farming operations (farm status inaccuracies). If the list frame farm status inaccuracies are
not considered when adjusting for misclassification on the JAS, the adjustment for
misclassification will be larger than it should be. Thus, for the list frame to be useful in assessing
misclassification in the JAS, a method of properly accounting for the list frame farm status
inaccuracies must be developed.
4.

THE FARM NUMBERS RESEARCH PROJECT (FNRP)

In 2009, NASS conducted the Farm Numbers Research Project (FNRP). FNRP was a one-time
follow-on survey to the 2009 JAS for the first-year rotation segments (Abreu, McCarthy and
Colburn, 2010). Recall the design of the JAS includes rotating in new segments each year, with
segments staying in the JAS sample for five years. Each year’s sample is comprised of segments
from each of five rotations. Thus, the 2009 JAS contained segments that were rotated into the
sample in 2009, 2008, 2007, 2006 and 2005. The FNRP targeted the 20 percent of JAS segments
that were newly rotated in for 2009 (“2009 segments”). For the FNRP, all tracts in the 2009
segments that were non-agricultural or estimated in JAS were revisited. In our present
framework, FNRP information could subsequently be used to verify the farm/non-farm status of
the 2009 list frame records. That is, FNRP provides the “gold standard” on farm status for 2009
list frame records with the limitation that the FNRP only constituted 20 percent of the 2009 JAS.
5.

MATCHING 2009 JAS TO THE 2009 LIST FRAME

Probabilistic record linkage was used to match all 2009 JAS agricultural and non-agricultural
tracts to the 2009 list frame records in 42 states. The analysis excluded the New England states
because those files were not available at the time the match was processed. The JAS is only
conducted in Hawaii during census years, and Alaska does not have an area frame. Records
were brought together into link groups, each of which possibly represented the same operation.
Routinely, link groups are classified into one of three distinct types: definite match, possible
match or non-match (Broadbent et. al., 1999). Possible matches are identified for Field Office
(FO) staff to review. However, in the interest of saving time and resources, no FO review was
conducted. Instead, only two distinct types of matches were identified: match and non-match.
Eliminating the FO review from the linkage process led to a more conservative approach in
identification of matches and non-matches. That is, to maximize the quality of the final results,

5

Internal analysis conducted by Thomas Jacob of the Information Management Group.

5

all possible matches were treated as non-matches. Consequently, some true matches became nonmatches.
From the 83,203 original JAS tracts, 92,152 names and addresses were identified. These were
prepared and standardized for matching to the list frame. For this linkage, all agricultural and
non-agricultural tracts were considered. Partner records and records with additional information
were also included for each JAS tract to maximize matching results. In addition to the name and
address information, existing area-to-area and area-to-list links were used to bring records
together. After each June survey, FOs conduct a yearly overlap/non-overlap process in which
JAS agricultural tracts are overlapped to the list frame. This provides a measure of list
incompleteness. JAS identification numbers (IDs) are stored for each list frame record
overlapped to the JAS (area-to-list links). In addition, an unduplication of the area frame records
is conducted. The ID of any area record matching another area record (area-to-area links) is
stored. These identification numbers were used during matching to bring records together that
would not have come together solely based on name and address information.
From the 2009 list frame, 4,683,345 names and addresses were prepared and standardized for
matching to the 2009 JAS. This list included both active and inactive records. Every year,
certain records are purged from the list frame, usually because they have been inactive for more
than five years. The only records excluded were those flagged to be purged from the list frame
due to extended inactivity.
When matching, the ideal scenario is to have one area record match one list record. However,
after the initial matching, some link groups had more than one tract and others had more than one
list frame record. Although the area file was set up to have only one tract per link group, in some
cases, more than one tract occurred in a link group, indicating that different tracts matched to the
same list records. To address this issue, tracts were split into separate groups and all list records
that matched were assigned to both split groups. When multiple list records matched one tract,
the list frame records were ranked and based on their active/inactive status, the “best” one was
selected using the following rules:
Ranks Used to Assign the Best of Several List Frame Records to a JAS Tract
Rank List Record Type Description
1
Active target
Assumed to be farming operations
2
Potential CML
Non-respondents to any of the agricultural surveys conducted
routinely to update active status of the list frame
3
Active partner
Partners associated with active target
4
Inactive
Deceased operators, farms no longer in business, idle facilities,
landlords, etc.
5
Other
Hired managers, etc.

6

6.

RESULTS

The results of the linkage yielded 41,926 matches. Table 1 shows the breakdown of the matched
tracts by type of agricultural tract as identified in the JAS. The vast majority of the matches
were to agricultural tracts (86.4 percent). This is not surprising because the list frame is targeted
for agricultural operations, and agricultural tracts have the most complete name and address
information. During JAS screening procedures, non-agricultural tracts are classified into the
following three types: potential for agriculture unknown, having potential for agriculture, and not
having potential for agriculture. Non-agricultural tracts without potential comprised almost 12
percent of all the matches.
Table 1. Matched JAS and List Frame Records by Type of Agriculture as Identified by the JAS
Type of Agricultural Tract
Number Tracts Matched Percent
36,245
86.4
Agricultural tracts
546
1.3
Non-agricultural tracts w/ potential
0.6
Non-agricultural tracts w/ unknown potential 240
4,895
11.7
Non-agricultural tracts w/out potential
41,926
100
Totals
Further evaluating the matches by the rank, Table 2 shows that 87.6 percent of the matches were
to active list frame records. Additionally, 3.1 percent were matches to potential CML records,
and 9.1 percent were to inactive list frame records. Routine follow-up for the list frame does not
include the inactive list frame records so their farm status will be difficult to determine.
Table 2. Results of “Best” List Records Matched to Area Tracts
List Record Rank
Total Tracts Records
Percent
Active target - 1
Potential CML - 2
Active partner - 3
Inactive – 4
Other -5
Totals

36,725
1,320
27
3,831
23
41,926

87.6
3.1
0.1
9.1
0.1
100.0

The results of the initial matching of the area tracts and/or list frame records are displayed in
Table 3 below. Notice that, as described earlier, some link groups had more than one list frame
record and/or more than one JAS tract. Only link groups with one JAS tract matching to the list
frame records are considered for evaluating the farm/non-farm status of the list frame records. In
addition, any tract matching 10 or more list frame records was excluded from further analysis.
Thus, the highlighted cells in Table 3 represent the 36,439 matched records that are considered
here (23,951 were 1-to-1 matches, 12,488 were 1-to-many). Again, for the link groups with 2 or
more list frame records, only the best ranked one was selected. All results that follow focus on
the 36,439 matches.

7

Table 3. Numbers of Link Groups for Each Combination of Number of JAS Tracts and Number
of List Frame Records Within a Link Group6
Tracts in
Number of List Records per Link Group
Link
Total
1
2
3
4
5
6
7
8
9
10+
Group
23,951 6,412
3,008 1,401 784
426
230
130
97
224
36,663
1
1,364
1,028
694
436
836
4,358
2
96
111
92
305
604
3
19
40
242
301
4+
23,951 7,776
3,104 2,448 784 1,231
230
606 189 1,607
41,926
Total
7.

ASSESSING THE LIST FRAME’S FARM/NON-FARM STATUS

Each JAS agricultural tract was identified as a farm or non-farm in June based on whether it had
$1,000 in sales of agricultural products or 1,000 points based on the potential for agricultural
products produced (if sales were less than $1,000), and the computation includes any
government agricultural payments received. All non-agricultural tracts were considered nonfarms. Identifying farms on the list frame is important because list frame records lack a
farm/non-farm status. Subject-matter experts from the List Frame Section recommended
assigning farm status based on the active status code and total value of sales. This approach was
adopted and led to the following algorithm for assigning farm status to the list frame records:
1) For active records (AS = 0) records, an operation is identified as a farm if sales exceeded
$1000; otherwise it is taken to be a non-farm.
2) All inactive records (AS = 1 - 8, 10 - 19) are identified as non-farms based on
enumerator information, regardless of any sales value on the records.
3) The census-only records (AS = 9) are generally present so that farms in multiple counties
or multiple states are represented for census purposes, but not for the survey program.
These are not considered further.
4) The farm status of the records assigned AS = 30-31 and 33– 36 are unknown.
5) Operations with AS = 32 are receiving CRP payments and are considered farms.
6) An operation headquartered out of state is assigned AS = 40 and is assumed to be a farm.
7) An operation that has a major name change (AS = 41) is assumed to be a non-farm.
Farm status was assigned to each JAS tract matched to a list record. In Table 4, the number of
list frame farms, non-farms and unknowns by their agricultural/non-agricultural status on the
JAS are shown. Recall that the farm status for the list frame records with active status code 30-31
and 33-36 is not known (“List Farm Status Unknown” column in Table 4 below). Utilizing the
sales class information to assign farm status would have resulted in 808, or about 68 percent, of
the 1,185 records being identified as having some agricultural activity. Because the proportion of
these records that represent farms may differ from the proportion in the other list frame records,
they are treated separately from the other matched records. The farm/non-farm status of the list
frame records by rank is displayed in Table 5 below. The farm/non-farm status of matched
records for both the list frame and the JAS is shown in Table 6 below.
6

All results that follow will be focused on the highlighted cells in Table 3.

8

Table 4. Farm Status Assignment for 2009 List Frame Records
List NonList
Type of Agricultural Tract
Farm
Farm
1,911
28,626
Agricultural tracts
195
281
Non-agricultural tracts w/ potential
73
128
Non-agricultural tracts w/ unknown
potential
2,108
1,882
Non-agricultural tracts w/out potential
4,287
30,967
Totals

List Farm Status
Unknown
808
39
20

31,395
515
221

318
1,185

4,308
36,439

Table 5. Farm/Non-farm Status of List Frame Records by Rank
List NonList Farm Status
Rank
List Farm
Farm
Unknown
814
30,711
0
Active target – 1
0
69
1,185
Potential CML - 2
0
24
0
Active partner – 3
3,473
156
0
Inactive – 4
0
7
0
Other -5
4,287
30,967
1,185
Total

Total
31,525
1,254
24
3629
7
36,439

Table 6. Farm/Non-farm Status of Matched List Frame and JAS Records
Farm/Non-farm
List Non-Farm
List Farm
List Farm Status
Status
Unknown
2,729
2,694
464
JAS Non-Farm
1,558
28,273
721
JAS Farm
4,287
30,967
1,185
Total
7.1

Total

Total
5,887
30,552
36,439

Assessing the Accuracy of Farm/Non-farm Status Based on the List Frame

As noted earlier, about 28 percent of the 2007 list frame records identified as active were not
farms for the 2007 Census of Agriculture5. Thus, the farm/non-farm status of the 2009 list frame
records had some misclassification. If the list frame is to be used to assess misclassification in
the JAS, then being able to identify the list frame farm status inaccuracies is important. The
results of the FNRP, discussed earlier, are used here to provide insight into the types of tracts
that are misclassified as farms or non-farms on the list frame. Because the FNRP only
constituted 20 percent of the 2009 JAS, this part of the analysis is limited.
Current NASS procedures define a tract as a unique land operating arrangement; however, for
densely populated tracts, multiple operations (places of interest) may have been erroneously
included for any particular tract during the JAS survey enumeration. For the FNRP, the concept
of subtracts was introduced to address tracts that had multiple places of interest. For a selected
tract, all places of interest were considered subtracts. For enumeration purposes, if eight or more
subtracts were present within a tract, these subtracts were sub-sampled at pre-determined rates.
9

The FNRP sample consisted of 10,204 JAS tracts, which resulted in a total of 17,191subtracts.
Only 2,226 (about 13 percent) FNRP subtracts matched to the list frame. Of these, 2,068 had
only one subtract in the JAS tract. The remaining 158 subtracts were from 52 JAS tracts. These
158 subtracts are not addressed further here because visual inspection is required to link them to
their corresponding list frame record.
7.2

Evaluation of FNRP Records and Their Status on the List Frame

Of the 2,068 matching records, 483 were list non-farms, 1,458 list farms, and 127 list unknowns
(i.e., AS=30-31, 33-36) (Table 7). As mentioned earlier, the FNRP results are the gold standard
and assumed to be accurate. Of the 683 tracts identified as non-farms by both JAS and FNRP,
246 were farms on the list frame. Similarly, 61 operations were incorrectly classified as nonfarms on the list frame and the JAS. Both of these are the list frame farm status inaccuracies and
confirm the presence of misclassification on the list frame.
Table 7. A Comparison of Farm/Non-Farm Status on 2009 JAS, 2009 List Frame, and FNRP

JAS nonfarm
JAS farm
Total

FNRP non-farm
FNRP farm
FNRP non-farm
FNRP farm

List nonfarm
356
61
18
48
483

List farm
246
188
25
999
1,458

List Farm Status
Unknown
81
12
1
33
127

Total
683
261
44
1,080
2,068

Ninety-eight percent of the 246 operations inaccurately identified as farms on the list frame were
identified as active operations (rank 1). However, 77 percent were associated with JAS nonagricultural tracts without potential for agriculture. Only a few of the 246 were from agricultural
tracts. Most of the misclassified operations are in the moderately to highly cultivated strata; very
few of the misclassified operations were in the agri-urban or commercial strata. Even though
half of these misclassified operations were small with less than $10,000 in sales, over 46 percent
of the remaining operations were in the $10,000-$250,000 sales categories. See all related tables
in Appendix A.
Of the 61 operations that were non-farms on the JAS and the list frame but identified as farms by
FNRP, most were marginal farms with less than $10,000 in value of sales, and they were
primarily from JAS non-agricultural tracts without potential. See related tables in Appendix B.
When evaluating the characteristics of the 188 operations that were JAS non-farms, but
identified as farms on both FNRP and the list frame, it is clear that these are correctly classified
on the list frame. Nearly all of them came from JAS tracts identified as non-agricultural without
potential, and they were in the moderately to highly cultivated strata. See all related tables in
Appendix C. Because value of sales was available for both FNRP and list frame farms,
agreement of farming operations from both sources was evaluated. The highlighted cells in
Table 8 below are where the list sales class and FNRP sales class agree; the two sources only
agree about a third of the time. Most of the time the list frame value of sales is higher than that

10

reported in FNRP, indicating that the list frame is over-estimating sales and thus categorizing
operations as having more sales than was reported in FNRP. It is important to note that the
current list frame procedures assign value of sales based on the largest reported values. Thus, it
is not surprising that it overstates sales when compared to FNRP. It does point out that value of
sales alone should not be used to determine farm/non-farm status on the list frame.
Table 8. A Comparison of Sales Class Values for Matched FNRP and List Frame Records with
Highlighted Cells Indicating Agreement Between the Two Sources.7
FNRP Sales Class
$1$1,000- $2,500- $5,000- $10,000- $25,000- $50,000- $100,000- $250,000- $500,000- $1M$999 $2,499 $4,999 $9,999 $24,999 $49,999 $99,999 $249,999 $499,999 $999,999 $2.5M $5M+ Total
$1-$999
0
1
0
0
0
0
0
0
0
0
0
0
1
$1,000-$2,499
0
20
2
2
1
1
0
0
0
0
0
0
26
$2,500-$4,999
0
10
3
3
4
0
1
0
0
0
0
0
21
$5,000-$9,999
0
5
3
6
4
1
1
0
1
0
0
0
21
$10,000-$24,999
0
10
8
6
10
1
1
0
0
1
0
0
37
$25,000-$49,999
0
3
7
7
8
5
3
1
0
0
0
0
34
$50,000-$99,999
0
2
1
2
3
3
3
1
0
0
0
0
15
$100,000-$249,999
0
1
1
1
2
1
2
8
1
0
0
0
17
$250,000-$499,999
0
1
0
0
1
0
0
1
2
0
0
0
5
$500,000-$999,999
0
0
0
0
0
1
0
1
1
1
2
1
7
$1M-$2.5M
0
0
0
0
0
0
1
0
0
1
2
0
4
Total
0
53 25
27
33
13
12
12
5
3
4
1
188
List Sales Class

7.3

Evaluation of FNRP Completed Interviews and Their Status on the List Frame

The 2,068 FNRP records that matched the list frame were comprised of 1,276 completed
interviews and 792 estimated interviews. In this and the next subsection, the characteristics of
these two groups and how they differ are explored. For the completed interviews, 199 of the
operations identified as farms on the list frame were non-farms both in FNRP and the JAS (Table
9). Similarly, 61 operations were incorrectly classified as non-farms on the list frame and the
JAS.
Table 9. A Comparison of Farm/Non-Farm Status on 2009 JAS, 2009 List Frame, and FNRP for
Completed FNRP Interviews
List nonList farm List Farm Status
Total
farm
Unknown
314
65
578
JAS non- FNRP non-farm
199
farm
174
11
246
FNRP farm
61
14
21
1
36
JAS farm FNRP non-farm
22
379
15
416
FNRP farm
411
773
92
1,276
Total
The 199 farming operations that were inaccurately identified as farms on the list frame were
primarily considered active operations (rank 1), and most of them (80 percent) were nonagricultural tracts without potential for agriculture. The misclassified operations were evenly
7

A $5M row is not present for this table because there were not any list frame records with sales exceeding $5M
that matched to a FNRP record. The bars displayed on the table represent the percent contribution of the cell to the
column total.

11

spread over the cultivated strata with very few in the agri-urban or commercial strata. Over half
of these operations were small with less than $10,000 in sales, 44 percent of the operations
indicated sales of $10,000-$250,000, and a few indicated sales in excess of $250,000. See all
related tables in Appendix D.
All 61 operations that were non-farms on the JAS and the list frame but were identified as farms
on FNRP had completed interviews during the FNRP (see Appendix B for characteristics).
Similarly, the characteristics of the 174 completed interviews that were considered JAS nonfarms but identified as farms on both FNRP and the list frame were the same as those observed
for all 188 records (see Appendix E). The pattern of agreement of sales from both sources
(Table 10) was also the same as for the overall group.
Table 10. A Comparison of Sales Class Values for Matched FNRP and List Frame Records with
Highlighted Cells Indicating Agreement Between the Two Sources.7

List Sales Class
$1-$999
$1,000-$2,499
$2,500-$4,999
$5,000-$9,999
$10,000-$24,999
$25,000-$49,999
$50,000-$99,999
$100,000-$249,999
$250,000-$499,999
$500,000-$999,999
$1M-$2.5M
Total

7.4

FNRP Sales Class
$1- $1,000- $2,500- $5,000- $10,000- $25,000- $50,000- $100,000- $250,000- $500,000- $1M$999 $2,499 $4,999 $9,999 $24,999 $49,999 $99,999 $249,999 $499,999 $999,999 $2.5M $5M+
0
1
0
0
0
0
0
0
0
0
0
0
0
20
2
2
1
1
0
0
0
0
0
0
0
9
2
2
4
0
1
0
0
0
0
0
0
5
3
4
4
1
1
0
1
0
0
0
0
10
8
6
10
1
1
0
0
1
0
0
0
3
7
7
7
5
3
1
0
0
0
0
0
2
1
1
2
3
2
1
0
0
0
0
0
1
1
1
2
0
2
6
1
0
0
0
0
1
0
0
0
0
0
1
1
0
0
0
0
0
0
0
0
1
0
1
1
1
2
1
0
0
0
0
0
0
1
0
0
1
2
0
0
52
24
23
30
12
11
10
4
3
4
1

Total
1
26
18
19
37
33
12
14
3
7
4
174

Evaluation of FNRP Estimated Interviews and Their Status on the List Frame

Of the 792 estimated FNRP interviews, 47 of the operations identified as farms on the list frame
were non-farms both in FNRP and the JAS (Table 11). These are additional records that are
likely to be incorrectly identified as farms on the list frame. In contrast, no operations were
incorrectly classified as a non-farm on either the list frame or the JAS.
Table 11. A Comparison of Farm/Non-Farm Status on 2009 JAS, 2009 List Frame, and FNRP
Based on Estimated FNRP Interviews
List non-farm List farm List Farm Status Total
Unknown
42
16
105
JAS non-farm FNRP non-farm
47
14
1
15
FNRP farm
0
4
4
0
8
JAS farm
FNRP non-farm
26
620
18
664
FNRP farm
72
685
35
792
Total
The 47 list frame farm operations that were non-farms both in FNRP and the JAS possessed
similar characteristics to those with completed interviews. See all related tables in Appendix F.
12

The 14 estimated interviews that were JAS non-farms but identified as farms on both FNRP and
the list frame were correctly treated as farms. They shared the same attributes of those with
completed interviews. See all related tables in Appendix G. The highlighted cells in Table 12
correspond to agreement in the sales class for the list frame and FNRP. For operations in this
group, the two sources agreed half the time. Even though the numbers are too sparse to make
any firm generalizations, the pattern seems to be similar to that of the completed interviews; that
is, the list frame value of sales is usually higher than what was reported in FNRP indicating that
the list frame is over-estimating sales, which is not surprising.
Table 12. A Comparison of Sales Class Values for Matched FNRP and List Frame Records with
Highlighted Cells Indicating Agreement Between the Two Sources.7
FNRP Sales Class
List Sales Class

$1,000- $2,500- $5,000- $10,000- $25,000- $50,000- $100,000- $250,000$2,499 $4,999 $9,999 $24,999 $49,999 $99,999 $249,999 $499,999

$1,000-$2,499

0

0

0

0

0

0

0

0

Total
0

$2,500-$4,999

1

1

1

0

0

0

0

0

3

$5,000-$9,999

0

0

2

0

0

0

0

0

2

$10,000-$24,999

0

0

0

0

0

0

0

0

0

$25,000-$49,999

0

0

0

1

0

0

0

0

1

$50,000-$99,999

0

0

1

1

0

1

0

0

3

$100,000-$249,999

0

0

0

0

1

0

2

0

3

$250,000-$499,999

0

0

0

1

0

0

0

1

2

Total

1

1

4

3

1

1

2

1

14

8.

CONCLUSIONS AND DISCUSSION

Using the FNRP as the “gold standard” to accurately identify list frame farm status inaccuracies
was informative. Even though the analysis was split by type of FNRP interview (completed or
estimated), the results showed to be similar for both groups whenever misclassification was
present. The list frame value of sales is usually higher than what was reported in FNRP
indicating that the list frame is overestimating sales. Since the current list frame procedures
assign value of sales based on the largest reported values, sales will tend to be overstated when
compared to FNRP. Therefore, value of sales alone should not be used to determine farm/nonfarm status of records on the list frame. The farm status inaccuracies are an issue that needs to
be addressed further if the list frame is used to adjust for misclassification on the JAS. The JAS
number of farms indication could become biased upwards. Thus, the potential for using the list
frame for misclassification adjustment of the number of farms indication depends on whether or
not the list frame farm status inaccuracies can be reliably identified and excluded from the
adjustment, and this merits further research.
9.

RECOMMENDATION
1. Research and evaluate potential ways in which the list frame’s farm status
inaccuracies can be reliably identified and excluded from any adjustments to the
June Area Survey (JAS). The results of this analysis confirm the presence of some

13

list frame farm status inaccuracies. If the list frame is used to adjust for
misclassification on the JAS without considering its farm status inaccuracies, the JAS
number of farms indication could be biased upwards.
10.

REFERENCES

Abreu, Denise A., Pam Arroway, Andrea C. Lamas, Kenneth K. Lopiano, and Linda J. Young
(2010). Using the Census of Agriculture List Frame to Assess Misclassification in the June Area
Survey. Proceedings of the 2010 Joint Statistical Meetings.
Abreu, D. A., J. S. McCarthy, and L. A. Colburn (2010). Impact of the Screening Procedures of
the June Area Survey on the Number of Farms Estimates. Research and Development Division.
RDD Research Report #RDD-10-03. Washington, DC: USDA, National Agricultural Statistics
Service.
Abreu, D. A., N. Dickey and J. McCarthy (2009). 2007 Classification Error Survey for the
United States Census of Agriculture. RDD Research Report # RDD-09-03. Washington,
DC:USDA, National Agricultural Statistics Service.
Abreu, D. A. (2007). Results from the 2002 Classification Error Study. Research and
Development Division. RDD Research Report #RDD-07-03. Washington, DC:USDA, National
Agricultural Statistics Service.
Arroway, Pam, Denise A. Abreu, Andrea C. Lamas, Kenneth K. Lopiano, and Linda J. Young
(2010). An Alternate Approach to Assessing Misclassification in JAS. Proceedings of the 2010
Joint Statistical Meetings.
Broadbent, K and Iwig, W. (1999), “Record Linkage at NASS Using Automatch”. 1999 FCSM
Research Conference, http://www.fcsm.gov/99papers/broadbent.pdf
Davies, Carrie (2009). Area Frame Design for Agricultural Surveys. Research and Development
Division. RDD Research Report #RDD-09-06. Washington, DC: USDA, National Agricultural
Statistics Service.
Johnson, J.V. (2000). Agricultural Census Classification Error Estimation Using an Area Frame
Approach. Data Quality Research Section. Unpublished Manuscript. Washington, DC: National
Agricultural Statistics Service, USDA.
Lamas, Andrea C., Denise A. Abreu, Pam Arroway, Andrea C. Lamas, Kenneth K. Lopiano, and
Linda J. Young (2010). Modeling Misclassification in the June Area Survey. Proceedings of the
2010 Joint Statistical Meetings.
Lopiano, Kenneth K., Denise A. Abreu, Pam Arroway, Andrea C. Lamas, and Linda J. Young
(2010). Modeling Misclassification in the June Area Survey. Proceedings of the 2010 Joint
Statistical Meetings.

14

Young, Linda J., Denise A. Abreu, Pam Arroway, Andrea C. Lamas, and Kenneth K. Lopiano
(2010). Precise Estimates of the Number of Farms in the United States. Proceedings of the 2010
Joint Statistical Meetings.

15

Appendix A
Characteristics of the 246 operations that were farms on the list frame but non-farms on
both the JAS and FNRP.
Table A1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
241
98.0
Active target - 1
2
0.8
Potential CML - 2
3
1.2
Inactive - 4
246
100.0
Total
Table A2: Breakdown by Value of Sales on the List Frame
Total Value of Sales
Number of Tracts Percent
1
0.4
Less than $999
42
17.1
$1,000-$2,499
36
14.6
$2,500-$4,999
46
18.7
$5,000-$9,999
45
18.3
$10,000-$24,999
24
9.8
$25,000-$49,999
21
8.5
$50,000-$99,999
22
8.9
$100,000-$249,999
3
1.2
$250,000-$499,999
5
2.0
$500,000-$999,999
1
0.4
$1M-$2.5M
246
100.0
Total
Table A3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts Percent of Total
7
2.9
Agricultural tracts
33
13.4
Non-agricultural tracts w/ potential
16
6.5
Non-agricultural tracts w/ unknown potential
190
77.2
Non-agricultural tracts w/out potential
246
100.0
Totals

16

Appendix A
Table A4: Breakdown by Strata
Strata
Number of Tracts
88
50% + cultivated
73
15-49% cultivated
7
Agri-urban/ Commercial
78
<15% cultivated
246
Total

Percent
35.8
29.7
2.8
31.7
100.0

Table A5: Breakdown by Mode of Collection
Collection Mode (Code)
Number of Tracts
9
Known Zeroes (0)
56
Mail (1)
71
Telephone (2)
84
Face-to-Face (3)
11
CATI (4)
15
Other (19)
246
Total

Percent
3.7
22.8
28.9
34.1
4.5
6.0
100.0

17

Appendix B
Characteristics of the 61 operations that were non-farms on the JAS and list frame but
identified as farms on FNRP
Table B1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts Percent
8
13.1
Active target - 1
0
0.0
Potential CML - 2
53
86.9
Inactive - 4
61
100.0
Total
Table B2: Breakdown by Value of Sales on the List Frame
Sales Class
Number of Tracts Percent
18
29.5
$1,000-$2,499
8
13.1
$2,500-$4,999
19
31.2
$5,000-$9,999
10
16.4
$10,000-$24,999
2
3.3
$25,000-$49,999
1
1.6
$50,000-$99,999
2
3.3
$100,000-$249,999
1
1.6
$250,000-$499,999
61
100.0
Total
Table B3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
2
Agricultural tracts
6
Non-agricultural tracts w/ potential
1
Non-agricultural tracts w/ unknown potential
52
Non-agricultural tracts w/out potential
61
Totals

18

Percent
3.3
9.8
1.6
85.3
100.0

Appendix B

Table B4: Breakdown by Strata
Strata
Number of Tracts
16
50% + cultivated
28
15-49% cultivated
0
Agri-urban/ Commercial
17
<15% cultivated
61
Total
Table B5: Breakdown by Mode of Collection
Collection Mode (Code)
Number of Tracts
19
Mail (1)
16
Telephone (2)
16
Face-to-Face (3)
9
CATI (4)
1
Other (19)
61
Total

19

Percent
26.2
45.9
0.0
27.9
100.0
Percent
31.2
26.2
26.2
14.8
1.6
100.0

Appendix C
Characteristics of 188 operations that were JAS non-farms but identified as farms on both
FNRP and the list frame
Table C1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
184
97.9
Active target - 1
1
0.5
Potential CML - 2
3
1.6
Inactive - 4
188
100.0
Total
Table C2: Breakdown by Strata
Strata
Number of Tracts
73
50% + cultivated
52
15-49% cultivated
4
Agri-urban/ Commercial
59
<15% cultivated
188
Total

Percent
38.8
27.7
2.1
31.4
100.0

Table C3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
10
Agricultural tracts
22
Non-agricultural tracts w/ potential
14
Non-agricultural tracts w/ unknown potential
142
Non-agricultural tracts w/out potential
188
Totals

20

Percent
5.3
11.7
7.5
75.5
100.0

Appendix D
FNRP Completed Interviews -- Characteristics of the 199 operations that were farms on
the list frame but non-farms on both the JAS and FNRP.
Table D1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
199
98.0
Active target – 1
1
0.5
Potential CML – 2
3
1.5
Inactive – 4
199
100.0
Total
Table D2: Breakdown by Value of Sales on the List Frame
Total Value of Sales
Number of Tracts Percent
1
0.5
Less than $999
36
18.1
$1,000-$2,499
27
13.6
$2,500-$4,999
41
20.6
$5,000-$9,999
36
18.1
$10,000-$24,999
24
12.1
$25,000-$49,999
13
6.5
$50,000-$99,999
14
7.0
$100,000-$249,999
2
1.0
$250,000-$499,999
4
2.0
$500,000-$999,999
1
0.5
$1M-$2.5M
199
100.0
Total
Table D3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
4
Agricultural tracts
26
Non-agricultural tracts w/ potential
9
Non-agricultural tracts w/ unknown potential
160
Non-agricultural tracts w/out potential
199
Totals

21

Percent
2.0
13.1
4.5
80.4
100.0

Appendix D
Table D4: Breakdown by Strata
Strata
Number of Tracts
74
50% + cultivated
60
15-49% cultivated
5
Agri-urban/ Commercial
60
<15% cultivated
199
Total
Table D5: Breakdown by Mode of Collection
Collection Mode (Code)
Number of Tracts
9
Known Zeroes (0)
50
Mail (1)
64
Telephone (2)
68
Face-to-Face (3)
9
CATI (4)
1
Other (19)
199
Total

22

Percent
37.1
30.2
2.5
30.2
100.0
Percent
4.5
25.1
32.2
34.2
4.5
0.5
100.0

Appendix E
FNRP Completed Interviews -- Characteristics of 174 operations that were JAS non-farms
but identified as farms on both FNRP and the list frame
Table E1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
170
97.7
Active target - 1
1
0.6
Potential CML - 2
3
1.7
Inactive - 4
174
100.0
Total
Table E2: Breakdown by Strata
Strata
Number of Tracts
65
50% + cultivated
51
15-49% cultivated
3
Agri-urban/ Commercial
55
<15% cultivated
174
Total

Percent
37.4
29.3
1.7
31.6
100.0

Table E3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
9
Agricultural tracts
21
Non-agricultural tracts w/ potential
13
Non-agricultural tracts w/ unknown potential
131
Non-agricultural tracts w/out potential
174
Totals

23

Percent
5.2
12.0
7.5
75.3
100.0

Appendix F
FNRP Estimated Interviews -- Characteristics of the 47 operations that were farms on the
list frame but non-farms on both the JAS and FNRP.
Table F1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
46
97.9
Active target – 1
1
2.1
Potential CML – 2
0
0.0
Inactive – 4
47
100.0
Total
Table F2: Breakdown by Value of Sales on the List Frame
Total Value of Sales
Number of Tracts Percent
6
12.8
$1,000-$2,499
9
19.2
$2,500-$4,999
5
10.6
$5,000-$9,999
9
19.2
$10,000-$24,999
0
0.0
$25,000-$49,999
8
17.0
$50,000-$99,999
8
17.0
$100,000-$249,999
1
2.1
$250,000-$499,999
1
2.1
$500,000-$999,999
47
100.0
Total
Table F3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
3
Agricultural tracts
7
Non-agricultural tracts w/ potential
7
Non-agricultural tracts w/ unknown potential
30
Non-agricultural tracts w/out potential
47
Totals
.

24

Percent
6.4
14.9
14.9
63.8
100.0

Appendix F
Table F4: Breakdown by Strata
Strata
Number of Tracts
14
50% + cultivated
13
15-49% cultivated
2
Agri-urban/ Commercial
18
<15% cultivated
47
Total

Percent
29.8
27.7
4.2
38.3
100.0

Table F5: Breakdown by Mode of Collection
Collection Mode (Code)
Number of Tracts
2
Known Zeroes (0)
6
Mail (1)
7
Telephone (2)
16
Face-to-Face (3)
2
CATI (4)
14
Other (19)
47
Total

Percent
4.2
12.8
14.9
34.0
4.2
29.8
100.0

25

Appendix G
FNRP Estimated Interviews -- Characteristics of 14 operations that were JAS non-farms
but identified as farms on both FNRP and the list frame
Table G1: Breakdown by Rank on List Frame Records
Rank
Number of Tracts
Percent
14
100.0
Active target - 1
14
100.0
Total
Table G2: Breakdown by Strata
Strata
Number of Tracts
8
50% + cultivated
1
15-49% cultivated
1
Agri-urban/ Commercial
4
<15% cultivated
14
Total

Percent
57.1
7.1
7.1
28.6
100.0

Table G3: Breakdown by Type of Agricultural Tract
Type of Agricultural Tract
Number of Tracts
1
Agricultural tracts
1
Non-agricultural tracts w/ potential
1
Non-agricultural tracts w/ unknown potential
11
Non-agricultural tracts w/out potential
14
Totals

26

Percent
7.1
7.1
7.1
78.6
100.0


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File TitleIn recent years, requesting personal identifiable information (PII) from respondents has become increasingly more difficult beca
Authorabrede
File Modified2011-10-24
File Created2011-10-24

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