2009 ASA Paper -- Reducing the Public Employment Survey Sample Size

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2009 ASA Paper -- Reducing the Public Employment Survey Sample Size

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Attachment 6

GOVERNMENTS DIVISION REPORT SERIES
(Research Report #2009-6)

Reducing the Public Employment Survey Sample Size

Joseph James Barth 

Yang Cheng 

Carma R. Hogue 


U.S. Census Bureau 

Washington, DC 20233 


CITATION: Barth, Joseph James, Yang Cheng, Carma R. Hogue. 2009. Reducing the Public
Employment Survey Sample Size. Governments Division Report Series, Research Report
#2009-6

____________________________________
Report Completed: September 23, 2009
Report Issued: October 2, 2009

Disclaimer: This report is released to inform interested parties of research and to encourage discussion of work in
progress. The views expressed are those of the authors and not necessarily those of the U.S. Census Bureau.

Attachment 6

Reducing the Public Employment Survey Sample Size1
Joseph James Barth, Yang Cheng, Carma R. Hogue
U.S. Census Bureau

Abstract
Like most establishment surveys the Public Employment Survey data are highly skewed.
Our goal was to reduce the number of small units included in the sample since they collectively
account for a small percentage of the total and currently account for a disproportionate number of
sample units. A first stage sample of individual government units was selected via a probability
proportional to size method within each state by type of government (city, county, township,
special district, school district) using the sample sizes from the previous sample design. In the
second stage, classification into size strata was determined using the Cumulative Square Root of
the Frequency method [1] within selected states by type of government. After classification into
size strata was determined, a subsample of individual government units in the stratum containing
the small units was then taken to reduce the number of small units in the sample while
maintaining comparability with the previous sample.

Keywords: Sample design, establishment surveys, probability proportional to size
1. Introduction2
The Annual Survey of Government Employment is used to collect full-time and part-time
data on state and local government employment and payroll by governmental function (i.e.,
elementary and secondary education, higher education, police protection, fire protection, financial
administration, judicial and legal). The data are collected from the state government as well as
five types of local government: counties, municipalities, townships, special districts, and school
districts. The first three types of government are referred to as general-purpose governments as
they generally cover several governmental functions. School district governments cover only the
education function. Special districts cover generally one, but sometimes two functions (e.g.,
sewer and water).
In 2007, the Committee on National Statistics (CNStat), National Research Council,
released the findings of a two-year study of the U.S. Census Bureau’s surveys of state and local
governments. CNStat offered 21 recommendations on dissemination, data quality, strategic
planning, and data uses. In response to the CNStat recommendations on examining new
methodologies and in response to concerns the survey analysts have expressed about sample
design, we decided to look into ways to modify the sample.
Currently, a stratified, modified probability proportional-to-size sample is used to obtain
annual national and state estimates. The current sample design yields a large number of small
townships and special districts. The response rate is poor for these units, and they account for a
very small part of the final estimate. Within a geographic area, there is very little variability in the
responses from units of the same type of government. The desire was to design a sample that
would reduce the number of small units in areas of the country with many of these units.

1

This report is released to inform interested parties of research and to encourage discussion of
work in progress. Any views expressed on statistical, methodological, or operational issues are
those of the authors and not necessarily those of the U.S. Census Bureau.
2
The methodology, questionnaires, full set of governmental functions, and classification
documentation are available on www.census.gov/govs/index.html

Attachment 6

In this paper, we discuss the background of the survey, the sample design methodology,
the results, future research plans, and conclusions.

2. Survey Background
The Annual Survey of Government Employment is an annual survey of all state and local
governments in the 50 states, plus Washington, D.C. The universe and frame are the same as
those used in the Census of Governments, with updates made to reflect any births, deaths, or
mergers that may have occurred. A unit is determined to be a government if it exists as an
organized entity, has governmental character (such as the power to levy taxes), and displays
substantial autonomy (i.e., considerable fiscal and administrative independence).
The Annual Survey of Government Employees collects data on five variables, and
derives two additional variables from these. The five variables collected are full-time employees,
full-time pay, part-time employees, part-time pay, and hours worked by part-time employees. The
first derived variable is total pay, which is simply the sum of full-time and part-time pay. The
second is full-time equivalent, which is calculated by dividing the number of part-time hours
worked by the standard number of hours in a workweek for full-time employees in the particular
government, added to the number of full-time employees in that government.
A new sample is selected two years after each census. The most recent sample prior to
the 2009 sample was taken in 2004. The samples for 2005, 2006, and 2008 were the same as the
sample taken in 2004, with the addition of any births that may have occurred since the 2004
sample was selected.
The data for each unit are subdivided into twenty-three different items, such as fire
protection, sewerage, and hospitals. Not every unit has all twenty-three items. For instance
special districts and school districts typically only have one or two items.
The sample taken in 2009 contains 10,489 units, not including births. These 10,489 units
include units designated as initial certainties. For most types of governments these initial
certainties are based on their size, either their population for counties, cities, and townships, or
enrollment for schools. For special districts this inclusion is based on the items they contain.
Data are published at national and state levels for state-only, local-only, and state-andlocal aggregates. For example, we can view just state government data for Alabama or all state
governments combined with all local governments in Alabama. We can view a national total for
all state governments combined, or we can view a national total for all local governments
combined. If we do not consider data from Washington, D.C.3 this gives us 150 state level
estimate tables, and 3 national level estimate tables.

3. Purpose
Our goal in decreasing the sample size was to reduce the time needed to collect and
process data. As the population is skewed, analysts were spending a large amount of their time on
units that collectively count for a relatively small part of the total. As such we wanted to reduce
the number of small units included in the sample. This reduction in small units in the sample may
also increase quality as less attention needs to be put on small cases that contribute very little,
freeing up analyst time for units with greater impact.
One concern with reducing the sample in this way is that these were units which already
had a small probability of selection. By further reducing that, we open ourselves to unforeseen

3

As Washington, D.C. is not a state it only has local estimates. Including Washington, D.C.
yields a total of 152 estimate tables, with Washington D.C. not having a state-only estimate table.

Attachment 6

jumps in variance; in particular we’re concerned with the situation where a small unit grows
considerably. Such cases have been rare historically, but we will need to watch for them.

4. Methodology
We used a two-stage approach to the sampling, first sampling using probability
proportional to size sampling (PPS) and then using simple random sampling (SRS) to reduce the
sample size of small units. Size was defined to be the variable Total Pay from the 2007 Census of
Governments. Stratum boundaries, dividing units into small and large sizes, were determined
using the cumulative square root frequency method. Birth units and units without any activity in
the 2007 Census of Governments went through their own sampling procedures not discussed
here, and all following statements in this section should be taken to exclude these units.
Sampling strata were defined by state and type of government with one modification. It
was decided that cities and townships were similar enough that they could be combined into a
single stratum. Since state governments are included with certainty, this left us with 4 strata per
state in most cases: counties, special districts, independent schools, and cities and townships.
Some states do not have all types of government and as such have fewer strata.
Sample sizes for strata were set equal to the number of units present in the 2006 sample
for the given strata. This was done to aid in comparison between the two samples to see what
effect the new sampling methodology may have had.
Only two strata were subsampled: special districts, and cities and townships. The strata
containing counties and independent schools both contained too few units, for the majority of
states, to warrant subsampling.
The strata selected for subsampling were then subdivided into substrata, small and large,
using the cumulative square root frequency method. If this subdivision yielded two substrata that
each contained at least 15 units and if the combined stratum had at least 40 units, subsampling
was conducted in the “small” substratum. If one of the two substrata had fewer than 15 units, or if
the combined stratum had fewer than 40 units, no subsampling was done.
The substrata containing small units were subsampled by SRS. The size for this
subsample was determined by first selecting a total desired reduction in sample size as decided by
the team lead. This number, eight hundred, was chosen arbitrarily. In the future we hope to use
more rigorous methods for determining the size of reduction. This gave a proportion of units to be
reduced, which was applied to each substratum selected for subsampling.
In addition to updated sampling methodology, research was done into the efficacy of new
estimation methods. The final decision was to use a decision-based regression estimator. If both
small and large unit strata yielded similar regression coefficients, then these two strata were
combined. If the two strata yielded dissimilar results, then they each were estimated using their
separate regression estimators. For further details see [2].

5. Results
The first two tables show sample sizes, not including state units, for the 2006, 2008, and
2009 survey years. For most states the changes were modest and resulted in a smaller sample.
California, Illinois, Michigan, Missouri, Ohio, and Texas saw decreases of at least 50 units, while
Minnesota saw an increase of similar size. Although cities and townships were joined in one
stratum for the 2009 sample design, we leave the cities and townships separate in Tables 2 and 4
for comparison with prior years. From this table we see that the reduction in sample size for the
combined city and township stratum is effected by an increase in the number of cities sampled
and a larger decrease in the number of townships sampled.

Attachment 6

Table 1:

Local Government Sample Sizes for the ASGE
by State for 2008 and 2009
State
2006 2008 2009 State
Alabama
240 244 249 Montana
Alaska
54
55
54 Nebraska
Arizona
102 106 108 Nevada
Arkansas
214 213 204 New Hampshire
California
609 645 587 New Jersey
Colorado
196 226 203 New Mexico
Connecticut
139 141 139 New York
Delaware
35
35
38 North Carolina
Washington D.C.
2
2
2 North Dakota
Florida
239 295 247 Ohio
Georgia
231 237 231 Oklahoma
Hawaii
19
19
15 Oregon
Idaho
155 157 146 Pennsylvania
Illinois
564 615 494 Rhode Island
Indiana
293 320 269 South Carolina
Iowa
278 278 256 South Dakota
Kansas
361 369 319 Tennessee
Kentucky
206 207 196 Texas
Louisiana
104 109 102 Utah
Maine
207 222 184 Vermont
Maryland
43
43
47 Virginia
Massachusetts
136 139 121 Washington
Michigan
341 394 320 West Virginia
Minnesota
370 379 431 Wisconsin
Mississippi
218 218 221 Wyoming
Missouri
397 443 367
Source: U.S. Census Bureau

Table 2: 	

2006
186
271
48
146
233
115
267
170
234
391
211
191
368
44
169
202
137
535
118
168
99
204
163
317
116

2008
204
278
49
148
227
116
274
174
235
420
212
199
374
44
171
215
138
587
121
174
99
230
162
321
122

2009
181
259
46
132
208
109
292
163
219
353
196
190
312
48
174
197
149
512
128
154
100
192
150
280
120

Local Government Sample Sizes for the ASGE
by Type for 2008 and 2009
Type of Government
2006 2008 2009
Counties
1435 1436 1456
Cities
2549 2609 3022
Townships
1528 1534
624
Special Districts
3305 3772 3204
Independent Schools
2039 2054 2108
Source: U.S. Census Bureau

Tables 3 and 4 show the relative changes in sample size from the previous year to the
current year for 2005 through 2009. Since 2007 was a census year, there is no information
available for that year, and the ratio for 2008 shows the relative increase from the 2006 sample
size.

Attachment 6

Table 3:

Relative Local Government Sample Size Change Rates
by State for the ASGE, 2005-2009
2005 2006 2008 2009
2005 2006 2008 2009
State
State
/2004 /2005 /2006 /2008
/2004 /2005 /2006 /2008
1.02
1.02 Montana
1.00
1.02
Alabama
1.00
1.02
1.10
0.89
Alaska
1.00
1.02
1.02
0.98 Nebraska
0.99
0.93
1.03
0.93
Arizona
1.01
1.02
1.04
1.02 Nevada
1.00
1.00
1.02
0.94
Arkansas
New
1.00
1.00
1.00
0.96
0.99
1.00
1.01
0.89
Hampshire
California
1.00
1.00
1.06
0.91 New Jersey
1.00
1.00
0.97
0.92
Colorado
0.99
1.00
1.15
0.90 New Mexico
1.00
0.99
1.01
0.94
Connecticut
1.00
1.00
1.01
0.99 New York
1.00
1.00
1.03
1.07
Delaware
North
1.00
1.00
1.00
1.09
1.00
1.01
1.02
0.94
Carolina
Washington
North
1.00
1.00
1.00
1.00
1.01
0.99
1.00
0.93
D.C.
Dakota
Florida
1.01
1.00
1.23
0.84 Ohio
1.00
1.00
1.07
0.84
Georgia
1.00
1.00
1.03
0.97 Oklahoma
1.00
1.01
1.00
0.92
Hawaii
1.00
1.00
1.00
0.79 Oregon
0.99
1.00
1.04
0.95
Idaho
1.00
0.99
1.01
0.93 Pennsylvania
0.99
0.99
1.02
0.83
Illinois
1.00
1.00
1.09
0.80 Rhode Island
1.00
1.00
1.00
1.09
Indiana
South
1.00
1.00
1.09
0.84
0.99
1.00
1.01
1.02
Carolina
Iowa
South
1.00
0.99
1.00
0.92
1.00
1.00
1.06
0.92
Dakota
Kansas
1.00
1.00
1.02
0.86 Tennessee
1.01
0.99
1.01
1.08
Kentucky
1.00
1.00
1.00
0.95 Texas
1.00
1.03
1.10
0.87
Louisiana
1.01
0.99
1.05
0.94 Utah
1.00
1.01
1.03
1.06
Maine
1.00
1.00
1.07
0.83 Vermont
0.99
0.99
1.04
0.89
Maryland
1.00
1.00
1.00
1.09 Virginia
1.00
1.00
1.00
1.01
Massachusetts
0.99
1.00
1.02
0.87 Washington
1.00
1.03
1.13
0.83
Michigan
West
1.01
1.00
0.99
0.93
0.98
1.00
1.16
0.81
Virginia
Minnesota
1.00
1.01
1.02
1.14 Wisconsin
1.01
1.00
1.01
0.87
Mississippi
1.00
1.00
1.00
1.01 Wyoming
1.00
1.00
1.05
0.98
1.00
Missouri
1.00
1.12
0.83
Source: U.S. Census Bureau

Table 4: 	

Relative Local Government Sample Size Change Rates
by Type for the ASGE, 2005-2009
Type of Government
2005 2006 2008 2009
/2004 /2005 /2006 /2008
Counties
1.00
1.00
1.00
1.01
Cities
1.00
1.01
1.02
1.16
1.00
1.00
1.00
0.41
Townships
Special Districts
1.00
1.00
1.14
0.85
Independent Schools
1.00
0.99
1.01
1.03
Source: U.S. Census Bureau

Attachment 6

Tables 5 and 6 show the coefficients of variation (CVs) for the 2004 sample design and
for the 2009 sample design, both of which are years for which the sample is brand new, for four
of the reported variables. Part-time hours is not presented as the data will not be shown separately
in the published viewable tables. CVs are not yet available for 2008 as the data for 2008 are still
going through processing at the time of this paper’s writing. The CVs presented for 2009 are not
actual CVs, as data collection is still underway as of the writing of this paper. Instead the CVs for
2009 are estimated by using a sampled unit’s 2007 data as a surrogate for 2009, with any units
that were not in existence for the 2007 census being excluded from the calculations. As such we
expect the actual CVs to be somewhat higher. For further information on estimated 2009 CVs,
see [2].
Table 5: 	

Coefficient of Variation for Local Government Full-time Employees and Pay by
State for the ASGE, for 2004 and 2009
Full-time
Full-time
Full-time
Full-time
Employees
Pay
Employees
Pay
State
2004 2009 2004 2009 State
2004 2009 2004 2009
Alabama
0.84 1.07 4.06 0.41 Montana
1.33 1.25 6.02 0.59
Alaska
1.04 0.44 3.06 0.29 Nebraska
2.96 1.31 3.03 0.43
Arizona
1.85 0.80 3.08 0.26 Nevada
4.48 0.25 6.87 0.12
Arkansas
New
1.11 1.86 7.39 0.54
1.73 0.00 8.40 0.00
Hampshire
California
0.33 0.56 1.29 0.34 New Jersey
1.07 0.00 3.58 0.00
Colorado
0.55 1.50 2.29 0.51 New Mexico
1.19 2.48 3.79 0.45
Connecticut
0.71 2.54 2.77 1.91 New York
0.46 1.73 1.88 0.21
Delaware
27.64 0.00 28.18 0.00 North Carolina 0.49 0.44 1.97 0.24
Washington
North Dakota
0.00 0.00 0.00 0.00
0.77 0.84 4.24 0.68
D.C.
Florida
0.39 0.53 1.08 0.37 Ohio
1.39 1.20 3.43 0.40
Georgia
0.81 0.84 5.20 0.31 Oklahoma
1.17 1.98 4.65 1.33
Hawaii
0.00 0.00 0.00 0.00 Oregon
1.00 1.32 3.90 0.61
Idaho
1.63 1.87 6.77 0.51 Pennsylvania
0.90 1.45 2.78 1.20
Illinois
0.57 1.13 3.23 0.62 Rhode Island
0.00 0.00 0.00 0.00
Indiana
1.25 1.95 3.74 0.50 South Carolina 1.33 1.35 5.68 0.26
Iowa
3.42 1.50 5.27 0.55 South Dakota
3.45 2.48 8.24 1.18
Kansas
1.13 2.18 2.07 0.80 Tennessee
0.96 0.72 6.05 0.14
Kentucky
1.18 1.19 5.10 0.32 Texas
0.32 0.59 1.62 0.31
Louisiana
0.92 1.74 7.31 0.33 Utah
1.58 0.49 1.71 0.53
Maine
1.72 0.00 8.19 0.00 Vermont
2.97 2.77 6.35 1.73
Maryland
2.34 0.20 2.41 0.09 Virginia
2.87 0.00 3.66 0.00
Massachusetts
2.14 0.00 7.27 0.00 Washington
0.55 0.78 1.91 0.58
Michigan
0.90 0.94 2.43 0.39 West Virginia
1.51 2.63 10.12 0.52
Minnesota
1.43 1.93 3.56 1.44 Wisconsin
1.43 1.65 4.40 0.59
Mississippi
1.36 1.74 5.17 0.28 Wyoming
0.81 1.94 5.28 0.86
Missouri
0.84 1.16 3.41 0.44
Source: U.S. Census Bureau

Attachment 6

Coefficient of Variation for Local Government Part-time Employees and Pay
by State for the ASGE, for 2004 and 2009
Part-time
Part-time Pay
Part-time
Part-time Pay
Employees
Employees
State
2004 2009 2004 2009 State
2004 2009 2004 2009
Alabama
0.84 8.20 2.04 4.65 Montana
1.23 5.87 4.92 4.66
Alaska
0.85 5.71 6.20 3.73 Nebraska
2.15 12.08 3.11 4.64
Arizona
1.79 4.32 2.02 2.70 Nevada
3.74 1.88 6.48 1.64
Arkansas
New
1.05 11.43 5.91 11.85
2.21 0.00 10.48 0.00
Hampshire
California
0.35 2.27 1.00 1.64 New Jersey
1.12 0.00 4.34 0.00
Colorado
0.38 5.98 1.12 4.17 New Mexico 1.10 7.92 2.62 8.32
Connecticut
0.65 6.52 3.68 10.04 New York
0.38 4.17 1.93 2.85
Delaware
North
23.44 0.00 31.37 0.00
0.52 2.25 1.39 1.23
Carolina
Washington
North
0.00 0.00 0.00 0.00
0.64 13.21 3.73 5.32
D.C.
Dakota
Florida
0.38 0.72 0.91 0.69 Ohio
0.88 5.09 3.26 4.77
Georgia
0.68 6.50 2.28 2.25 Oklahoma
1.00 13.06 5.37 8.73
Hawaii
0.00 0.00 0.00 0.00 Oregon
0.60 3.93 2.43 3.76
Idaho
1.48 8.78 4.91 5.96 Pennsylvania 0.89 5.65 3.77 4.86
Illinois
0.76 9.53 2.63 4.46 Rhode Island 0.00 0.00 0.00 0.00
Indiana
South
1.19 6.14 5.05 5.29
1.55 7.54 4.02 4.64
Carolina
Iowa
South
3.38 5.82 4.87 4.57
2.05 9.46 6.18 10.89
Dakota
Kansas
1.09 14.01 2.26 8.49 Tennessee
0.85 4.07 3.63 2.87
Kentucky
1.23 25.60 4.86 5.79 Texas
0.25 4.14 1.44 3.14
Louisiana
0.89 8.44 1.73 6.65 Utah
1.51 4.36 2.00 3.83
Maine
1.24 0.00 8.57 0.00 Vermont
2.36 7.64 8.25 7.99
Maryland
1.88 0.88 1.19 0.79 Virginia
2.30 0.00 3.38 0.00
Massachusetts 2.34 0.00 5.01 0.00 Washington
0.54 2.35 1.65 1.95
Michigan
West
0.87 5.84 3.06 3.48
2.66 8.07 8.03 7.58
Virginia
Minnesota
0.75 6.60 3.51 4.88 Wisconsin
1.49 9.24 3.79 4.95
Mississippi
1.09 9.97 4.62 4.76 Wyoming
1.43 10.52 2.26 6.77
Missouri
0.63 4.70 2.60 4.42
Source: U.S. Census Bureau

Table 6:

6. Conclusion and Future Research
For most states we see a reduction in overall sample size, or at least a retardation in
sample size growth. This is entirely to be expected based on the construction of 2009 sample
sizes. We began with 2006 sample sizes and then, although there were births and increases in the
number of certainties, we removed sample. This is not a point of interest so much as a simple
consequence of our methodology.
We do see a large shift of the sample from townships to cities as both were combined into
a single sampling stratum and townships tend to be smaller than cities. As such the allocated

Attachment 6

sample was pushed into the larger (city) governments. This result was expected but not
guaranteed.
The estimated CVs for 2009 show a trend towards increasing CVs as compared with
2004. For full-time data the CVs are still generally under our target CV of 3 percent. For parttime data the CVs increased well into unacceptable levels and we will be relying on updated
estimation procedures to correct for this.
In addition to the reduced sample size, we are also researching estimation methods to
lower the variance of the estimates. Details of this research can be found in [2].
In the future we would like to spend more time determining the best way to determine the
substratification into small and large units. In addition, further research into the optimal allocation
of sample into the substrata would be beneficial. For both of these cases we decided to use
standard methods, as there was not sufficient time to research optimal methods. For 2012, we
hope to find better solutions.

References
1. Cochran, William G. Sampling Techniques, John Wiley & Sons, 1977
2. Cheng, Yang; Corcoran, Casey; Barth, Joseph; Hogue, Carma 2009 Estimation Procedure for
New Public Employment Survey Design. In JSM Proceedings, Survey Research Methodology
Section. Alexandria, VA: American Statistical Association.


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