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Papers Containing Keywords(s): 'aggregate'

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Frequently Occurring Concepts within this Search

Center for Economic Studies - 37

Bureau of Labor Statistics - 28

Annual Survey of Manufactures - 26

North American Industry Classification System - 26

Bureau of Economic Analysis - 24

Longitudinal Business Database - 24

Census of Manufactures - 22

Standard Industrial Classification - 19

National Science Foundation - 18

Longitudinal Research Database - 18

Internal Revenue Service - 17

National Bureau of Economic Research - 17

Total Factor Productivity - 16

Ordinary Least Squares - 14

Economic Census - 13

Census Bureau Disclosure Review Board - 11

Federal Reserve Bank - 11

Business Register - 10

Federal Statistical Research Data Center - 9

Current Population Survey - 9

Census Bureau Business Register - 8

Employer Identification Numbers - 8

Census Bureau Longitudinal Business Database - 8

Cobb-Douglas - 7

Social Security Administration - 7

Metropolitan Statistical Area - 7

American Community Survey - 7

Research Data Center - 7

Chicago Census Research Data Center - 7

Special Sworn Status - 7

Disclosure Review Board - 6

Census of Manufacturing Firms - 6

Census Bureau Center for Economic Studies - 6

Postal Service - 6

Business Dynamics Statistics - 6

Service Annual Survey - 6

Standard Statistical Establishment List - 6

Permanent Plant Number - 6

Federal Reserve System - 5

National Income and Product Accounts - 5

Longitudinal Employer Household Dynamics - 5

Duke University - 5

County Business Patterns - 5

University of Maryland - 4

TFPQ - 4

NBER Summer Institute - 4

Quarterly Workforce Indicators - 4

University of Chicago - 4

Michigan Institute for Teaching and Research in Economics - 4

Cornell University - 4

Securities and Exchange Commission - 4

Establishment Micro Properties - 4

Fabricated Metal Products - 4

Statistics Canada - 4

Generalized Method of Moments - 4

Survey of Income and Program Participation - 3

Social Security - 3

Longitudinal Firm Trade Transactions Database - 3

Quarterly Census of Employment and Wages - 3

IQR - 3

Alfred P Sloan Foundation - 3

International Trade Research Report - 3

State Energy Data System - 3

2010 Census - 3

Administrative Records - 3

Decennial Census - 3

Federal Trade Commission - 3

Wholesale Trade - 3

Department of Homeland Security - 3

macroeconomic - 23

estimating - 20

aggregation - 20

recession - 19

statistical - 18

sector - 18

manufacturing - 17

survey - 17

quarterly - 16

production - 16

estimation - 15

economist - 14

data - 14

growth - 14

gdp - 13

microdata - 13

econometric - 13

industrial - 13

sale - 12

expenditure - 11

labor - 11

revenue - 10

aggregate productivity - 10

market - 10

payroll - 10

report - 10

establishment - 10

respondent - 9

data census - 9

agency - 9

regression - 9

earnings - 8

analysis - 8

productivity growth - 7

productivity measures - 7

measures productivity - 7

productive - 7

employ - 7

demand - 7

endogeneity - 7

enterprise - 7

company - 7

average - 6

census bureau - 6

autoregressive - 6

workforce - 6

produce - 6

statistician - 6

datasets - 6

record - 6

shock - 6

disclosure - 6

empirical - 6

efficiency - 5

estimates productivity - 5

factor productivity - 5

employed - 5

database - 5

economic census - 5

utilization - 5

merger - 5

acquisition - 5

investment - 5

incorporated - 5

statistical agencies - 5

imputation - 4

population - 4

estimator - 4

salary - 4

regress - 4

consumption - 4

productivity dynamics - 4

level productivity - 4

analyst - 4

forecast - 4

indicator - 4

employee - 4

manufacturer - 4

accounting - 4

growth productivity - 4

quantity - 4

classified - 4

reporting - 4

researcher - 4

census data - 4

employment growth - 4

employment dynamics - 4

imputation model - 3

survey data - 3

2010 census - 3

census disclosure - 3

estimates employment - 3

country - 3

federal - 3

research census - 3

industry productivity - 3

productivity size - 3

firms productivity - 3

manufacturing productivity - 3

spillover - 3

regional - 3

employment statistics - 3

economic statistics - 3

classification - 3

surveys censuses - 3

firms census - 3

business data - 3

use census - 3

endogenous - 3

employment count - 3

impact - 3

economically - 3

econometrician - 3

productivity shocks - 3

fluctuation - 3

shift - 3

trend - 3

expense - 3

confidentiality - 3

publicly - 3

businesses census - 3

turnover - 3

longitudinal - 3

industrial classification - 3

Viewing papers 11 through 20 of 63


  • Working Paper

    Re-engineering Key National Economic Indicators

    July 2019

    Working Paper Number:

    CES-19-22

    Traditional methods of collecting data from businesses and households face increasing challenges. These include declining response rates to surveys, increasing costs to traditional modes of data collection, and the difficulty of keeping pace with rapid changes in the economy. The digitization of virtually all market transactions offers the potential for re-engineering key national economic indicators. The challenge for the statistical system is how to operate in this data-rich environment. This paper focuses on the opportunities for collecting item-level data at the source and constructing key indicators using measurement methods consistent with such a data infrastructure. Ubiquitous digitization of transactions allows price and quantity be collected or aggregated simultaneously at the source. This new architecture for economic statistics creates challenges arising from the rapid change in items sold. The paper explores some recently proposed techniques for estimating price and quantity indices in large scale item-level data. Although those methods display tremendous promise, substantially more research is necessary before they will be ready to serve as the basis for the official economic statistics. Finally, the paper addresses implications for building national statistics from transactions for data collection and for the capabilities and organization of the statistical agencies in the 21st century.
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  • Working Paper

    Automating Response Evaluation For Franchising Questions On The 2017 Economic Census

    July 2019

    Working Paper Number:

    CES-19-20

    Between the 2007 and 2012 Economic Censuses (EC), the count of franchise-affiliated establishments declined by 9.8%. One reason for this decline was a reduction in resources that the Census Bureau was able to dedicate to the manual evaluation of survey responses in the franchise section of the EC. Extensive manual evaluation in 2007 resulted in many establishments, whose survey forms indicated they were not franchise-affiliated, being recoded as franchise-affiliated. No such evaluation could be undertaken in 2012. In this paper, we examine the potential of using external data harvested from the web in combination with machine learning methods to automate the process of evaluating responses to the franchise section of the 2017 EC. Our method allows us to quickly and accurately identify and recode establishments have been mistakenly classified as not being franchise-affiliated, increasing the unweighted number of franchise-affiliated establishments in the 2017 EC by 22%-42%.
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  • Working Paper

    The Management and Organizational Practices Survey (MOPS): Collection and Processing

    December 2018

    Working Paper Number:

    CES-18-51

    The U.S. Census Bureau partnered with a team of external researchers to conduct the first-ever large-scale survey of management practices in the United States, the Management and Organizational Practices Survey (MOPS), for reference year 2010. With the help of the research team, the Census Bureau expanded and improved the survey for a second wave for reference year 2015. The MOPS is a supplement to the Annual Survey of Manufacturing (ASM), and so the collection and processing strategy for the MOPS built on the methodology for the ASM, while differing on key dimensions to address the unique nature of management relative to other business data. This paper provides detail on the mail strategy pursued for the MOPS, the collection methods for paper and electronic responses, the processing and estimation procedures, and the official Census Bureau data releases. This detail is useful for all those who have interest in using the MOPS for research purposes, those wishing to understand the MOPS data more deeply, and those with an interest in survey methodology.
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  • Working Paper

    The Nature of Firm Growth

    June 2018

    Working Paper Number:

    CES-18-30

    Only half of all startups survive past the age of five and surviving businesses grow at vastly different speeds. Using micro data on employment in the population of U.S. Businesses, we estimate that the lion's share of these differences is driven by ex-ante heterogeneity across firms, rather than by ex-post shocks. We embed such heterogeneity in a firm dynamics model and study how ex-ante differences shape the distribution of firm size, "up-or-out" dynamics, and the associated gains in aggregate output. "Gazelles" - a small subset of startups with particularly high growth potential - emerge as key drivers of these outcomes. Analyzing changes in the distribution of ex-ante firm heterogeneity over time reveals that the birth rate and growth potential of gazelles has declined, creating substantial aggregate losses.
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  • Working Paper

    Dispersion in Dispersion: Measuring Establishment-Level Differences in Productivity

    April 2018

    Working Paper Number:

    CES-18-25RR

    We describe new experimental productivity statistics, Dispersion Statistics on Productivity (DiSP), jointly developed and published by the Bureau of Labor Statistics (BLS) and the Census Bureau. Productivity measures are critical for understanding economic performance. Official BLS productivity statistics, which are available for major sectors and detailed industries, provide information on the sources of aggregate productivity growth. A large body of research shows that within-industry variation in productivity provides important insights into productivity dynamics. This research reveals large and persistent productivity differences across businesses even within narrowly defined industries. These differences vary across industries and over time and are related to productivity-enhancing reallocation. Dispersion in productivity across businesses can provide information about the nature of competition and frictions within sectors, and about the sources of rising wage inequality across businesses. Because there were no official statistics providing this level of detail, BLS and the Census Bureau partnered to create measures of within-industry productivity dispersion. These measures complement official BLS aggregate and industry-level productivity growth statistics and thereby improve our understanding of the rich productivity dynamics in the U.S. economy. The underlying microdata for these measures are available for use by qualified researchers on approved projects in the Federal Statistical Research Data Center (FSRDC) network. These new statistics confirm the presence of large productivity differences and we hope that these new data products will encourage further research into understanding these differences.
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  • Working Paper

    Total Error and Variability Measures with Integrated Disclosure Limitation for Quarterly Workforce Indicators and LEHD Origin Destination Employment Statistics in On The Map

    January 2017

    Working Paper Number:

    CES-17-71

    We report results from the rst comprehensive total quality evaluation of five major indicators in the U.S. Census Bureau's Longitudinal Employer-Household Dynamics (LEHD) Program Quarterly Workforce Indicators (QWI): total employment, beginning-of-quarter employment, full-quarter employment, total payroll, and average monthly earnings of full-quarter employees. Beginning-of-quarter employment is also the main tabulation variable in the LEHD Origin-Destination Employment Statistics (LODES) workplace reports as displayed in OnTheMap (OTM). The evaluation is conducted by generating multiple threads of the edit and imputation models used in the LEHD Infrastructure File System. These threads conform to the Rubin (1987) multiple imputation model, with each thread or implicate being the output of formal probability models that address coverage, edit, and imputation errors. Design-based sampling variability and nite population corrections are also included in the evaluation. We derive special formulas for the Rubin total variability and its components that are consistent with the disclosure avoidance system used for QWI and LODES/OTM workplace reports. These formulas allow us to publish the complete set of detailed total quality measures for QWI and LODES. The analysis reveals that the five publication variables under study are estimated very accurately for tabulations involving at least 10 jobs. Tabulations involving three to nine jobs have quality in the range generally deemed acceptable. Tabulations involving zero, one or two jobs, which are generally suppressed in the QWI and synthesized in LODES, have substantial total variability but their publication in LODES allows the formation of larger custom aggregations, which will in general have the accuracy estimated for tabulations in the QWI based on a similar number of workers.
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  • Working Paper

    Effects of a Government-Academic Partnership: Has the NSF-Census Bureau Research Network Helped Improve the U.S. Statistical System?

    January 2017

    Working Paper Number:

    CES-17-59R

    The National Science Foundation-Census Bureau Research Network (NCRN) was established in 2011 to create interdisciplinary research nodes on methodological questions of interest and significance to the broader research community and to the Federal Statistical System (FSS), particularly the Census Bureau. The activities to date have covered both fundamental and applied statistical research and have focused at least in part on the training of current and future generations of researchers in skills of relevance to surveys and alternative measurement of economic units, households, and persons. This paper discusses some of the key research findings of the eight nodes, organized into six topics: (1) Improving census and survey data collection methods; (2) Using alternative sources of data; (3) Protecting privacy and confidentiality by improving disclosure avoidance; (4) Using spatial and spatio-temporal statistical modeling to improve estimates; (5) Assessing data cost and quality tradeoffs; and (6) Combining information from multiple sources. It also reports on collaborations across nodes and with federal agencies, new software developed, and educational activities and outcomes. The paper concludes with an evaluation of the ability of the FSS to apply the NCRN's research outcomes and suggests some next steps, as well as the implications of this research-network model for future federal government renewal initiatives.
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  • Working Paper

    A Comparison of Training Modules for Administrative Records Use in Nonresponse Followup Operations: The 2010 Census and the American Community Survey

    January 2017

    Working Paper Number:

    CES-17-47

    While modeling work in preparation for the 2020 Census has shown that administrative records can be predictive of Nonresponse Followup (NRFU) enumeration outcomes, there is scope to examine the robustness of the models by using more recent training data. The models deployed for workload removal from the 2015 and 2016 Census Tests were based on associations of the 2010 Census with administrative records. Training the same models with more recent data from the American Community Survey (ACS) can identify any changes in parameter associations over time that might reduce the accuracy of model predictions. Furthermore, more recent training data would allow for the incorporation of new administrative record sources not available in 2010. However, differences in ACS methodology and the smaller sample size may limit its applicability. This paper replicates earlier results and examines model predictions based on the ACS in comparison with NRFU outcomes. The evaluation consists of a comparison of predicted counts and household compositions with actual 2015 NRFU outcomes. The main findings are an overall validation of the methodology using independent data.
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  • Working Paper

    Ready-to-Mix: Horizontal Mergers, Prices, and Productivity

    January 2017

    Authors: Robert Kulick

    Working Paper Number:

    CES-17-38

    I estimate the price and productivity effects of horizontal mergers in the ready-mix concrete industry using plant and firm-level data from the US Census Bureau. Horizontal mergers involving plants in close proximity are associated with price increases and decreases in output, but also raise productivity at acquired plants. While there is a significant negative relationship between productivity and prices, the rate at which productivity reduces price is modest and the effects of increased market power are not offset. I then present several additional new results of policy interest. For example, mergers are only observed leading to price increases after the relaxation of antitrust standards in the mid-1980s; price increases following mergers are persistent but tend to become smaller over time; and, there is evidence That firms target plants charging below average prices for acquisition. Finally, I use a simple multinomial logit demand model to assess the effects of merger activity on total welfare. At acquired plants, the consumer and producer surplus effects approximately cancel out, but effects at acquiring plants and non-merging plants, where prices also rise, cause a substantial decrease in consumer surplus.
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  • Working Paper

    Are firm-level idiosyncratic shocks important for U.S. aggregate volatility?

    January 2017

    Authors: Chen Yeh

    Working Paper Number:

    CES-17-23

    This paper quantitatively assesses whether firm-specific shocks can drive the U.S. business cycle. Firm-specific shocks to the largest firms can directly contribute to aggregate fluctuations whenever the firm size distribution is fat-tailed giving rise to the granular hypothesis. I use a novel, comprehensive data set compiled from administrative sources that contains the universe of firms and trade transactions, and find that the granular hypothesis accounts at most for 16 percent of the variation in aggregate sales growth. This is about half of that found by previous studies that imposed Gibrat's law where all firms are equally volatile regardless of their size. Using the full distribution of growth rates among U.S. firms, I find robust evidence of a negative relationship between firm-level volatility and size, i.e. the size-variance relationship. The largest firms (whose shocks drive granularity) are the least volatile under the size-variance relationship, thus their influence on aggregates is mitigated. I show that by taking this relationship into account the effect of firm-specific shocks on observed macroeconomic volatility is substantially reduced. I then investigate several plausible mechanisms that could explain the negative sizevariance relationship. After empirically ruling out some of them, I suggest a 'market power' channel in which large firms face smaller price elasticities and therefore respond less to a givensized productivity shock than small firms do. I provide direct evidence for this mechanism by estimating demand elasticities among U.S. manufactures. Lastly, I construct an analytically tractable framework that is consistent with several empirical regularities related to firm size.
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