CREAT: Census Research Exploration and Analysis Tool

Papers Containing Keywords(s): 'estimating'

The following papers contain search terms that you selected. From the papers listed below, you can navigate to the PDF, the profile page for that working paper, or see all the working papers written by an author. You can also explore tags, keywords, and authors that occur frequently within these papers.
Click here to search again

Frequently Occurring Concepts within this Search

Center for Economic Studies - 61

Ordinary Least Squares - 51

Annual Survey of Manufactures - 50

National Science Foundation - 49

North American Industry Classification System - 46

Longitudinal Research Database - 42

Total Factor Productivity - 39

Bureau of Labor Statistics - 37

Bureau of Economic Analysis - 36

Longitudinal Business Database - 35

Current Population Survey - 34

Standard Industrial Classification - 33

Census of Manufactures - 31

Internal Revenue Service - 30

Census Bureau Disclosure Review Board - 26

Longitudinal Employer Household Dynamics - 25

American Community Survey - 22

National Bureau of Economic Research - 22

Cobb-Douglas - 21

Economic Census - 21

Federal Reserve Bank - 21

Disclosure Review Board - 20

Federal Statistical Research Data Center - 20

Chicago Census Research Data Center - 20

Employer Identification Numbers - 19

Social Security Administration - 19

Protected Identification Key - 19

Metropolitan Statistical Area - 19

Census Bureau Longitudinal Business Database - 17

Decennial Census - 16

Alfred P Sloan Foundation - 16

Research Data Center - 15

Special Sworn Status - 15

Cornell University - 15

Social Security Number - 15

Social Security - 14

Census of Manufacturing Firms - 14

Census Bureau Business Register - 13

Business Register - 13

Department of Economics - 12

Survey of Income and Program Participation - 11

Quarterly Workforce Indicators - 11

Environmental Protection Agency - 11

Federal Reserve System - 11

Service Annual Survey - 11

Quarterly Census of Employment and Wages - 10

Energy Information Administration - 9

University of Chicago - 9

Standard Statistical Establishment List - 9

Generalized Method of Moments - 9

Manufacturing Energy Consumption Survey - 8

2010 Census - 8

Business Dynamics Statistics - 8

National Income and Product Accounts - 8

Organization for Economic Cooperation and Development - 8

Cornell Institute for Social and Economic Research - 8

Journal of Economic Literature - 8

Department of Labor - 7

Department of Housing and Urban Development - 7

Small Business Administration - 7

County Business Patterns - 7

Unemployment Insurance - 7

Detailed Earnings Records - 6

Indian Health Service - 6

Duke University - 6

Person Validation System - 6

Personally Identifiable Information - 6

Master Address File - 6

Housing and Urban Development - 6

LEHD Program - 6

United States Census Bureau - 6

European Union - 6

Department of Commerce - 6

PAOC - 6

Pollution Abatement Costs and Expenditures - 6

Permanent Plant Number - 6

IQR - 5

Social and Economic Supplement - 5

Office of Management and Budget - 5

AKM - 5

MIT Press - 5

W-2 - 5

Individual Characteristics File - 5

Establishment Micro Properties - 5

University of Maryland - 5

CDF - 5

Cumulative Density Function - 5

International Trade Research Report - 5

Local Employment Dynamics - 5

Census Bureau Center for Economic Studies - 5

New England County Metropolitan - 5

Annual Business Survey - 4

ASEC - 4

COVID-19 - 4

Supplemental Nutrition Assistance Program - 4

Statistics Canada - 4

1940 Census - 4

Department of Homeland Security - 4

Columbia University - 4

American Housing Survey - 4

Centers for Disease Control and Prevention - 4

Accommodation and Food Services - 4

Michigan Institute for Teaching and Research in Economics - 4

Office of Personnel Management - 4

Person Identification Validation System - 4

Business Employment Dynamics - 4

Geographic Information Systems - 4

Retirement History Survey - 4

TFPR - 4

Financial, Insurance and Real Estate Industries - 4

American Immigration Council - 4

Composite Person Record - 4

State Energy Data System - 4

TFPQ - 4

Retail Trade - 4

North American Industry Classi - 4

Employment History File - 4

Federal Government - 4

New York University - 4

Center for Administrative Records Research and Applications - 4

Employer Characteristics File - 4

Core Based Statistical Area - 4

Boston Research Data Center - 4

American Statistical Association - 4

CPS ASEC - 3

University of Michigan - 3

Social Science Research Institute - 3

Census Bureau Person Identification Validation System - 3

Disability Insurance - 3

Master Earnings File - 3

Journal of Labor Economics - 3

Census Numident - 3

NUMIDENT - 3

Individual Taxpayer Identification Numbers - 3

General Accounting Office - 3

Census Bureau Business Dynamics Statistics - 3

Federal Reserve Bank of Chicago - 3

Business Formation Statistics - 3

Department of Energy - 3

National Center for Science and Engineering Statistics - 3

Postal Service - 3

Department of Health and Human Services - 3

Wholesale Trade - 3

Arts, Entertainment - 3

National Ambient Air Quality Standards - 3

IZA - 3

Economic Research Service - 3

Business Research and Development and Innovation Survey - 3

Ohio State University - 3

Urban Institute - 3

Board of Governors - 3

National Institute on Aging - 3

Company Organization Survey - 3

MTO - 3

Educational Services - 3

Agriculture, Forestry - 3

SSA Numident - 3

Bureau of Labor - 3

Harvard University - 3

Employer-Household Dynamics - 3

Department of Agriculture - 3

Center for Administrative Records Research - 3

Public Use Micro Sample - 3

Kauffman Foundation - 3

Chicago RDC - 3

Survey of Industrial Research and Development - 3

Labor Turnover Survey - 3

Review of Economics and Statistics - 3

Commodity Flow Survey - 3

PSID - 3

American Economic Review - 3

Survey of Manufacturing Technology - 3

National Longitudinal Survey of Youth - 3

estimation - 72

econometric - 63

expenditure - 46

production - 45

economist - 41

growth - 41

statistical - 33

survey - 33

earnings - 31

demand - 29

manufacturing - 27

macroeconomic - 27

employ - 26

labor - 26

respondent - 25

estimator - 25

investment - 25

regression - 25

recession - 24

data - 23

efficiency - 22

employed - 22

market - 22

revenue - 21

gdp - 21

aggregate - 20

census bureau - 20

industrial - 20

produce - 20

endogeneity - 18

population - 17

sale - 17

workforce - 16

quarterly - 15

imputation - 15

payroll - 15

sector - 15

productivity growth - 14

data census - 14

consumption - 13

estimates production - 13

productive - 13

salary - 12

technological - 12

economically - 12

trend - 12

productivity measures - 12

depreciation - 12

measures productivity - 11

spillover - 11

unobserved - 11

datasets - 11

employment growth - 11

average - 10

percentile - 10

innovation - 10

report - 10

state - 10

census data - 10

microdata - 10

analysis - 10

housing - 10

employee - 10

econometrician - 10

industry productivity - 10

plant productivity - 10

cost - 10

longitudinal - 10

estimates productivity - 9

regress - 9

census employment - 9

disclosure - 9

emission - 9

estimates employment - 9

use census - 9

resident - 9

econometrically - 9

regulation - 9

metropolitan - 9

neighborhood - 9

productivity plants - 9

inference - 9

technology - 9

sampling - 8

factory - 8

rates productivity - 8

assessed - 8

bias - 8

regressing - 8

statistician - 8

autoregressive - 8

poverty - 8

efficient - 8

empirical - 8

impact - 8

inventory - 7

imputation model - 7

entrepreneurship - 7

growth productivity - 7

productivity dynamics - 7

energy - 7

epa - 7

record - 7

incentive - 7

indicator - 7

entrepreneur - 7

socioeconomic - 7

employment dynamics - 7

census research - 7

residential - 7

job - 7

worker - 7

aggregation - 7

establishment - 7

research census - 7

survey data - 6

survey income - 6

company - 6

electricity - 6

country - 6

exogeneity - 6

economic census - 6

residence - 6

analyst - 6

enterprise - 6

utilization - 6

elasticity - 6

productivity dispersion - 6

productivity estimates - 6

industries estimate - 6

finance - 6

endogenous - 6

aging - 6

spending - 6

merger - 6

regulatory - 6

pollution - 6

environmental - 6

profit - 6

analysis productivity - 6

labor statistics - 5

sample - 5

earner - 5

productivity impacts - 5

specialization - 5

subsidy - 5

fuel - 5

employment estimates - 5

assessing - 5

forecast - 5

household surveys - 5

rural - 5

regional - 5

privacy - 5

entrepreneurial - 5

earn - 5

yearly - 5

quantity - 5

agency - 5

imputed - 5

wage data - 5

factor productivity - 5

employer household - 5

census years - 5

model - 5

budget - 5

layoff - 5

regulated - 5

environmental regulation - 5

pollutant - 5

abatement expenditures - 5

pollution abatement - 5

capital - 5

technical - 5

regulation productivity - 5

aggregate productivity - 4

productivity analysis - 4

productivity variation - 4

ssa - 4

population survey - 4

manufacturer - 4

patent - 4

federal - 4

matching - 4

linkage - 4

policy - 4

income survey - 4

citizen - 4

city - 4

rent - 4

employment statistics - 4

ethnicity - 4

research - 4

turnover - 4

refinery - 4

renewable - 4

researcher - 4

observed productivity - 4

geographically - 4

productivity shocks - 4

confidentiality - 4

monopolistic - 4

competitor - 4

startup - 4

employment data - 4

disadvantaged - 4

hiring - 4

unemployed - 4

proprietorship - 4

wage changes - 4

economic statistics - 4

consumer - 4

firm dynamics - 4

inflation - 4

heterogeneity - 4

area - 4

geographic - 4

productivity size - 4

development - 4

employment changes - 4

employee data - 4

workforce indicators - 4

tax - 4

coverage - 4

costs pollution - 4

tenure - 4

longitudinal employer - 4

labor productivity - 4

investment productivity - 4

employment wages - 4

polluting - 4

profitability - 4

workplace - 4

2010 census - 3

innovate - 3

wages productivity - 3

innovating - 3

patenting - 3

externality - 3

census survey - 3

census records - 3

irs - 3

census responses - 3

urban - 3

locality - 3

relocation - 3

income data - 3

venture - 3

classified - 3

industrial classification - 3

classification - 3

rate - 3

utility - 3

incorporated - 3

regional economic - 3

larger firms - 3

tariff - 3

distribution - 3

energy efficiency - 3

gain - 3

yield - 3

wage regressions - 3

medicaid - 3

prevalence - 3

price - 3

department - 3

statistical disclosure - 3

public - 3

census use - 3

businesses grow - 3

declining - 3

mobility - 3

region - 3

dispersion productivity - 3

regressors - 3

product - 3

pricing - 3

investing - 3

insurance - 3

enrollment - 3

employment count - 3

acquisition - 3

financial - 3

household income - 3

employment flows - 3

compensation - 3

district - 3

substitute - 3

productivity differences - 3

plants industry - 3

plant investment - 3

employing - 3

industry growth - 3

performance - 3

plant - 3

textile - 3

Viewing papers 21 through 30 of 167


  • Working Paper

    Exploring New Ways to Classify Industries for Energy Analysis and Modeling

    November 2022

    Working Paper Number:

    CES-22-49

    Combustion, other emitting processes and fossil energy use outside the power sector have become urgent concerns given the United States' commitment to achieving net-zero greenhouse gas emissions by 2050. Industry is an important end user of energy and relies on fossil fuels used directly for process heating and as feedstocks for a diverse range of applications. Fuel and energy use by industry is heterogeneous, meaning even a single product group can vary broadly in its production routes and associated energy use. In the United States, the North American Industry Classification System (NAICS) serves as the standard for statistical data collection and reporting. In turn, data based on NAICS are the foundation of most United States energy modeling. Thus, the effectiveness of NAICS at representing energy use is a limiting condition for current expansive planning to improve energy efficiency and alternatives to fossil fuels in industry. Facility-level data could be used to build more detail into heterogeneous sectors and thus supplement data from Bureau of the Census and U.S Energy Information Administration reporting at NAICS code levels but are scarce. This work explores alternative classification schemes for industry based on energy use characteristics and validates an approach to estimate facility-level energy use from publicly available greenhouse gas emissions data from the U.S. Environmental Protection Agency (EPA). The approaches in this study can facilitate understanding of current, as well as possible future, energy demand. First, current approaches to the construction of industrial taxonomies are summarized along with their usefulness for industrial energy modeling. Unsupervised machine learning techniques are then used to detect clusters in data reported from the U.S. Department of Energy's Industrial Assessment Center program. Clusters of Industrial Assessment Center data show similar levels of correlation between energy use and explanatory variables as three-digit NAICS codes. Interestingly, the clusters each include a large cross section of NAICS codes, which lends additional support to the idea that NAICS may not be particularly suited for correlation between energy use and the variables studied. Fewer clusters are needed for the same level of correlation as shown in NAICS codes. Initial assessment shows a reasonable level of separation using support vector machines with higher than 80% accuracy, so machine learning approaches may be promising for further analysis. The IAC data is focused on smaller and medium-sized facilities and is biased toward higher energy users for a given facility type. Cladistics, an approach for classification developed in biology, is adapted to energy and process characteristics of industries. Cladistics applied to industrial systems seeks to understand the progression of organizations and technology as a type of evolution, wherein traits are inherited from previous systems but evolve due to the emergence of inventions and variations and a selection process driven by adaptation to pressures and favorable outcomes. A cladogram is presented for evolutionary directions in the iron and steel sector. Cladograms are a promising tool for constructing scenarios and summarizing directions of sectoral innovation. The cladogram of iron and steel is based on the drivers of energy use in the sector. Phylogenetic inference is similar to machine learning approaches as it is based on a machine-led search of the solution space, therefore avoiding some of the subjectivity of other classification systems. Our prototype approach for constructing an industry cladogram is based on process characteristics according to the innovation framework derived from Schumpeter to capture evolution in a given sector. The resulting cladogram represents a snapshot in time based on detailed study of process characteristics. This work could be an important tool for the design of scenarios for more detailed modeling. Cladograms reveal groupings of emerging or dominant processes and their implications in a way that may be helpful for policymakers and entrepreneurs, allowing them to see the larger picture, other good ideas, or competitors. Constructing a cladogram could be a good first step to analysis of many industries (e.g. nitrogenous fertilizer production, ethyl alcohol manufacturing), to understand their heterogeneity, emerging trends, and coherent groupings of related innovations. Finally, validation is performed for facility-level energy estimates from the EPA Greenhouse Gas Reporting Program. Facility-level data availability continues to be a major challenge for industrial modeling. The method outlined by (McMillan et al. 2016; McMillan and Ruth 2019) allows estimating of facility level energy use based on mandatory greenhouse gas reporting. The validation provided here is an important step for further use of this data for industrial energy modeling.
    View Full Paper PDF
  • Working Paper

    The U.S. Manufacturing Sector's Response to Higher Electricity Prices: Evidence from State-Level Renewable Portfolio Standards

    October 2022

    Working Paper Number:

    CES-22-47

    While several papers examine the effects of renewable portfolio standards (RPS) on electricity prices, they mainly rely on state-level data and there has been little research on how RPS policies affect manufacturing activity via their effect on electricity prices. Using plant-level data for the entire U.S. manufacturing sector and all electric utilities from 1992 ' 2015, we jointly estimate the effect of RPS adoption and stringency on plant-level electricity prices and production decisions. To ensure that our results are not sensitive to possible pre-existing differences across manufacturing plants in RPS and non-RPS states, we implement coarsened exact covariate matching. Our results suggest that electricity prices for plants in RPS states averaged about 2% higher than in non-RPS states, notably lower than prior estimates based on state-level data. In response to these higher electricity prices, we estimate that plant electricity usage declined by 1.2% for all plants and 1.8% for energy-intensive plants, broadly consistent with published estimates of the elasticity of electricity demand for industrial users. We find smaller declines in output, employment, and hours worked (relative to the decline in electricity use). Finally, several key RPS policy design features that vary substantially from state-to-state produce heterogeneous effects on plant-level electricity prices.
    View Full Paper PDF
  • Working Paper

    An Examination of the Informational Value of Self-Reported Innovation Questions

    October 2022

    Working Paper Number:

    CES-22-46

    Self-reported innovation measures provide an alternative means for examining the economic performance of firms or regions. While European researchers have been exploiting the data from the Community Innovation Survey for over two decades, uptake of US innovation data has been much slower. This paper uses a restricted innovation survey designed to differentiate incremental innovators from more far-ranging innovators and compares it to responses in the Annual Survey of Entrepreneurs (ASE) and the Business R&D and Innovation Survey (BRDIS) to examine the informational value of these positive innovation measures. The analysis begins by examining the association between the incremental innovation measure in the Rural Establishment Innovation Survey (REIS) and a measure of the inter-industry buying and selling complexity. A parallel analysis using BRDIS and ASE reveals such an association may vary among surveys, providing additional insight on the informational value of various innovation profiles available in self-reported innovation surveys.
    View Full Paper PDF
  • Working Paper

    Rising Markups or Changing Technology?

    September 2022

    Working Paper Number:

    CES-22-38R

    Recent evidence suggests the U.S. business environment is changing, with rising market concentration and markups. The most prominent and extensive evidence backs out firm-level markups from the first-order conditions for variable factors. The markup is identified as the ratio of the variable factor's output elasticity to its cost share of revenue. Our analysis starts from this indirect approach, but we exploit a long panel of manufacturing establishments to permit output elasticities to vary to a much greater extent - relative to the existing literature - across establishments within the same industry over time. With our more detailed estimates of output elasticities, the measured increase in markups is substantially dampened, if not eliminated, for U.S. manufacturing. As supporting evidence, we relate differences in the markups' patterns to observable changes in technology (e.g., computer investment per worker, capital intensity, diversification to non-manufacturing) and find patterns in support of changing technology as the driver of those differences.
    View Full Paper PDF
  • Working Paper

    Agglomeration Spillovers and Persistence: New Evidence from Large Plant Openings

    June 2022

    Working Paper Number:

    CES-22-21

    We use confidential Census microdata to compare outcomes for plants in counties that 'win' a new plant to plants in similar counties that did not to receive the new plant, providing empirical evidence on the economic theories used to justify local industrial policies. We find little evidence that the average highly incentivized large plant generates significant productivity spillovers. Our semiparametric estimates of the overall local agglomeration function indicate that residual TFP is linear for the range of 'agglomeration' densities most frequently observed, suggesting local economic shocks do not push local economies to a new higher equilibrium. Examining changes twenty years after the new plant entrant, we find some evidence of persistent, positive increases in winning county-manufacturing shares that are not driven by establishment births.
    View Full Paper PDF
  • Working Paper

    Improving Estimates of Neighborhood Change with Constant Tract Boundaries

    May 2022

    Working Paper Number:

    CES-22-16

    Social scientists routinely rely on methods of interpolation to adjust available data to their research needs. This study calls attention to the potential for substantial error in efforts to harmonize data to constant boundaries using standard approaches to areal and population interpolation. We compare estimates from a standard source (the Longitudinal Tract Data Base) to true values calculated by re-aggregating original 2000 census microdata to 2010 tract areas. We then demonstrate an alternative approach that allows the re-aggregated values to be publicly disclosed, using 'differential privacy' (DP) methods to inject random noise to protect confidentiality of the raw data. The DP estimates are considerably more accurate than the interpolated estimates. We also examine conditions under which interpolation is more susceptible to error. This study reveals cause for greater caution in the use of interpolated estimates from any source. Until and unless DP estimates can be publicly disclosed for a wide range of variables and years, research on neighborhood change should routinely examine data for signs of estimation error that may be substantial in a large share of tracts that experienced complex boundary changes.
    View Full Paper PDF
  • Working Paper

    Has toughness of local competition declined?

    May 2022

    Authors: Lan Dinh

    Working Paper Number:

    CES-22-13

    Recent evidence on rm-level markups and concentration raises a concern that market competition has declined in the U.S. over the last few decades. Since measuring competition is difficult, methodologies used to arrive at these findings have merits but also raise technical concerns which question the validity of these results. Given the significance of documenting how competition has changed, I contribute to this literature by studying a different measure of competition. Specifically, I estimate the toughness of local competition over time. To derive this estimate, I use a generalized monopolistic competition model with variable markups. This model generates insights that allows me to measure competition as the sensitivity of weighted-average markup to changes in the number of competitors using directly observable variables. Compared to firm-level markups estimation, this method relaxes the need to estimate production functions. I then use confidential Census data to estimate toughness of local competition from 1997 to 2016, which shows that local competition has decreased in non-tradable industries on average in the U.S. during this time period.
    View Full Paper PDF
  • Working Paper

    Finding Needles in Haystacks: Multiple-Imputation Record Linkage Using Machine Learning

    November 2021

    Working Paper Number:

    CES-21-35

    This paper considers the problem of record linkage between a household-level survey and an establishment-level frame in the absence of unique identifiers. Linkage between frames in this setting is challenging because the distribution of employment across establishments is highly skewed. To address these difficulties, this paper develops a probabilistic record linkage methodology that combines machine learning (ML) with multiple imputation (MI). This ML-MI methodology is applied to link survey respondents in the Health and Retirement Study to their workplaces in the Census Business Register. The linked data reveal new evidence that non-sampling errors in household survey data are correlated with respondents' workplace characteristics.
    View Full Paper PDF
  • Working Paper

    Heavy Tailed, but not Zipf: Firm and Establishment Size in the U.S.

    July 2021

    Working Paper Number:

    CES-21-15

    Heavy tails play an important role in modern macroeconomics and international economics. Previous work often assumes a Pareto distribution for firm size, typically with a shape parameter approaching Zipf's law. This convenient approximation has dramatic consequences for the importance of large firms in the economy. But we show that a lognormal distribution, or better yet, a convolution of a lognormal and a non-Zipf Pareto distribution, provides a better description of the U.S. economy, using confidential Census Bureau data. These findings hold even far in the upper tail and suggest heterogeneous firm models should more systematically explore deviations from Zipf's law.
    View Full Paper PDF
  • Working Paper

    Business Applications as a Leading Economic Indicator?

    May 2021

    Working Paper Number:

    CES-21-09R

    How are applications to start new businesses related to aggregate economic activity? This paper explores the properties of three monthly business application series from the U.S. Census Bureau's Business Formation Statistics as economic indicators: all business applications, business applications that are relatively likely to turn into new employer businesses ('likely employers'), and the residual series -- business applications that have a relatively low rate of becoming employers ('likely non-employers'). Growth in applications for likely employers significantly leads total nonfarm employment growth and has a strong positive correlation with it. Furthermore, growth in applications for likely employers leads growth in most of the monthly Principal Federal Economic Indicators (PFEIs). Motivated by our findings, we estimate a dynamic factor model (DFM) to forecast nonfarm employment growth over a 12-month period using the PFEIs and the likely employers series. The latter improves the model's forecast, especially in the years following the turning points of the Great Recession and the COVID-19 pandemic. Overall, applications for likely employers are a strong leading indicator of monthly PFEIs and aggregate economic activity, whereas applications for likely non-employers provide early information about changes in increasingly prevalent self-employment activity in the U.S. economy.
    View Full Paper PDF