CREAT: Census Research Exploration and Analysis Tool

Tapping Business and Household Surveys to Sharpen Our View of Work from Home

June 2025

Abstract

Timely business-level measures of work from home (WFH) are scarce for the U.S. economy. We review prior survey-based efforts to quantify the incidence and character of WFH and describe new questions that we developed and fielded for the Business Trends and Outlook Survey (BTOS). Drawing on more than 150,000 firm-level responses to the BTOS, we obtain four main findings. First, nearly a third of businesses have employees who work from home, with tremendous variation across sectors. The share of businesses with WFH employees is nearly ten times larger in the Information sector than in Accommodation and Food Services. Second, employees work from home about 1 day per week, on average, and businesses expect similar WFH levels in five years. Third, feasibility aside, businesses' largest concern with WFH relates to productivity. Seven percent of businesses find that onsite work is more productive, while two percent find that WFH is more productive. Fourth, there is a low level of tracking and monitoring of WFH activities, with 70% of firms reporting they do not track employee days in the office and 75% reporting they do not monitor employees when they work from home. These lessons serve as a starting point for enhancing WFH-related content in the American Community Survey and other household surveys.

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demand, payroll, statistical, report, survey, respondent, employed, labor, sector, workforce, spending, census bureau, household surveys, census survey, 2010 census, prevalence, census 2020

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Characteristics of Business Owners, Bureau of Labor Statistics, Center for Economic Studies, Office of Management and Budget, Financial, Insurance and Real Estate Industries, National Longitudinal Survey of Youth, Current Population Survey, Longitudinal Business Database, Postal Service, North American Industry Classification System, American Community Survey, Health and Retirement Study, Technical Services, Census Bureau Disclosure Review Board, Business Dynamics Statistics, Arts, Entertainment, Accommodation and Food Services, Management and Organizational Practices Survey, Annual Business Survey

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