Public Policy and Broader Applications for the Use of Text Analytics During Pandemics
Dan Bumblauskas (),
Amy Igou (),
Salil Kalghatgi () and
Cole Wetzel ()
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Dan Bumblauskas: Department of Management, College of Business, University of Northern Iowa, Cedar Falls, Iowa 50614
Amy Igou: Department of Accounting, College of Business, University of Northern Iowa, Cedar Falls, Iowa 50614
Salil Kalghatgi: Vascular Division, Cook Medical, Bloomington, Indiana 47402
Cole Wetzel: Institutional Data Analytics + Assessment, Purdue University, West Lafayette, Indiana 47907
Interfaces, 2022, vol. 52, issue 6, 568-581
Abstract:
The state of Iowa conducted an initial business survey in March 2020 as the novel coronavirus disease 2019 (COVID-19) broke out across the United States. The survey data have been used for decision and policy making at the state level. Relief incentive packages were provided via the Iowa Economic Development Authority (IEDA) to Iowa-based companies to support their operations. A team of policy makers, faculty, and industry professionals was formed to conduct text analyses, analyze the survey responses, validate insights, and ensure that the appropriate policies were enacted. The analysis yielded a reproducible process using the statistical software R to quickly analyze large volumes of free-text responses to open-ended survey questions and develop topics comparable to those found through human coding. This process, using biterm topic models (BTMs), was first used to verify and validate the results of human coding and, because of its increased speed to insights compared with that of human coding, to validate hypotheses empirically much more quickly in subsequent surveys. Analyzing free-text responses has given the IEDA confidence that open-ended survey questions provide value not previously captured. In addition to the original survey, the three subsequent ones, along with several additional projects, have been shaped by the original text-mining methods.
Keywords: text analytics; operations management; public policy; decision-making (search for similar items in EconPapers)
Date: 2022
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Citations: View citations in EconPapers (2)
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