Not logged in.

Contribution Details

Type Journal Article
Scope Discipline-based scholarship
Title The value of publicly available, textual and non-textual information for startup performance prediction
Organization Unit
Authors
  • Ulrich Kaiser
  • Johan M Kuhn
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
Journal Title Journal of Business Venturing Insights
Publisher Elsevier
Geographical Reach international
ISSN 2352-6734
Volume 14
Page Range e00179
Date 2020
Abstract Text We use administrative textual and non-textual data retrieved from publicly available archives to predict the performance of Danish startups at the time of foundation. The performance outcomes we consider are survival, high employment growth, a return on assets of above 20 percent, new patent applications and participation in an innovation subsidy program. We consider a base specification that includes variables for legal form, region, ownership and industry in all specifications and add variable sets representing firm names, business purpose statements (BPSs) as well as founder and startup characteristics. To forecast the two innovation-related performance outcomes well, we only need to include a set of variables derived from the BPS texts on top of the base variables while an accurate prediction of startup survival requires the combination of the firm names and the BPS variables along with founder characteristics. An accurate forecast of high employment growth needs the combination of the BPS variables and the founder characteristics. All information our forecasts require is likely to be easily obtainable since the underlying information is mandatory to report upon business registration in many countries. The substantial accuracy of our predictions for survival, employment growth, new patents and participation in innovation subsidy programs indicates ample scope for algorithmic scoring models as an additional pillar of funding and innovation support decisions.
Free access at DOI
Digital Object Identifier 10.1016/j.jbvi.2020.e00179
Other Identification Number merlin-id:20205
PDF File Download from ZORA
Export BibTeX
EP3 XML (ZORA)