Predicting Success Factors in Social Issue Crowdfunding Projects Using a Logistic Regression Analysis

Authors

  • Kazuki Munehisa Hiroshima Institute of Technology
  • Shimpei Matsumoto Hiroshima Institute of Technology

DOI:

https://doi.org/10.52731/lbds.v004.316

Abstract

This This study aims to provide quantitative evidence regarding the success factors of purchase-based crowdfunding for regional revitalization. While several studies have investigated success factors in crowdfunding, insufficient research has analyzed the success factors in the context of regional revitalization. Given the limited scope of regional revitalization, the success factors for projects may differ, making it an important research topic to conduct unique analyses focused on regional revitalization. This study proposes a predictive method for the success or failure of crowdfunding aimed at regional revitalization. The findings will be beneficial for utilizing crowd-funding in the context of regional revitalization.

References

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Published

2024-09-16