4.5 Article

A machine learning approach to predict the success of crowdfunding fintech project

期刊

JOURNAL OF ENTERPRISE INFORMATION MANAGEMENT
卷 35, 期 6, 页码 1678-1696

出版社

EMERALD GROUP PUBLISHING LTD
DOI: 10.1108/JEIM-01-2019-0017

关键词

Machine learning; Fintech; Ensemble neural network; Big data; Crowdfunding; Social capital

资金

  1. National Natural Science Foundation of China [61906043, 61877010, 11501114, 11901100]
  2. Fujian Natural Science Funds [2019J01243]
  3. Funds of Education Department of Fujian Province [JAT190026]
  4. Fuzhou University [510872/GXRC-20016, 510930/XRC-20060, 510730/XRC-18075, 510809/GXRC-19037, 510649/XRC-18049, 510650/XRC18050]
  5. Ministry of Science and Technology, Taiwan [107-2635-H-153-003]

向作者/读者索取更多资源

This study predicts the success of crowdfunding projects by analyzing social media activity, human capital of funders, and online project presentation. It proposes a neural network method based on ensemble machine learning to prevent overfitting. The study shows that the ensemble neural network method achieves the highest accuracy for prediction. It also provides practical implications for project founders and investors by identifying influential features and offering a model to predict crowdfunding success.
Purpose - The crowdfunding market has experienced rapid growth in recent years. However, not all projects are successfully financed because of information asymmetries between the founder and the providers of external finance. This shortfall in funding has made factors that lead to successful fundraising, a great interest to researchers. This study draws on the social capital theory, human capital theory and level of processing (LOP) theory to predict the success of crowdfunding projects. Design/methodology/approach - A feature set is extracted and correlations between project success and features are utilized to order the features. The artificial neural network (ANN) is popularly applied to analyze the dependencies of the input variables to improve the accuracy of prediction. However, the problem of overfitting may exist in such neural networks. This study proposes a neural network method based on ensemble machine learning and dropout methods to generate several neural networks for preventing the problem of overfitting. Four machine learning techniques are applied and compared for prediction performance. Findings - This study shows that the success of crowdfunding projects can be predicted by measuring and analyzing big data of social media activity, human capital of funders and online project presentation. The ensemble neural network method achieves highest accuracy. The investments rose from early projects and another platform by the funder serve as credible indicators for later investors. Practical implications - The managerial implication of this study is that the project founders and investors can apply the proposed model to predict the success of crowdfunding projects. This study also identifies the most influential features that affect fundraising outcomes. The project funders can use these features to increase the successful opportunities of crowdfunding project. Originality/value - This study contributes to apply a new machine learning modeling method to extract features from activity data of crowdfunding platforms and predict crowdfunding project success. In addition, it contributes to the research on the deployment of social capital, human capital and online presentation strategies in a crowdfunding context as well as offers practical implications for project funders and investors.

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