Matchmaking in reward-based crowdfunding platforms: a hybrid machine learning approach
Shaojian Qu,
Lei Xu,
Sachin Kumar Mangla,
Felix T. S. Chan,
Jianli Zhu and
Sobhan Arisian
International Journal of Production Research, 2022, vol. 60, issue 24, 7551-7571
Abstract:
Traditional clustering methods fail to accurately cluster the feature vectors of backers and macth the potential backers to compatible crowdfunding projects, mainly due to their sensitivity to the setting of the initial value. In this paper, we use the Apriori algorithm in conjunction with other machine learning tools to cluster the potential backers and provide more accurate recommendations for crowdfunding projects. Focusing on potential projects listed in a major reward-based crowdfunding platform, we first train the data obtained from the available list of backers. Using the Apriori algorithm, the degree of association between different project backers is then obtained, and weight calculation of the backers is carried out according to the association degree of the backers. The degree of association is used as a key index to cluster similar backers. Finally, we test the model and determine whether clustering can correctly classify the data in the test set based on the Apriori algorithm. Our experimental results show that there is 90% accuracy, precision and recall of the model. The proposed solution outperforms the other five benchmark methods and offers an imporved matchmaking by connecting the listed crowdfunding projects to the right backers.
Date: 2022
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DOI: 10.1080/00207543.2022.2121870
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