你想预见你的未来吗?预测Kickstarter活动成功的最佳模型

Jiayu Tian
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引用次数: 1

摘要

许多创作者发现众筹网站是为他们的活动获得帮助的最佳途径之一。Kickstarter作为众筹网站的代表,为他们的梦想提供了一个伟大的平台。然而,并不是每个人都成功地达到了他们的融资目标。在本文中,我们将找出哪些机器学习模型和因素能够最好地预测Kickstarter活动的成功概率。通过比较6种不同的机器学习模型,我们发现表现最好的模型是随机森林模型,其鲁棒预测准确率达到87.85%,比现有研究提高了10%。因子重要性分析表明,决定众筹项目成功率的前三个最重要的因素是支持者的数量、是否被编辑挑选、活动的编辑时间。这表明,要发行一个成功的项目,支持者的数量,是否被编辑选中,以及活动的编辑时间应该比其他因素更重要。我们的研究揭示了众筹项目的决定因素和机器学习的下游应用。
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Do You Want to Foresee Your Future? The Best Model Predicting the Success of Kickstarter Campaigns
Many creators find crowdfunding websites one of the best ways to get assistance for their campaigns. Kickstarter, as one representative crowdfunding website, provides a great platform for their brightest dreams. However, not everyone successfully reaches their funding goals. In this paper, we figure out what machine learning model and factors can best predict success probability in a Kickstarter campaign. Through comparing 6 different machine learning models, we find that the best performing model is the Random Forest model, with robust forecast accuracy of 87.85%, which is 10% higher than existing studies. Factor importance analysis indicates that the number of backers, whether picked up by editors, and the edit time of campaign are the top three most important factors in determining the success rate of crowd-funding projects. This suggests, to launch a successful project, the number of backers, whether picked up by editors, and the edit time of campaign should be weighted more than other factors. Our research shed light on both crowd-funding project determinants and machine leaning down-stream applications.
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