Research on crowdfunding success that incorporates CATA (computer-aided text analysis) is quickly advancing to the big leagues (e.g., Parhankangas and Renko, 2017; Anglin et al., 2018; Moss et al., 2018) and is often theoretically based on information asymmetry, social capital, signaling or a combination thereof. Yet, current papers that explore crowdfunding success criteria fail to take advantage of the full breadth of signals available and only very few such papers examine technology projects. In this paper, we compare and contrast the strength of the entrepreneur's textual success signals to project backers within this category. Based on a random sample of 1,049 technology projects collected from Kickstarter, we evaluate textual information not only from project titles and descriptions but also from video subtitles. We find that incorporating subtitle information increases the variance explained by the respective models and therefore their predictive capability for funding success. By expanding the information landscape, our work advances the field and paves the way for more fine-grained studies of success signals in crowdfunding and therefore for an improved understanding of investor decision-making in the crowd.
翻译:2017年,Parhandangas和Renko;Anglin等人等人,2018年;Moss等人,2018年),而且往往在理论上基于信息不对称、社会资本、信号或两者的结合。然而,目前探讨众筹成功标准的论文未能充分利用现有信号的方方面面,只有极少的这类论文考察技术项目。在本文中,我们比较并对比了企业家的文字成功信号与这一类中项目支持者的实力。根据从Kickstarter收集的1,049个技术项目的随机抽样,我们评估的文字信息不仅来自项目名称和描述,而且还来自视频字幕。我们发现,纳入字幕信息会增加各模型所解释的差异,从而增加其预测成功融资的能力。通过扩大信息范围,我们的工作推进了实地工作,并为更精细地研究人群筹资的成功信号铺平了道路。