School of Economics & Management, China University of Petroleum (hua dong), Qingdao, P.R. China.
PLoS One. 2020 Aug 6;15(8):e0236979. doi: 10.1371/journal.pone.0236979. eCollection 2020.
The aim of this study is to identify the dynamic explicit and implicit information factors which displayed on the webpage of platforms that influence backers' investment decision-making behavior. We analyze the connections among these factors by collecting the longitudinal dataset from reward-based crowdfunding platform. Based on ELM model, we establish Fixed Estimation Panel Data Model respectively according to explicit and implicit factors and take Funding Status (crowdfunding results) as the moderating variable to observe the goal gradient effect. Results indicate that most variables in the central route affect backers' investment behavior positively, while most variables in the periphery route have a negative impact on backers' investment behavior. The Funding Status has a significant negative moderating effect on the explicit variables, and has no significant moderating effect on the implicit information variables of the project. In addition, we upgrade the econometric method used by previous scholars, which could improve the accuracy of the FE model. Furthermore, we find strong support for the herding effect in reward-based crowdfunding and the intensity tends to decrease before the funding goal draws near.
本研究旨在识别出展示在影响支持者投资决策行为的平台网页上的动态显性和隐性信息因素。我们通过收集奖励式众筹平台的纵向数据集,分析这些因素之间的联系。基于 ELM 模型,我们分别根据显性和隐性因素建立固定估计面板数据模型,并以资金状态(众筹结果)作为调节变量,观察目标梯度效应。结果表明,中心路径中的大多数变量对支持者的投资行为产生积极影响,而外围路径中的大多数变量对支持者的投资行为产生负面影响。资金状态对显性变量有显著的负向调节作用,对项目的隐性信息变量没有显著的调节作用。此外,我们升级了之前学者使用的计量经济学方法,这可以提高 FE 模型的准确性。此外,我们发现奖励式众筹中存在强烈的羊群效应,而且这种趋势在资金目标临近时趋于减弱。