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How Content Features of Charity Crowdfunding Projects Attract Potential Donors? Empirical Study of the Role of Project Images and Texts

机译:慈善众筹项目的内容特征如何吸引潜在捐助者?项目图像和文本作用的实证研究

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This study investigates how the content features (e.g., images and texts) of donation projects affect potential donors' participation. We collect textual and visual contents from one of the largest online donation crowdfunding platforms in South Korea. To extract features from the content, we use Deep Learning models for images and Latent Dirichlet Allocation (LDA) topic modeling for text contexts. We then construct variables representing visual and textual features. Finally, we estimate the effects of our independent variables on donors' participation by using the Ordinary Least Squares (OLS) model. Our empirical results show that (1) Observing a small number of recipients in images attract more donors than a large number of recipients does; (2) Negative and positive emotions decrease potential donors' willingness to help compared to neutral emotion; (3) Positive emotion in the image moderates the number of recipients' negative effect; and (4) Since complex project description requires more effort to understand the recipients, potential donors are less likely to be engaged. Through this study, we hope to make contributions to the extant literature. In addition, our framework for content analysis will contribute to the future studies as we shed light on novel methodologies to measure image and text dimensions.
机译:这项研究调查了捐赠项目的内容特征(例如图像和文字)如何影响潜在捐赠者的参与。我们从韩国最大的在线捐赠众筹平台之一收集文字和视觉内容。为了从内容中提取功能,我们将深度学习模型用于图像,将潜在狄利克雷分配(LDA)主题模型用于文本上下文。然后,我们构造代表视觉和文字特征的变量。最后,我们使用普通最小二乘(OLS)模型估算自变量对捐赠者参与的影响。我们的经验结果表明:(1)观察图像中的少量接收者比大量接收者吸引了更多的捐助者; (2)与中性情绪相比,负性情绪和积极情绪会降低潜在捐助者的帮助意愿; (3)图像中的积极情绪减轻了接收者的负面影响的数量; (4)由于项目描述复杂,需要更多的工作来了解受援者,因此潜在的捐助者参与的可能性较小。通过这项研究,我们希望为现有文献做出贡献。此外,当我们阐明测量图像和文本尺寸的新方法时,我们的内容分析框架将为将来的研究做出贡献。

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