Understanding the effects of socialness and color complexity in listing images on crowdfunding behavior

Stuart John Barnes
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Abstract

PurposeColor psychology theory reveals that complex images with very varied palettes and many different colors are likely to be considered unattractive by individuals. Notwithstanding, web content containing social signals may be more attractive via the initiation of a social connection. This research investigates a predictive model blending variables from these theoretical perspectives to determine crowdfunding success.Design/methodology/approachThe research is based on data from 176,614 Kickstarter projects. A number of machine learning and artificial intelligence techniques were employed to analyze the listing images for color complexity and the presence of people, while specific language features, including socialness, were measured in the listing text. Logistic regression was applied, controlling for several additional variables and predictive model was developed.FindingsThe findings supported the color complexity and socialness effects on crowdfunding success. The model achieves notable predictive value explaining 56.4% of variance. Listing images containing fewer colors and that have more similar colors are more likely to be crowdfunded successfully. Listings that convey greater socialness have a greater likelihood of being funded.Originality/valueThis investigation contributes a unique understanding of the effect of features of both socialness and color complexity on the success of crowdfunding ventures. A second contribution comes from the process and methods employed in the study, which provides a clear blueprint for the processing of large-scale analysis of soft information (images and text) in order to use them as variables in the scientific testing of theory.
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了解上市图片的社交性和色彩复杂性对众筹行为的影响
目的色彩心理学理论表明,调色板变化多端、颜色各异的复杂图像很可能会被个人认为缺乏吸引力。尽管如此,包含社交信号的网页内容通过建立社交联系可能更具吸引力。本研究从这些理论角度出发,研究了一个混合变量的预测模型,以确定众筹是否成功。设计/方法/途径本研究基于 176,614 个 Kickstarter 项目的数据。研究采用了大量机器学习和人工智能技术来分析列表图片的颜色复杂性和人物存在情况,同时在列表文本中测量了包括社交性在内的特定语言特征。结果研究结果支持色彩复杂性和社交性对众筹成功的影响。该模型具有显著的预测价值,可解释 56.4% 的方差。包含较少颜色和较多相似颜色的列表图片更有可能成功众筹。这项研究对社交性和颜色复杂性对众筹企业成功的影响有了独特的理解。第二个贡献来自于研究中采用的过程和方法,它为大规模分析软信息(图片和文本)的处理提供了清晰的蓝图,以便将其作为科学检验理论的变量。
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