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Credit Scoring with Social Network Data

机译:信用评分与社交网络数据

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Motivated by the growing practice of using social network data in credit scoring, we analyze the impact of using network -based measures on customer score accuracy and on tie formation among customers. We develop a series of models to compare the accuracy of customer scores obtained with and without network data. We also investigate how the accuracy of social network -based scores changes when consumers can strategically construct their social networks to attain higher scores. We find that those who are motivated to improve their scores may form fewer ties and focus more on similar partners. The impact of such endogenous tie formation on the accuracy of consumer scores is ambiguous. Scores can become more accurate as a result of modifications in social networks, but this accuracy improvement may come with greater network fragmentation. The threat of social exclusion in such endogenously formed networks provides incentives to low-type members to exert effort that improves everyone's creditworthiness. We discuss implications for managers and public policy.
机译:受在信用评分中使用社交网络数据的日益增长的实践的激励,我们分析了使用基于网络的度量对客户评分准确性和客户之间关系形成的影响。我们开发了一系列模型来比较使用和不使用网络数据获得的客户评分的准确性。我们还研究了当消费者可以战略性地构建自己的社交网络以获得更高分数时,基于社交网络的分数准确性如何变化。我们发现,那些有动力提高自己分数的人可能会减少联系,而更多地关注类似的合作伙伴。这种内在联系的形成对消费者评分准确性的影响是模棱两可的。由于社交网络的修改,得分可能变得更加准确,但是这种准确性的提高可能伴随着更大的网络分裂。在这种内在形成的网络中,社会排斥的威胁为低级成员提供了激励,促使他们做出努力来提高每个人的信誉。我们讨论了对管理者和公共政策的影响。

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