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To Gather Together for a Better World: Understanding and Leveraging Communities in Micro-lending Recommendation

机译:聚在一起,共创美好世界:在小额贷款推荐中理解和利用社区

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Micro-finance organizations provide non-profit lending opportunities to mitigate poverty by financially supporting impoverished, yet skilled entrepreneurs who are in desperate need of an institution that lends to them. In Kiva.org. a widely-used crowd-funded micro-financial service, a vast amount of micro-financial activities are done by lending teams, and thus, understanding their diverse characteristics is crucial in maintaining a healthy micro-finance ecosystem. As the first step for this goal, we model different lending teams by using a maximum-entropy distribution approach based on a wealthy set. of heterogeneous information regarding micro-financial transactions available at Kiva. Based on this approach, we achieved a competitive performance in predicting the lending activities for the top 200 teams. Furthermore, we provide deep insight about the characteristics of lending teams by analyzing the resulting team-specific lending models. We found that lending teams are generally more careful in selecting loans by a loan's geo-location, a borrower's gender, a field partner's reliability, etc., when compared to lenders without team affiliations. In addition, we identified interesting lending behaviors of different lending teams based on lenders' background and interest such as their ethnic, religious, linguistic, educational, regional, and occupational aspects. Finally, using our proposed model, we tackled a novel problem of lending team recommendation and showed its promising performance results.
机译:小额信贷组织通过经济上支持急需向其提供贷款的机构的贫穷而又熟练的企业家,提供非营利贷款机会,以减轻贫困。在Kiva.org中。作为广泛使用的由群众提供资金的小额信贷服务,放贷团队进行了大量的小额金融活动,因此,了解其多样化特征对于维持健康的小额信贷生态系统至关重要。作为该目标的第一步,我们通过使用基于财富集的最大熵分配方法对不同的借贷团队进行建模。有关Kiva的小额金融交易的各种信息。基于这种方法,我们在预测前200名团队的借贷活动方面取得了竞争优势。此外,我们通过分析由此产生的特定于团队的贷款模型,提供有关贷款团队特征的深刻见解。我们发现,与没有团队隶属关系的贷方相比,贷款团队通常在选择贷款地理位置时,借款人的性别,现场合作伙伴的可靠性等方面更加谨慎。此外,我们根据贷方的背景和兴趣(例如种族,宗教,语言,教育,地区和职业方面)确定了不同借贷团队的有趣借贷行为。最后,使用我们提出的模型,我们解决了贷款团队推荐的一个新问题,并显示了其令人鼓舞的绩效结果。

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