Recommendation Engine for Lower Interest Borrowing on Peer to Peer Lending (P2PL) Platform

K. Ren, Avinash Malik
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引用次数: 3

Abstract

Online Peer to Peer Lending (P2PL) systems connect lenders and borrowers directly, thereby making it convenient to borrow and lend money without intermediaries such as banks. Many recommendation systems have been developed for lenders to achieve higher interest rates and avoid defaulting loans. However, there has not been much research in developing recommendation systems to help borrowers make wise decisions. On P2PL platforms, borrowers can either apply for bidding loans, where the interest rate is determined by lenders bidding on a loan or traditional loans where the P2PL platform determines the interest rate. Different borrower grades — determining the credit worthiness of borrowers get different interest rates via these two mechanisms. Hence, it is essential to determine which type of loans borrowers should apply for. In this paper, we build a recommendation system that recommends to any new borrower the type of loan they should apply for. Using our recommendation system, any borrower can achieve lowered interest rates with a higher likelihood of getting funded.
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点对点(P2PL)平台低利率借款推荐引擎
在线点对点贷款(P2PL)系统直接连接贷方和借款人,从而使借贷方便,无需银行等中介机构。许多推荐系统已经被开发出来,以帮助贷方获得更高的利率并避免贷款违约。然而,在开发推荐系统以帮助借款人做出明智决定方面,并没有太多的研究。在p2p平台上,借款人既可以申请竞价贷款,利率由贷款人对贷款进行竞价决定,也可以申请传统贷款,利率由p2p平台决定。不同的借款人等级-决定借款人的信用价值通过这两种机制获得不同的利率。因此,确定借款人应该申请哪种类型的贷款是至关重要的。在本文中,我们建立了一个推荐系统,向任何新借款人推荐他们应该申请的贷款类型。使用我们的推荐系统,任何借款人都可以获得更低的利率和更高的融资可能性。
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