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

**Authors:** Ke Ren, Avinash Malik

arXiv: 1907.11634 · 2019-07-29

## TL;DR

This paper presents a recommendation system for P2PL platforms that advises borrowers on the optimal loan type to minimize interest rates and increase funding chances.

## Contribution

It introduces a novel recommendation system specifically designed to guide borrowers in choosing between bidding and traditional loans on P2PL platforms.

## Key findings

- Borrowers using the system achieved lower interest rates.
- The system increased the likelihood of loan approval for borrowers.
- It effectively differentiates between suitable loan types for borrowers.

## 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.

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/1907.11634/full.md

---
Source: https://tomesphere.com/paper/1907.11634