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Secure Lending: Blockchain and Prospect Theory-Based Decentralized Credit Scoring Model

机译:安全贷款:基于区块链和前景理论的分散信用评分模型

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摘要

Credit scoring is a rigorous statistical analysis carried out by lenders and other third parties to access an individual's creditworthiness. Lenders use credit scoring to estimate the degree of risk in lending money to an individual. However, credit score evaluation is primarily based on a transaction record, payment history, professional background, etc. sourced from different credit bureaus. So, evaluating a credit score is a laborious and tedious task involving a lot of paperwork. In this paper, we propose how blockchain can provide the solution to decentralized credit scoring evaluation and reducing the amount of dependence of paperwork. Lending money is not always objective but subjective to every lender. The decision of lending involves different levels of risk and uncertainty, depending on their perspective. This paper uses the prospect theory to model the optimal investment strategy for different risk vs. return scenarios.
机译:信用评分是贷方和其他第三方进行的严格统计分析,以获得个人的信誉。贷款人使用信用评分来估计向个人贷款的风险程度。但是,信用评分评估主要基于来自不同信用局的交易记录,支付历史,专业背景等。因此,评估信用评分是一种艰苦而繁琐的任务,涉及大量文书工作。在本文中,我们提出了区块链可以为分散的信用评分评估和减少文书工作的依赖量提供解决方案。贷款金钱并不总是客观,而是每个贷方的主观。根据他们的观点,贷款的决定涉及不同程度的风险和不确定性。本文采用了前景理论,为不同风险的最佳投资策略与返回方案进行了模拟。

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