Quantifying Soft Information, Mortgage Market Efficiency & Asset Pricing Implications

A. Bandyopadhyay
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引用次数: 3

Abstract

I provide a novel framework for machine learning models to ingest quantified soft information during the life of a loan, using cutting-edge natural language processing techniques on salient unstructured text. This soft information, from servicer call transcripts, is not restricted to mere positive/negative sentiments and provides efficiency and alleviates the information asymmetry between the lender (and/or issuer) and the borrower. Proprietary servicer comments are hardly accessible and offer the soft in-formation for real-time delinquency status of the mortgages. I investigate whether the special servicer invoked by the investor can utilize the valuable comments from the master servicer. The time-varying soft information about the borrower’s financial condition, health of the loan and the property condition from these master servicer comments renders the predictive power and has asset pricing implications. Given this valuable information, the special servicer may choose to use this information, as I anecdotally see with several private equity investors. The well-known unresolved conflict of interest between the master and special servicers can be resolved, thereby reducing moral hazard and increasing efficiency and transparency.
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量化软信息,抵押贷款市场效率和资产定价的影响
我为机器学习模型提供了一个新的框架,在贷款期间摄取量化的软信息,使用尖端的自然语言处理技术处理突出的非结构化文本。这种软信息,来自服务电话记录,不局限于单纯的积极/消极情绪,并提供了效率,减轻了贷款人(和/或发行人)和借款人之间的信息不对称。专有服务人员的评论很难访问,并提供了实时拖欠抵押贷款状态的软信息。我考察了投资者所调用的特殊服务人员是否能够利用来自主服务人员的宝贵意见。从这些主服务评论中获得的关于借款人财务状况、贷款健康状况和财产状况的时变软信息,具有预测能力,并具有资产定价含义。鉴于这些有价值的信息,特殊服务人员可能会选择使用这些信息,就像我在一些私人股本投资者身上看到的那样。众所周知,主官和特勤人员之间尚未解决的利益冲突可以得到解决,从而减少道德风险,提高效率和透明度。
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