Relative Valuation with Machine Learning

P. Geertsema, Helen Lu
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引用次数: 4

Abstract

We use a decision-tree-based machine learning approach to perform relative valuation. Stocks are valued using market-to-book, enterprise-value-to-assets and enterprise-value-to-sales multiples. Our machine learning models reduce median absolute valuation errors by a minimum of 5.6 to 31.4 percentage points relative to traditional models, depending on the multiple used. The identified valuation drivers are consistent with theoretical predictions derived from a discounted cash flow approach. Accounting variables related to profitability, growth, efficiency and financial soundness are important valuation drivers. The valuations produced by machine learning models behave like fundamental values. A value-weighted strategy that buys (sells) undervalued (overvalued) stocks generates highly significant abnormal returns. When we use models trained on listed firms to value IPOs, machine learning models outperform traditional models in valuation accuracy and are better at identifying overpriced IPOs.
机器学习的相对估值
我们使用基于决策树的机器学习方法来执行相对估值。股票的估值采用市净率、企业价值与资产之比和企业价值与销售额之比。与传统模型相比,我们的机器学习模型将绝对估值误差中位数减少了至少5.6至31.4个百分点,具体取决于所使用的倍数。确定的估值驱动因素与从贴现现金流方法中得出的理论预测一致。与盈利能力、增长、效率和财务稳健性相关的会计变量是重要的估值驱动因素。机器学习模型产生的估值表现得像基本价值。买入(卖出)被低估(高估)的股票的价值加权策略会产生非常显著的异常回报。当我们使用经过上市公司培训的模型对ipo进行估值时,机器学习模型在估值准确性方面优于传统模型,并且更善于识别定价过高的ipo。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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