What Can Analysts Learn from Artificial Intelligence about Fundamental Analysis?

Oliver Binz, K. Schipper, Kevin Standridge
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引用次数: 7

Abstract

We apply a machine learning algorithm to estimate Nissim and Penman’s (2001) structural framework that decomposes profitability into increasingly disaggregated profitability drivers. Our approach explicitly accommodates the non-linearities that precluded Nissim and Penman from estimating their framework. We find that out-of-sample profitability forecasts from our approach are generally more accurate than those of benchmark models. We use the profitability forecasts to estimate intrinsic values using the financial statement analysis design choices in Nissim and Penman’s framework and find that hypothetical investing strategies based on these value estimates generate risk-adjusted returns. Design choices that improve performance include increasingly granular disaggregation, a focus on core items, and long-horizon forecasts of operating performance. Perhaps surprisingly, we find only mixed evidence of benefits from incorporating historical financial statement information from beyond the current period.
分析师能从人工智能中学到什么基本面分析?
我们应用机器学习算法来估计Nissim和Penman(2001)的结构框架,该框架将盈利能力分解为越来越分散的盈利驱动因素。我们的方法明确地适应了使Nissim和Penman无法估计其框架的非线性。我们发现,从我们的方法中预测样本外的盈利能力通常比基准模型更准确。我们使用盈利能力预测来估计内在价值,使用Nissim和Penman框架中的财务报表分析设计选择,并发现基于这些价值估计的假设投资策略产生风险调整后的回报。提高性能的设计选择包括日益细化的分解、对核心项目的关注以及对运营性能的长期预测。也许令人惊讶的是,我们发现只有混合的证据表明合并当期以外的历史财务报表信息会带来好处。
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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