War Discourse and the Cross Section of Expected Stock Returns

IF 9.5 1区 经济学 Q1 BUSINESS, FINANCE
DAVID HIRSHLEIFER, DAT MAI, KUNTARA PUKTHUANTHONG
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引用次数: 0

Abstract

A war‐related factor model derived from textual analysis of media news reports explains the cross section of expected stock returns. Using a semisupervised topic model to extract discourse topics from 7,000,000 New York Times stories spanning 160 years, the war factor predicts the cross section of returns across test assets derived from both traditional and machine learning construction techniques, and spanning 138 anomalies. Our findings are consistent with assets that are good hedges for war risk receiving lower risk premia, or with assets that are more positively sensitive to war prospects being more overvalued. The return premium on the war factor is incremental to standard effects.
战争话语与股票预期收益横截面
从媒体新闻报道的文本分析中得出的战争相关因素模型解释了预期股票收益的横截面。使用半监督主题模型从跨越160年的700万篇《纽约时报》故事中提取话语主题,战争因素预测了来自传统和机器学习构建技术的测试资产的回报横截面,并跨越138个异常。我们的研究结果与以下情况一致:对战争风险有良好对冲作用的资产获得较低的风险溢价,或者对战争前景更积极敏感的资产被高估得更多。战争因素的回报溢价对标准效应是递增的。
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来源期刊
Journal of Finance
Journal of Finance Multiple-
CiteScore
12.90
自引率
2.50%
发文量
88
期刊介绍: The Journal of Finance is a renowned publication that disseminates cutting-edge research across all major fields of financial inquiry. Widely regarded as the most cited academic journal in finance, each issue reaches over 8,000 academics, finance professionals, libraries, government entities, and financial institutions worldwide. Published bi-monthly, the journal serves as the official publication of The American Finance Association, the premier academic organization dedicated to advancing knowledge and understanding in financial economics. Join us in exploring the forefront of financial research and scholarship.
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