Economic Narratives and Market Outcomes: A Semi-supervised Topic Modeling Approach

Dat Mai
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引用次数: 3

Abstract

I employ the seeded Latent Dirichlet Process (sLDA) model in natural language processing to extract the narratives discussed by Shiller (2019) from nearly seven million New York Times articles over the past 150 years. The estimation scheme is designed to avoid any look-ahead bias in constructing the monthly narrative weights. Among the narratives considered, the most important one is Panic, which encompasses various stress- and anxiety-related themes including economic downturns, wars, political tensions, and epidemics. I find that Panic and a narrative index that loads heavily on Panic are strong positive predictors of excess U.S. market return and negative predictors of both realized and implied market volatility. I document empirical support for Panic as a proxy for time-varying risk aversion, consistent with a univariate version of the intertemporal capital asset pricing model (ICAPM). The predictability of narratives over market returns holds at both market and portfolio level and at both monthly and daily interval, and importantly is increasing over time.
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经济叙事与市场结果:半监督主题建模方法
我在自然语言处理中使用了种子潜狄利克雷过程(sLDA)模型,从席勒(2019)在过去150年里从《纽约时报》近700万篇文章中提取了他所讨论的叙事。该估计方案旨在避免在构建月度叙事权重时出现任何前瞻性偏差。在考虑的叙事中,最重要的一个是恐慌,它包含了各种与压力和焦虑相关的主题,包括经济衰退、战争、政治紧张和流行病。我发现,Panic和一个严重依赖于Panic的叙述性指数是美国市场超额回报的积极预测指标,是实际和隐含市场波动的消极预测指标。我记录了恐慌作为时变风险厌恶的代理的实证支持,与跨期资本资产定价模型(ICAPM)的单变量版本一致。市场回报叙述的可预测性在市场和投资组合层面以及每月和每天的间隔上都是成立的,重要的是随着时间的推移而增加。
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