Textual Analysis in Asset Pricing.

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Event details

Date 11.09.2020
Hour 16:0017:30
Speaker Bryan KELLY, Yale
Location
Zoom
Category Conferences - Seminars

Bryan Kelly will present a combination of the following two papers:

  • The Structure of Economic News
We propose an approach to measuring the state of the economy via textual analysis of business news. From the full text content of 800,000 Wall Street Journal articles for 1984–2017, we estimate a topic model that summarizes business news as easily interpretable topical themes and quantifies the proportion of news attention allocated to each theme at each point in time. We then use our news attention estimates as inputs into statistical models of numerical economic time series. We demonstrate that these text-based inputs accurately track a wide range of economic activity measures and that they have incremental forecasting power for macroeconomic outcomes, above and beyond standard numerical predictors. Finally, we use our model to retrieve the news-based narratives that underly “shocks” in numerical economic data.
https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3446225
  • Predicting Returns with Text Data
We introduce a new text-mining methodology that extracts sentiment information from news articles to predict asset returns. Unlike more common sentiment scores used for stock return prediction (e.g., those sold by commercial vendors or built with dictionary-based methods), our supervised learning framework constructs a sentiment score that is specifically adapted to the problem of return prediction. Our method proceeds in three steps: 1) isolating a list of sentiment terms via predictive screening, 2) assigning sentiment weights to these words via topic modeling, and 3) aggregating terms into an article-level sentiment score via penalized likelihood. We derive theoretical guarantees on the accuracy of estimates from our model with minimal assumptions. In our empirical analysis, we text-mine one of the most actively monitored streams of news articles in the financial system — the Dow Jones Newswires — and show that our supervised sentiment model excels at extracting return-predictive signals in this context.
https://papers.ssrn.com/sol3/papers.cfm?abstract_id=3489226