We retrieve news stories and earnings announcements of the S&P 100 constituents from two professional news providers, along with tenmacroeconomic indicators.We also gather data fromGoogle Trends about these firms’ assets as an index of retail investors’ attention. Thus, we create an extensive and innovative database that contains precise information with which to analyze the link between news and asset price dynamics. We detect the sentiment of news stories using a dictionary of sentiment-related words and negations and propose a set of more than five thousand information-based variables that provide natural proxies for the information used by heterogeneousmarket players. We first shed light on the impact of information measures on daily realized volatility and select them by penalized regression. Then,we performa forecasting exercise and showthat themodel augmentedwith news-related variables provides superior forecasts.

Building News Measures from Textual Data and an Application to Volatility Forecasting

Caporin, Massimiliano
;
POLI, FRANCESCO
2017

Abstract

We retrieve news stories and earnings announcements of the S&P 100 constituents from two professional news providers, along with tenmacroeconomic indicators.We also gather data fromGoogle Trends about these firms’ assets as an index of retail investors’ attention. Thus, we create an extensive and innovative database that contains precise information with which to analyze the link between news and asset price dynamics. We detect the sentiment of news stories using a dictionary of sentiment-related words and negations and propose a set of more than five thousand information-based variables that provide natural proxies for the information used by heterogeneousmarket players. We first shed light on the impact of information measures on daily realized volatility and select them by penalized regression. Then,we performa forecasting exercise and showthat themodel augmentedwith news-related variables provides superior forecasts.
2017
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11577/3249244
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