Investor confidence and forecastability of US stock market realized volatility : evidence from machine learning
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Date
Authors
Gupta, Rangan
Nel, Jacobus
Pierdzioch, Christian
Journal Title
Journal ISSN
Volume Title
Publisher
Routledge
Abstract
Using a machine-learning technique known as random forests, we analyze the role of investor confidence in forecasting monthly aggregate realized stock-market volatility of the United States (US), over and above a wide-array of macroeconomic and financial variables. We estimate random forests on data for a period from 2001 to 2020, and study horizons up to one year by computing forecasts for recursive and a rolling estimation window. We find that investor confidence, and especially investor confidence uncertainty has out-of-sample predictive value for overall realized volatility, as well as its “good” and “bad” variants. Our results have important implications for investors and policymakers.
Description
Keywords
Investor confidence, Realized volatility, Macroeconomic and financial predictors, Forecasting, Machine learning
Sustainable Development Goals
Citation
Rangan Gupta, Jacobus Nel & Christian Pierdzioch (2023) Investor
Confidence and Forecastability of US Stock Market Realized Volatility: Evidence from Machine
Learning, Journal of Behavioral Finance, 24:1, 111-122, DOI: 10.1080/15427560.2021.1949719.