Option Return Predictability with Machine Learning and Big Data

Bali, Turan G.; Beckmeyer, Heiner; Moerke, Mathis; Weigert, Florian

Research article (journal) | Peer reviewed

Abstract

Drawing upon more than 12 million observations over the period from 1996 to 2020, we find that allowing for nonlinearities significantly increases the out-of-sample performance of option and stock characteristics in predicting future option returns. The nonlinear machine learning models generate statistically and economically sizable profits in the long-short portfolios of equity options even after accounting for transaction costs. Although option-based characteristics are the most important standalone predictors, stock-based measures offer substantial incremental predictive power when considered alongside option-based characteristics. Finally, we provide compelling evidence that option return predictability is driven by informational frictions and option mispricing.

Details about the publication

JournalReview of Financial Studies
Volume36
Issue9
Page range3548-3602
StatusPublished
Release year2023
DOI10.1093/rfs/hhad017
KeywordsMachine Learning; Option Return Predictability; Limits to Arbitrage

Authors from the University of Münster

Beckmeyer, Heiner
Chair of Derivatives and Financial Engineering (Prof. Branger)