The Contribution of Frictions to Expected Returns: An Options-based Estimation Approach

68 Pages Posted: 11 Feb 2018 Last revised: 16 Feb 2021

See all articles by Kazuhiro Hiraki

Kazuhiro Hiraki

Bank of Japan

George S. Skiadopoulos

University of Piraeus - Department of Banking and Financial Management; Queen Mary, University of London, School of Economics and Finance

Date Written: Feburary 11, 2021

Abstract

We document that properly scaled deviations from put-call parity estimate the contribution of market frictions to expected returns (CFER) accurately, by means of a non-parametric theoretically founded identification strategy. The required conditions are that our estimator predicts the underlying but not the synthetic stock's return. The data satisfy the two conditions; the alphas of the estimated CFER-sorted spread portfolios are up to 1.86% per month. The estimated CFER covaries non-linearly with proxies of market frictions. An agent-based equilibrium model explains our findings; alphas can be twice as big as the round-trip transaction costs, thus corroborating the accuracy of our estimator.

Keywords: Limits to arbitrage, Market frictions, Put-call parity, Return predictability

JEL Classification: C13, G10, G12, G13

Suggested Citation

Hiraki, Kazuhiro and Skiadopoulos, George and Skiadopoulos, George, The Contribution of Frictions to Expected Returns: An Options-based Estimation Approach (Feburary 11, 2021). Available at SSRN: https://ssrn.com/abstract=3114764 or http://dx.doi.org/10.2139/ssrn.3114764

Kazuhiro Hiraki (Contact Author)

Bank of Japan ( email )

2-1-1, Nihonbashi-hongokucho
Chuo-ku, Tokyo 103-0021
Japan

George Skiadopoulos

University of Piraeus - Department of Banking and Financial Management ( email )

80 Karaoli & Dimitriou Str.
18534 Piraeus, 185 34 -GR
Greece

HOME PAGE: http://sites.google.com/view/george-skiadopoulos

Queen Mary, University of London, School of Economics and Finance

Lincoln's Inn Fields
Mile End Rd.
London, E1 4NS
United Kingdom

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