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Nonlinear Time Series Momentum
Working paper

Nonlinear Time Series Momentum

Tobias J. Moskowitz, Riccardo Sabbatucci, Andrea Tamoni and Björn Uhl
Social Science Research Network (SSRN)
2025

Abstract

Time Series Momentum Return Forecasts Nonlinear Regression G17 C53 C58 G11 Machine Learning
We document a persistent nonlinear relationship between price trends and risk-adjusted returns across markets and asset classes that is consistent with asset pricing theory. Nonlinearities in time series momentum are consistent with past returns reflecting information about conditional expected returns, in line with investors using conditioning information to form efficient portfolios. Machine learning techniques are useful in uncovering these relationships and yield economically and statistically significant out-of-sample improvements in time series momentum strategies.

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