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Maximally Machine-Learnable Portfolios

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arxiv 2306.05568 v2 pith:XBPF5WT6 submitted 2023-06-08 econ.EM q-fin.PMq-fin.STstat.ML

Maximally Machine-Learnable Portfolios

classification econ.EM q-fin.PMq-fin.STstat.ML
keywords maximallypredictabilityalgorithmmaceportfolioportfoliospredictableprofitability
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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When it comes to stock returns, any form of predictability can bolster risk-adjusted profitability. We develop a collaborative machine learning algorithm that optimizes portfolio weights so that the resulting synthetic security is maximally predictable. Precisely, we introduce MACE, a multivariate extension of Alternating Conditional Expectations that achieves the aforementioned goal by wielding a Random Forest on one side of the equation, and a constrained Ridge Regression on the other. There are two key improvements with respect to Lo and MacKinlay's original maximally predictable portfolio approach. First, it accommodates for any (nonlinear) forecasting algorithm and predictor set. Second, it handles large portfolios. We conduct exercises at the daily and monthly frequency and report significant increases in predictability and profitability using very little conditioning information. Interestingly, predictability is found in bad as well as good times, and MACE successfully navigates the debacle of 2022.

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