@techreport{3941c3d5f6d34f98ada3a15ddaa1cdff,
title = "Machine Learning and the Implementable Efficient Frontier",
abstract = "We propose that investment strategies should be evaluated based on their net-of-trading-cost return for each level of risk, which we term the {"}implementable efficient frontier.{"} While numerous studies use machine learning return forecasts to generate portfolios, their agnosticism toward trading costs leads to excessive reliance on fleeting small-scale characteristics, resulting in poor net returns. We develop a framework that produces a superior frontier by integrating trading-cost-aware portfolio optimization with machine learning. The superior net-of-cost performance is achieved by learning directly about portfolio weights using an economic objective. Further, our model gives rise to a new measure of {"}economic feature importance.{"}",
keywords = "Asset pricing, Machine learning, Transaction costs, Economic significance, Investments, Asset pricing, Machine learning, Transaction costs, Economic significance, Investments",
author = "Jensen, {Theis Ingerslev} and Kelly, {Bryan T.} and Semyon Malamud and Pedersen, {Lasse Heje}",
year = "2022",
language = "English",
series = "Swiss Finance Institute Research Paper Series",
publisher = "Swiss Finance Institute",
number = "22-63",
address = "Switzerland",
type = "WorkingPaper",
institution = "Swiss Finance Institute",
}