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Sparse index clones via the sorted ℓ<sub>1</sub>-Norm

Philipp J. Kremer, Damian Brzyski, Małgorzata Bogdan, Sandra Paterlini

2021Quantitative Finance17 citationsDOIOpen Access PDF

Abstract

Index tracking and hedge fund replication aim at cloning the return time series properties of a given benchmark, by either using only a subset of its original constituents or by a set of risk factors. In this paper, we propose a model that relies on the Sorted ℓ1 Penalized Estimator, called SLOPE, for index tracking and hedge fund replication. We show that SLOPE is capable of not only providing sparsity, but also to form groups among assets depending on their partial correlation with the index or the hedge fund return times series. The grouping structure can then be exploited to create individual investment strategies that allow building portfolios with a smaller number of active positions, but still comparable tracking properties. Considering equity index data and hedge fund returns, we discuss the real-world properties of SLOPE based approaches with respect to state-of-the art approaches.

Topics & Concepts

MathematicsNorm (philosophy)Index (typography)Computer scienceCombinatoricsPolitical scienceLawWorld Wide WebApproximation Theory and Sequence SpacesMathematical Analysis and Transform MethodsSparse and Compressive Sensing Techniques
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