Sparse Portfolio Selection via Topological Data Analysis-Based Clustering
42 Pages Posted: 1 Feb 2024 Last revised: 7 Jan 2025
Date Written: January 31, 2024
Abstract
This paper uses topological data analysis (TDA) tools and introduces a data-driven clustering-based stock selection strategy tailored for sparse portfolio construction. Our asset selection strategy exploits the topological features of stock price movements to select a subset of topologically similar (different) assets for a sparse index tracking (Markowitz) portfolio. We introduce new distance measures, which serve as an input to the clustering algorithm, on the space of persistence diagrams and landscapes that consider the time component of a time series. We conduct an empirical analysis on the S&P index from 2009 to 2022, including a study on the COVID-19 data to validate the robustness of our methodology. Our strategy to integrate TDA with the clustering algorithm significantly enhanced the performance of sparse portfolios across various performance measures in diverse market scenarios.
Keywords: portfolio optimization, topological data analysis, clustering techniques, index tracking, Markowitz model, sparse portfolio construction, investment strategies
Suggested Citation: Suggested Citation
Goel, Anubha and Filipovic, Damir and Pasricha, Puneet, Sparse Portfolio Selection via Topological Data Analysis-Based Clustering (January 31, 2024). Swiss Finance Institute Research Paper No. 24-07, Available at SSRN: https://ssrn.com/abstract=4711887 or http://dx.doi.org/10.2139/ssrn.4711887
Do you have a job opening that you would like to promote on SSRN?
Feedback
Feedback to SSRN