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Diversity and Sparsity: A New Perspective on Index Tracking

Authors :
Zheng, Yu
Hospedales, Timothy M.
Yang, Yongxin
Publication Year :
2018

Abstract

We address the problem of partial index tracking, replicating a benchmark index using a small number of assets. Accurate tracking with a sparse portfolio is extensively studied as a classic finance problem. However in practice, a tracking portfolio must also be diverse in order to minimise risk -- a requirement which has only been dealt with by ad-hoc methods before. We introduce the first index tracking method that explicitly optimises both diversity and sparsity in a single joint framework. Diversity is realised by a regulariser based on pairwise similarity of assets, and we demonstrate that learning similarity from data can outperform some existing heuristics. Finally, we show that the way we model diversity leads to an easy solution for sparsity, allowing both constraints to be optimised easily and efficiently. we run out-of-sample backtesting for a long interval of 15 years (2003 -- 2018), and the results demonstrate the superiority of the proposed algorithm.<br />Comment: Accepted to ICASSP 2020. 5 pages. This is a conference version of the work, for the full version, please refer to arXiv:1809.01989v1

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1809.01989
Document Type :
Working Paper