| Literature DB >> 28316507 |
Han Liu1, John Mulvey1, Tianqi Zhao1.
Abstract
We propose a new stock selection strategy that exploits rebalancing returns and improves portfolio performance. To effectively harvest rebalancing gains, we apply ideas from elliptical-copula graphical modelling and stability inference to select stocks that are as independent as possible. The proposed elliptical-copula graphical model has a latent Gaussian representation; its structure can be effectively inferred using the regularized rank-based estimators. The resulting algorithm is computationally efficient and scales to large data-sets. To show the efficacy of the proposed method, we apply it to conduct equity selection based on a 16-year health care stock data-set and a large 34-year stock data-set. Empirical tests show that the proposed method is superior to alternative strategies including a principal component analysis-based approach and the classical Markowitz strategy based on the traditional buy-and-hold assumption.Entities:
Keywords: Elliptical copula; Equity selection; Graphical model; Machine learning; Markowitz strategy; Rebalancing gains; Semiparametric methods; Stability selection
Year: 2015 PMID: 28316507 PMCID: PMC5354361 DOI: 10.1080/14697688.2015.1101149
Source DB: PubMed Journal: Quant Finance ISSN: 1469-7688 Impact factor: 2.222