Enhancing index-tracking performance: Leveraging characteristic-based factor models for reduced estimation errors
Veröffentlichungsdatum
2026-05
Zusammenfassung
This paper addresses the challenge of minimizing tracking error in passive portfolio management by reducing estimation errors commonly encountered in traditional optimization methods. We introduce an innovative cardinality-constrained mixed-integer optimization framework that incorporates characteristic-based factor models to enhance index-tracking performance. By leveraging these models, our approach aims to minimize errors stemming from estimation uncertainty. In an empirical analysis, we benchmark the tracking errors of our approach against traditional methods, examining both linear and quadratic programs. We further evaluate robustness across various stock market indices, time periods, solvers, and transaction costs. The results indicate that our method consistently reduces estimation errors, achieving superior tracking performance relative to conventional techniques. These findings provide crucial guidance for efficiently optimizing index-tracking portfolios while accommodating practical constraints.
Schlagwörter
Tracking-portfolios
;
Financial models
;
Characteristic-based factor models
;
Tracking error
;
Transaction Costs
Verlag
Elsevier BV
Institution
Dokumenttyp
Wissenschaftlicher Artikel
Zeitschrift/Sammelwerk
European Journal of Operational Research
ISSN
1872-6860
Band
331
Heft
1
Startseite
278
Endseite
291
Sprache
Englisch
