Enhanced Indexation is the problem of selecting a portfolio that should produce excess return with respect to a given benchmark index. In this work we propose a linear bi-objective optimization approach to Enhanced Indexation that maximizes average excess return and minimizes underperformance over a learning period. This can be formulated as a simple Linear Programming problem that is solved to optimality by standard LP codes. Moreover, we investigate conditions that guarantee or forbid the existence of a portfolio strictly outperforming the index. We present extensive computational analysis of the results on publicly available real-world financial datasets, including comparison with previous results, performance and diversification analysis.
A New LP Model for Enhanced Indexation / R. Bruni; F. Cesarone; A. Scozzari; F. Tardella. - (2012), pp. 1-24.
A New LP Model for Enhanced Indexation
F. Tardella
2012
Abstract
Enhanced Indexation is the problem of selecting a portfolio that should produce excess return with respect to a given benchmark index. In this work we propose a linear bi-objective optimization approach to Enhanced Indexation that maximizes average excess return and minimizes underperformance over a learning period. This can be formulated as a simple Linear Programming problem that is solved to optimality by standard LP codes. Moreover, we investigate conditions that guarantee or forbid the existence of a portfolio strictly outperforming the index. We present extensive computational analysis of the results on publicly available real-world financial datasets, including comparison with previous results, performance and diversification analysis.File | Dimensione | Formato | |
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A New LP Model for EI.pdf
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A New LP Model for EI.pdf
Accesso chiuso
Dimensione
1.49 MB
Formato
Adobe PDF
|
1.49 MB | Adobe PDF | Richiedi una copia |
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