
Testing Sharpe ratio: luck or skill ?
Benhamou, Éric; Saltiel, David; Guez, Beatrice; Paris, Nicolas (2020), Testing Sharpe ratio: luck or skill ?. https://basepub.dauphine.fr/handle/123456789/21203
Type
Document de travail / Working paperExternal document link
https://hal.archives-ouvertes.fr/hal-02886500Date
2020Series title
Preprint LamsadePublished in
Paris
Metadata
Show full item recordAuthor(s)
Benhamou, ÉricLaboratoire d'analyse et modélisation de systèmes pour l'aide à la décision [LAMSADE]
Saltiel, David
Université du Littoral Côte d'Opale [ULCO]
Guez, Beatrice
Paris, Nicolas

Centre de Recherche en Informatique de Lens [CRIL]
Abstract (EN)
Sharpe ratio (sometimes also referred to as information ratio) is widely used in asset management to compare and benchmark funds and asset managers. It computes the ratio of the (excess) net return over the strategy standard deviation. However, the elements to compute the Sharpe ratio, namely, the expected returns and the volatilities are unknown numbers and need to be estimated statistically. This means that the Sharpe ratio used by funds is likely to be error prone because of statistical estimation errors. In this paper, we provide various tests to measure the quality of the Sharpe ratios. By quality, we are aiming at measuring whether a manager was indeed lucky of skillful. The test assesses this through the statistical significance of the Sharpe ratio. We not only look at the traditional Sharpe ratio but also compute a modified Sharpe insensitive to used Capital. We provide various statistical tests that can be used to precisely quantify the fact that the Sharpe is statistically significant. We illustrate in particular the number of trades for a given Sharpe level that provides statistical significance as well as the impact of auto-correlation by providing reference tables that provides the minimum required Sharpe ratio for a given time period and correlation. We also provide for a Sharpe ratio of 0.5, 1.0, 1.5 and 2.0 the skill percentage given the auto-correlation level.Subjects / Keywords
Sharpe ratio; Student distribution; compounding effect on Sharpe; Wald test; T-test; Chi square testRelated items
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Benhamou, Éric; Guez, Beatrice; Paris, Nicolas (2019) Document de travail / Working paper
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Benhamou, Éric; Saltiel, David; Guez, Beatrice; Paris, Nicolas (2020) Document de travail / Working paper
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Benhamou, Éric; Guez, Beatrice (2018) Article accepté pour publication ou publié
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Benhamou, Éric; Ohana, Jean; Saltiel, David; Guez, Beatrice (2021) Document de travail / Working paper
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Benhamou, Éric; Ohana, Jean; Saltiel, David; Guez, Beatrice (2021) Document de travail / Working paper