We propose a novel Bayesian optimization procedure for outlier detection in the Capital Asset Pricing Model. We use a parametric product partition model to robustly estimate the systematic risk of an asset. We assume that the returns follow independent normal distributions and we impose a partition structure on the parameters of interest. The partition structure imposed on the parameters induces a corresponding clustering of the returns. We identify via an optimization procedure the partition that best separates standard observations from the atypical ones. The methodology is illustrated with reference to a real dataset, for which we also provide a microeconomic interpretation of the detected outliers.
Bayesian outlier detection in Capital Asset Pricing Model / M.E. DE GIULI, M.A. Maggi, C. Tarantola. - In: STATISTICAL MODELLING. - ISSN 1471-082X. - 10:4(2010 Dec), pp. 375-390. [10.1177/1471082X0901000402]
Bayesian outlier detection in Capital Asset Pricing Model
C. Tarantola
Ultimo
2010
Abstract
We propose a novel Bayesian optimization procedure for outlier detection in the Capital Asset Pricing Model. We use a parametric product partition model to robustly estimate the systematic risk of an asset. We assume that the returns follow independent normal distributions and we impose a partition structure on the parameters of interest. The partition structure imposed on the parameters induces a corresponding clustering of the returns. We identify via an optimization procedure the partition that best separates standard observations from the atypical ones. The methodology is illustrated with reference to a real dataset, for which we also provide a microeconomic interpretation of the detected outliers.| File | Dimensione | Formato | |
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