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Regularizing portfolio optimization
2010
New Journal of Physics
The optimization of large portfolios displays an inherent instability to estimation error. This poses a fundamental problem, because solutions that are not stable under sample fluctuations may look optimal for a given sample, but are, in effect, very far from optimal with respect to the average risk. In this paper, we approach the problem from the point of view of statistical learning theory. The occurrence of the instability is intimately related to over-fitting which can be avoided using
doi:10.1088/1367-2630/12/7/075034
fatcat:5ei7s5lqzngtfacccugoxhvefy