Abstract

Let stock market vectors form a stationary ergodic sequence. For fixed d /spl isin/ N, a log-optimal portfolio selection function of the past d observed vectors is iteratively estimated on the basis of a training sequence by use of gradients and nonparametric regression. Strong consistency is obtained under a boundedness and /spl alpha/-mixing condition without further assumptions on the distribution.

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