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Online Variance Minimization

机译:在线差异最小化

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摘要

We design algorithms for two online variance minimization problems. Specifically, in every trial t our algorithms get a covariance matrix C_t and try to select a parameter vector W_t such that the total variance over a sequence of trials ∑_t w_t~τ C_tw_t is not much larger than the total variance of the best parameter vector u chosen in hindsight. Two parameter spaces are considered - the probability simplex and the unit sphere. The first space is associated with the problem of minimizing risk in stock portfolios and the second space leads to an online calculation of the eigenvector with minimum eigenvalue. For the first parameter space we apply the Exponentiated Gradient algorithm which is motivated with a relative entropy. In the second case the algorithm maintains a mixture of unit vectors which is represented as a density matrix. The motivating divergence for density matrices is the quantum version of the relative entropy and the resulting algorithm is a special case of the Matrix Exponentiated Gradient algorithm. In each case we prove bounds on the additional total variance incurred by the online algorithm over the best offline parameter.
机译:我们设计了两个在线方差最小化问题的算法。具体来说,在每个试验中,我们的算法均获得协方差矩阵C_t并尝试选择参数向量W_t,以使试验序列∑_t w_t〜τC_tw_t的总方差不大于最佳参数向量的总方差您是事后才选择的。考虑了两个参数空间-概率单纯形和单位球面。第一个空间与最小化股票投资组合风险的问题相关,第二个空间导致具有最小特征值的特征向量的在线计算。对于第一个参数空间,我们应用了以相对熵为动力的指数梯度算法。在第二种情况下,算法维护单位矢量的混合,表示为密度矩阵。密度矩阵的激励散度是相对熵的量子形式,而所得算法是矩阵指数梯度算法的特例。在每种情况下,我们都证明了在线算法在最佳离线参数上产生的额外总方差的界限。

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