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Fast Parallel Estimation of High Dimensional Information Theoretical Quantities with Low Dimensional Random Projection Ensembles

机译:低维随机投影集合的高维信息理论量的快速并行估计

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The estimation of relevant information theoretical quantities, such as entropy, mutual information, and various divergences is computationally expensive in high dimensions. However, for this task, one may apply pairwise Euclidean distances of sample points, which suits random projection (RP) based low dimensional embeddings. The Johnson-Lindenstrauss (JL) lemma gives theoretical bound on the dimension of the low dimensional embedding. We adapt the RP technique for the estimation of information theoretical quantities. Intriguingly, we find that embeddings into extremely small dimensions, far below the bounds of the JL lemma, provide satisfactory estimates for the original task. We illustrate this in the Independent Subspace Analysis (ISA) task; we combine RP dimension reduction with a simple ensemble method. We gain considerable speed-up with the potential of real-time parallel estimation of high dimensional information theoretical quantities.
机译:在高维度上,对相关信息理论量(如熵,互信息和各种差异)的估计在计算上是昂贵的。但是,对于这一任务,可以应用成对的欧几里德采样点距离,这适合基于随机投影(RP)的低维嵌入。 Johnson-Lindenstrauss(JL)引理为低维嵌入的维数提供了理论界。我们采用RP技术来估计信息理论量。有趣的是,我们发现嵌入到极小的维度中,远远低于JL引理的边界,可以为原始任务提供令人满意的估计。我们在独立子空间分析(ISA)任务中对此进行了说明。我们将RP降维与简单的集成方法结合在一起。利用实时并行估计高维信息理论量的潜力,我们获得了可观的提速。

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