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Learning mixture models via component-wise parameter smoothing

机译:通过基于组件的参数平滑学习混合模型

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摘要

The task of obtaining an optimal set of parameters to fit a mixture model has many applications in science and engineering domains and is a computationally challenging problem. A novel algorithm using a convolution based smoothing approach to construct a hierarchy (or family) of smoothed log-likelihood surfaces is proposed. This approach smooths the likelihood function and applies the EM algorithm to obtain a promising solution on the smoothed surface. Using the most promising solutions as initial guesses, the EM algorithm is applied again on the original likelihood. Though the results are demonstrated using only two levels, the method can potentially be applied to any number of levels in the hierarchy. A theoretical insight demonstrates that the smoothing approach indeed reduces the overall gradient of a modified version of the likelihood surface. This optimization procedure effectively eliminates extensive searching in non-promising regions of the parameter space. Results on some benchmark datasets demonstrate significant improvements of the proposed algorithm compared to other approaches. Empirical results on the reduction in the number of local maxima and improvements in the initialization procedures are provided.
机译:获得适合混合模型的最佳参数集的任务在科学和工程领域中具有许多应用,并且在计算上具有挑战性。提出了一种使用基于卷积的平滑方法构造平滑对数似然曲面的层次结构(或族)的新颖算法。这种方法对似然函数进行平滑处理,并应用EM算法在平滑表面上获得有希望的解决方案。使用最有前途的解决方案作为初始猜测,将EM算法再次应用于原始可能性。尽管仅使用两个级别演示了结果,但是该方法可以潜在地应用于层次结构中的任意多个级别。理论上的洞察力表明,平滑方法的确降低了似然曲面的修改版本的总体梯度。该优化过程有效地消除了在参数空间的非期望区域中的大量搜索。与其他方法相比,一些基准数据集上的结果证明了该算法的显着改进。提供了减少局部最大值和改进初始化过程的经验结果。

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