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Averaging, maximum penalized likelihood and Bayesian estimation for improving Gaussian mixture probability density estimates

机译:平均,最大惩罚似然和贝叶斯估计以改善高斯混合概率密度估计

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We apply the idea of averaging ensembles of estimators to probability density estimation. In particular, we use Gaussian mixture models which are important components in many neural-network applications. We investigate the performance of averaging using three data sets. For comparison, we employ two traditional regularization approaches, i.e., a maximum penalized likelihood approach and a Bayesian approach. In the maximum penalized likelihood approach we use penalty functions derived from conjugate Bayesian priors such that an expectation maximization (EM) algorithm can be used for training. In all experiments, the maximum penalized likelihood approach and averaging improved performance considerably if compared to a maximum likelihood approach. In two of the experiments, the maximum penalized likelihood approach outperformed averaging. In one experiment averaging was clearly superior. Our conclusion is that maximum penalized likelihood gives good results if the penalty term in the cost function is appropriate for the particular problem. If this is not the case, averaging is superior since it shows greater robustness by not relying on any particular prior assumption. The Bayesian approach worked very well on a low-dimensional toy problem but failed to give good performance in higher dimensional problems.
机译:我们将估计量平均合计的思想应用于概率密度估计。特别是,我们使用高斯混合模型,这是许多神经网络应用程序中的重要组成部分。我们调查使用三个数据集的平均性能。为了进行比较,我们采用了两种传统的正则化方法,即最大惩罚似然方法和贝叶斯方法。在最大惩罚似然方法中,我们使用从共轭贝叶斯先验派生的惩罚函数,以便可以将期望最大化(EM)算法用于训练。在所有实验中,与最大似然法相比,最大惩罚似然法和平均平均性能得到了显着提高。在两个实验中,最大惩罚似然法的效果优于平均值。在一个实验中,平均明显更好。我们的结论是,如果成本函数中的惩罚项适合于特定问题,则最大惩罚可能性将给出良好的结果。如果不是这种情况,那么平均就更好了,因为它通过不依赖任何特定的先验假设而显示出更高的鲁棒性。贝叶斯方法在解决低维玩具问题上效果很好,但是在高维玩具问题上表现不佳。

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