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Automatic Parameter Tying: A New Approach for Regularized Parameter Learning in Markov Networks

机译:自动参数绑定:马尔可夫网络中正规参数学习的新方法

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Parameter tying is a regularization method in which parameters (weights) of a machine learning model are partitioned into groups by leveraging prior knowledge and all parameters in each group are constrained to take the same value. In this paper, we consider the problem of parameter learning in Markov networks and propose a novel approach called automatic parameter tying (apt) that uses automatic instead of a priori and soft instead of hard parameter tying as a regularization method to alleviate overfitting. The key idea behind apt is to set up the learning problem as the task of finding parameters and groupings of parameters such that the likelihood plus a regularization term is maximized. The regularization term penalizes models where parameter values deviate from their group mean parameter value. We propose and use a block coordinate ascent algorithm to solve the optimization task. We analyze the sample complexity of our new learning algorithm and show that it yields optimal parameters with high probability when the groups are well separated. Experimentally. we show that our method improves upon L_2 regularization and suggest several pragmatic techniques for good practical performance.
机译:参数捆绑是一种正则化方法,其中通过利用先前知识和每个组中的所有参数被限制为采用相同的值来将机器学习模型的参数(权重)分区。在本文中,我们考虑了Markov网络中参数学习问题,提出了一种名为自动参数的新方法(APT),该方法使用自动而不是先验而软,而不是硬参数作为减轻过度拟合的正规化方法。 APT后面的关键想法是将学习问题设置为查找参数和参数分组的任务,使得可能性加上正则化术语最大化。正则化术语惩罚参数值偏离其组表示参数值的模型。我们提出并使用块坐标上升算法来解决优化任务。我们分析了我们新的学习算法的样本复杂性,并表明,当组分开时,它会产生高概率的最佳参数。实验。我们表明我们的方法改善了L_2正规化,并提出了几种务实的实用性能。

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