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An empirical comparison of Bayesian network parameter learning algorithms for continuous data streams

机译:贝叶斯网络参数学习算法在连续数据流中的经验比较

摘要

We compare three approaches to learning numerical parameters of Bayesian networks from continuous data streams: (1) the EM algorithm applied to all data, (2) the EM algorithm applied to data increments, and (3) the online EM algorithm. Our results show that learning from all data at each step, whenever feasible, leads to the highest parameter accuracy and model classification accuracy. When facing computational limitations, incremental learning approaches are a reasonable alternative. Of these, online EM is reasonably fast, and similar to the incremental EM algorithm in terms of accuracy. For small data sets, incremental EM seems to lead to better accuracy. When the data size gets large, online EM tends to be more accurate. Copyright © 2013, Association for the Advancement of Artificial Intelligence. All rights reserved.
机译:我们比较了从连续数据流中学习贝叶斯网络数值参数的三种方法:(1)适用于所有数据的EM算法,(2)适用于数据增量的EM算法,以及(3)在线EM算法。我们的结果表明,只要可行,就可以在每个步骤中从所有数据中学习,从而获得最高的参数准确性和模型分类准确性。当面临计算限制时,增量学习方法是一种合理的选择。其中,在线EM相当快,并且在准确性方面类似于增量EM算法。对于小型数据集,增量EM似乎可以提高精度。当数据量变大时,在线EM往往更准确。版权所有©2013,人工智能促进协会。版权所有。

著录项

  • 作者

    Ratnapinda P; Druzdzel MJ;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 en
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