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Inductive transfer for learning Bayesian networks

机译:用于学习贝叶斯网络的归纳传递

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摘要

In several domains it is common to have data from different, but closely related problems. For instance, in manufacturing, many products follow the same industrial process but with different conditions; or in industrial diagnosis, where there is equipment with similar specifications. In these cases it is common to have plenty of data for some scenarios but very little for others. In order to learn accurate models for rare cases, it is desirable to use data and knowledge from similar cases; a technique known as transfer learning. In this paper we propose an inductive transfer learning method for Bayesian networks, that considers both structure and parameter learning. For structure learning we use conditional independence tests, by combining measures from the target task with those obtained from one or more auxiliary tasks, using a novel weighted sum of the conditional independence measures. For parameter learning, we propose two variants of the linear pool for probability aggregation, combining the probability estimates from the target task with those from the auxiliary tasks. To validate our approach, we used three Bayesian networks models that are commonly used for evaluating learning techniques, and generated variants of each model by changing the structure as well as the parameters. We then learned one of the variants with a small dataset and combined it with information from the other variants. The experimental results show a significant improvement in terms of structure and parameters when we transfer knowledge from similar tasks. We also evaluated the method with real-world data from a manufacturing process considering several products, obtaining an improvement in terms of log-likelihood between the data and the model when we do transfer learning from related products.
机译:在多个领域中,通常有来自不同但密切相关的问题的数据。例如,在制造业中,许多产品遵循相同的工业过程,但条件不同;或在工业诊断中,存在具有类似规格的设备。在这些情况下,通常在某些情况下拥有大量数据,而在其他情况下却很少。为了学习罕见情况下的准确模型,最好使用类似情况下的数据和知识。一种称为转移学习的技术。在本文中,我们提出了一种贝叶斯网络的归纳转移学习方法,该方法同时考虑了结构和参数学习。对于结构学习,我们使用条件独立性测试,方法是使用目标独立性度量的新颖加权总和,将目标任务的度量与从一个或多个辅助任务获得的度量相结合。对于参数学习,我们提出了线性池的两种变体用于概率聚合,将目标任务的概率估计与辅助任务的概率估计结合起来。为了验证我们的方法,我们使用了三个通常用于评估学习技术的贝叶斯网络模型,并通过更改结构和参数来生成每个模型的变体。然后,我们通过一个小的数据集学习了一个变体,并将其与其他变体的信息结合在一起。实验结果表明,当我们从相似任务中转移知识时,在结构和参数方面都有了显着改善。我们还使用来自考虑多个产品的制造过程中的真实世界数据评估了该方法,当我们从相关产品转移学习时,在数据和模型之间的对数似然性方面得到了改善。

著录项

  • 来源
    《Machine Learning》 |2010年第2期|p.227-255|共29页
  • 作者单位

    Instituto Nacional de Astrofisica, Optica y Electronica (INAOE), Luis Enrique Erro 1, Sta. Ma. Tonantzintla, Puebla, Mexico;

    Instituto Nacional de Astrofisica, Optica y Electronica (INAOE), Luis Enrique Erro 1, Sta. Ma. Tonantzintla, Puebla, Mexico;

    Instituto Nacional de Astrofisica, Optica y Electronica (INAOE), Luis Enrique Erro 1, Sta. Ma. Tonantzintla, Puebla, Mexico;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    inductive transfer; bayesian networks; structure learning; parameter learning;

    机译:感应转移贝叶斯网络;结构学习;参数学习;

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