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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Learning Bayesian network parameters under incomplete data with domain knowledge
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Learning Bayesian network parameters under incomplete data with domain knowledge

机译:使用领域知识在不完整数据下学习贝叶斯网络参数

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摘要

Bayesian networks (BNs) have gained increasing attention in recent years. One key issue in Bayesian networks is parameter learning. When training data is incomplete or sparse or when multiple hidden nodes exist, learning parameters in Bayesian networks becomes extremely difficult. Under these circumstances, the learning algorithms are required to operate in a high-dimensional search space and they could easily get trapped among copious local maxima. This paper presents a learning algorithm to incorporate domain knowledge into the learning to regularize the otherwise ill-posed problem, to limit the search space, and to avoid local optima. Unlike the conventional approaches that typically exploit the quantitative domain knowledge such as prior probability distribution, our method systematically incorporates qualitative constraints on some of the parameters into the learning process. Specifically, the problem is formulated as a constrained optimization problem, where an objective function is defined as a combination of the likelihood function and penalty functions constructed from the qualitative domain knowledge. Then, a gradient-descent procedure is systematically integrated with the E-step and M-step of the EM algorithm, to estimate the parameters iteratively until it converges. The experiments with both synthetic data and real data for facial action recognition show our algorithm improves the accuracy of the learned BN parameters significantly over the conventional EM algorithm.
机译:近年来,贝叶斯网络(BNs)受到越来越多的关注。贝叶斯网络中的一个关键问题是参数学习。当训练数据不完整或稀疏或存在多个隐藏节点时,贝叶斯网络中的学习参数将变得非常困难。在这种情况下,学习算法需要在高维搜索空间中运行,并且很容易陷入大量局部最大值中。本文提出了一种学习算法,将领域知识整合到学习中,以规范否则会引起不适的问题,限制搜索空间并避免局部最优。与通常利用定量域知识(例如先验概率分布)的常规方法不同,我们的方法将对某些参数的定性约束系统地纳入学习过程。具体来说,将问题表述为约束优化问题,其中目标函数定义为似然函数和从定性领域知识构造的罚函数的组合。然后,将梯度下降过程与EM算法的E步骤和M步骤系统地集成在一起,以迭代方式估计参数,直到收敛为止。通过合成数据和真实数据进行面部动作识别的实验表明,与常规EM算法相比,我们的算法显着提高了学习的BN参数的准确性。

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