基于简单贝叶斯模型的web数据标注Baum-Welch风格EM方法

S. Masum, H. Prendinger, M. Ishizuka
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引用次数: 1

摘要

在本文中,我们的重点将放在弱注释数据(WAD)上,它通常由(半)自动化的信息提取系统从Web文档中生成。提取的信息具有一定程度的准确性,可以通过使用能够进行上下文推理的统计模型(如贝叶斯模型)来超越。我们的贡献是一个EM算法,该算法在简单的贝叶斯模型上操作以重新注释WAD。EM通过在给定的Web数据上迭代贝叶斯模型来估计参数,即先验概率和条件概率。在期望步骤中,从当前标注中训练贝叶斯分类器,在最大化步骤中,对所有标签的角色进行重新标注,找到与当前模型最拟合的标注,然后从新的标注中重新调整概率。我们的实验表明,EM将Web数据标注的准确率提高了8%。我们在新兴市场研究中使用鲍姆-韦尔奇方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Baum-Welch Style EM Approach on Simple Bayesian Models forWeb Data Annotation
In this paper, our focus will be on weakly annotated data (WAD) which is typically generated by a (semi) automated information extraction system from the Web documents. The extracted information has a certain level of accuracy which can be surpassed by using statistical models that are capable of contextual reasoning such as Bayesian models. Our contribution is an EM algorithm that operates on simple Bayesian models to re-annotate WAD. EM estimates the parameters, i.e., the prior and conditional probabilities by iterating Bayesian model on the given Web data. In the expectation step, Bayesian classifier is trained from current annotations, and in the maximization step, the roles of all the labels are re-annotated to find the best fitting annotation with the current model then the probabilities are re-adjusted from the new annotations. Our experiments show that EM increases the Web data annotation accuracies up to 8%. We use Baum-Welch methodology in our EM approach.
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