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Inducing features of random fields

机译:随机场的诱导特征

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摘要

We present a technique for constructing random fields from a set of training samples. The learning paradigm builds increasingly complex fields by allowing potential functions, or features, that are supported by increasingly large subgraphs. Each feature has a weight that is trained by minimizing the Kullback-Leibler divergence between the model and the empirical distribution of the training data. A greedy algorithm determines how features are incrementally added to the field and an iterative scaling algorithm is used to estimate the optimal values of the weights. The random field models and techniques introduced in this paper differ from those common to much of the computer vision literature in that the underlying random fields are non-Markovian and have a large number of parameters that must be estimated. Relations to other learning approaches, including decision trees, are given. As a demonstration of the method, we describe its application to the problem of automatic word classification in natural language processing.
机译:我们提出了一种从一组训练样本中构造随机字段的技术。学习范式通过允许潜在的功能或特征得到越来越大的子图的支持,从而建立了越来越复杂的领域。通过最小化模型和训练数据的经验分布之间的Kullback-Leibler差异来训练每个特征的权重。贪心算法确定如何将特征增量添加到字段中,并且使用迭代缩放算法来估计权重的最佳值。本文介绍的随机场模型和技术与许多计算机视觉文献所共有的模型和技术不同,因为基础随机场是非马尔可夫模型,并且必须估计大量参数。给出了与其他学习方法(包括决策树)的关系。作为该方法的演示,我们描述了该方法在自然语言处理中对自动单词分类问题的应用。

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