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Markov Network Structure Learning: A Randomized Feature Generation Approach

机译:马尔可夫网络结构学习:随机特征生成方法

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The structure of a Markov network is typically learned in one of two ways. The first approach is to treat this task as a global search problem. However, these algorithms are slow as they require running the expensive operation of weight (i.e., parameter) learning many times. The second approach involves learning a set of local models and then combining them into a global model. However, it can be computationally expensive to learn the local models for datasets that contain a large number of variables and/or examples. This paper pursues a third approach that views Markov network structure learning as a feature generation problem. The algorithm combines a data-driven, specific-to-general search strategy with randomization to quickly generate a large set of candidate features that all have support in the data. It uses weight learning, with L1 regularization, to select a subset of generated features to include in the model. On a large empirical study, we find that our algorithm is equivalently accurate to other state-of-the-art methods while exhibiting a much faster run time.
机译:马尔可夫网络的结构通常以两种方式之一学习。第一种方法是将此任务视为全球搜索问题。然而,这些算法随着运行多次学习的昂贵的重量(即参数)的昂贵操作而慢。第二种方法涉及学习一组本地模型,然后将它们组合成全局模型。但是,可以计算昂贵的是学习包含大量变量和/或示例的数据集的本地模型。本文追求第三种方法,将马尔可夫网络结构学习视为特色生成问题。该算法将数据驱动的特定搜索策略与随机化相结合,以便快速生成所有在数据中都有支持的大量候选功能。它使用重量学习,L1正常化,选择要包含在模型中的生成功能的子集。在大型实证研究中,我们发现我们的算法对其他最先进的方法等级准确,同时表现出更快的运行时间。

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