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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Discriminative structure learning of sum-product networks for data stream classification
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Discriminative structure learning of sum-product networks for data stream classification

机译:用于数据流分类的总和网络的辨别结构学习

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摘要

Sum-product network (SPN) is a deep probabilistic representation that allows for exact and tractable inference. There has been a trend of online SPN structure learning from massive and continuous data streams. However, online structure learning of SPNs has been introduced only for the generative settings so far. In this paper, we present an online discriminative approach for SPNs for learning both the structure and parameters. The basic idea is to keep track of informative and representative examples to capture the trend of time-changing class distributions. Specifically, by estimating the goodness of model fitting of data points and dynamically maintaining a certain amount of informative examples over time, we generate new sub-SPNs in a recursive and top-down manner. Meanwhile, an outlier-robust margin-based log-likelihood loss is applied locally to each data point and the parameters of SPN are updated continuously using most probable explanation (MPE) inference. This leads to a fast yet powerful optimization procedure and improved discrimination capability between the genuine class and rival classes. Empirical results show that the proposed approach achieves better prediction performance than the state-of-the-art online structure learner for SPNs, while promising order-ofmagnitude speedup. Comparison with state-of-the-art stream classifiers further proves the superiority of our approach. (C) 2019 Elsevier Ltd. All rights reserved.
机译:总和 - 产品网络(SPN)是一种深的概率表示,允许精确和易诊的推理。从大规模和连续数据流学习的在线SPN结构趋势。然而,到目前为止,仅针对生成设置引入了SPN的在线结构学习。在本文中,我们提出了一种用于学习结构和参数的SPN的在线鉴别方法。基本思想是跟踪信息和代表性示例以捕捉时间不断变化的阶级分布趋势。具体而言,通过估计数据点的模型拟合的良好并随着时间的推移动态地维持一定数量的信息示例,我们以递归和自上而下的方式生成新的子SPN。同时,基于稳健的基于边缘的日志似然丢失损耗在本地应用于每个数据点,并且使用最可能的说明(MPE)推断连续更新SPN的参数。这导致了快速且强大的优化过程,并改善了正版课程和竞争对手课程之间的歧视能力。实证结果表明,该方法的方法比美术技术的在线结构学习者更好地实现了更好的预测性能,同时有前途的顺序加速顺序。与最先进的流分类器的比较进一步证明了我们方法的优势。 (c)2019年elestvier有限公司保留所有权利。

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