基于深度互信息估计的神经主题建模

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2022-11-28 DOI:10.1016/j.bdr.2022.100344
Kang Xu , Xiaoqiu Lu , Yuan-fang Li , Tongtong Wu , Guilin Qi , Ning Ye , Dong Wang , Zheng Zhou
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引用次数: 0

摘要

神经主题模型的出现使主题建模在无监督文本挖掘中更容易适应和扩展。然而,现有的神经主题模型很难在学习到的主题表示中保留文档的代表性信息。幸运的是,深度互信息估计(DMIE)最大化了输入数据和隐藏表示之间的互信息,以学习输入数据的良好表示。DMIE为神经主题建模提供了一种新的范式。本文提出了一种融合深度互信息估计的神经主题模型,即NTM-DMIE (neural topic Modeling with deep mutual information estimation)。NTM-DMIE是一种用于主题学习的神经网络方法,它最大限度地提高了输入文档与其潜在主题表示之间的互信息。为了学习稳健的主题表示,我们结合了判别器,通过对抗性学习来区分消极例子和积极例子。此外,我们使用全局互信息和局部互信息来保留主题表示中输入文档的丰富信息。我们从几个指标来评估NTM-DMIE,包括文本聚类的准确性、主题表示、主题唯一性和主题一致性。实验结果表明,与现有方法相比,NTM-DMIE在四种数据集上的所有指标都优于现有方法。
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Neural Topic Modeling with Deep Mutual Information Estimation

The emerging neural topic models make topic modeling more easily adaptable and extendable in unsupervised text mining. However, the existing neural topic models are difficult to retain representative information of the documents within the learnt topic representation. Fortunately, Deep Mutual Information Estimation (DMIE), which maximizes the mutual information between input data and the hidden representations to learn a good representation of the input data. DMIE provides a new paradigm for neural topic modeling. In this paper, we propose a neural topic model which incorporates deep mutual information estimation, i.e., Neural Topic Modeling with Deep Mutual Information Estimation (NTM-DMIE). NTM-DMIE is a neural network method for topic learning which maximizes the mutual information between the input documents and their latent topic representation. To learn robust topic representation, we incorporate the discriminator to discriminate negative examples and positive examples via adversarial learning. Moreover, we use both global and local mutual information to preserve the rich information of the input documents in the topic representation. We evaluate NTM-DMIE on several metrics, including accuracy of text clustering, with topic representation, topic uniqueness and topic coherence. Compared to the existing methods, the experimental results show that NTM-DMIE can outperform in all the metrics on the four datasets.

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CiteScore
7.20
自引率
4.30%
发文量
567
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