使用词嵌入增强主题建模

Siriwat Limwattana, S. Prom-on
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引用次数: 4

摘要

潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)是从文档中提取主题的强大技术之一。原始的LDA将Bag-of-Word表示作为输入,并在文档中生成主题分布作为输出。Bag-of-Word的缺点是它用普通的one-hot编码表示每个单词,而这种编码不编码单词级信息。后来在自然语言处理(NLP)领域的研究表明,Skipgram模型等词嵌入技术可以很好地表征词与词之间的关系和语义信息。在最近的研究中,许多NLP任务可以通过将词嵌入作为词的表示来获得更好的性能。本文提出了一种基于词嵌入的深度词-主题潜狄利克雷分配(DWT-LDA)方法。将词嵌入神经网络应用于崩塌吉布斯采样过程中,作为词主题分配的另一种选择。为了定量评估我们的模型,主题一致性框架和主题多样性是用来比较我们的方法和原始LDA的指标。实验结果表明,我们的方法可以生成更加连贯和多样化的主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Topic Modeling Enhancement using Word Embeddings
Latent Dirichlet Allocation(LDA) is one of the powerful techniques in extracting topics from a document. The original LDA takes the Bag-of-Word representation as the input and produces topic distributions in documents as output. The drawback of Bag-of-Word is that it represents each word with a plain one-hot encoding which does not encode the word level information. Later research in Natural Language Processing(NLP) demonstrate that word embeddings technique such as Skipgram model can provide a good representation in capturing the relationship and semantic information between words. In recent studies, many NLP tasks could gain better performance by applying the word embedding as the representation of words. In this paper, we propose Deep Word-Topic Latent Dirichlet Allocation(DWT-LDA), a new process for training LDA with word embedding. A neural network with word embedding is applied to the Collapsed Gibbs Sampling process as another choice for word topic assignment. To quantitatively evaluate our model, the topic coherence framework and topic diversity are the metrics used to compare between our approach and the original LDA. The experimental result shows that our method generates more coherent and diverse topics.
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