Graph Clustering Based Size Varying Rules for Lifelong Topic Modeling

Muhammad Taimoor Khan, S. Khalid, Furqan Aziz
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Abstract

Lifelong learning topic models identify the hidden concepts discussed in the collection of documents. The concepts are represented as topics having groups of ordered words based on their relevance to the topic. Lifelong learning models have an automatic learning mechanism which allows continuous learning without external support. In the process, the model gets more knowledgeable with experience as it learns from the past in the form of rules. It is carries rules to the future and utilize them when a similar scenario arises. The existing lifelong learning topic models heavily rely on statistical measures to learn rules that leads to two limitations. The rules are evaluated for fixed number of words while ignoring the natural arrangement of words within the documents. Moreover, the rules have arbitrary orientation that causes repeated patterns of transferring the impact of a rule into a topic during the early iterations of the inference technique. In this research work, we introduce complex networks analysis for learning rules which addresses both of the limitations discussed. The rules are obtained through hierarchical clustering of the complex network that have different number of words within a rule and have directed orientation. The proposed approach improves the utilization of rules for improved quality of topics at higher performance with unidirectional rules on the standard lifelong learning dataset.
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基于图聚类的终身主题建模大小变化规则
终身学习主题模型识别文档集合中讨论的隐藏概念。概念表示为具有基于与主题的相关性的有序单词组的主题。终身学习模式有一个自动学习机制,允许在没有外部支持的情况下持续学习。在这个过程中,模型以规则的形式从过去的经验中学习,从而获得更多的知识。它将规则带到未来,并在类似的场景出现时使用它们。现有的终身学习主题模型严重依赖于统计度量来学习规则,这导致了两个局限性。对固定数量的单词评估规则,而忽略文档中单词的自然排列。此外,规则具有任意的方向,这导致在推理技术的早期迭代期间将规则的影响转移到主题的重复模式。在这项研究工作中,我们引入了复杂网络分析的学习规则,解决了所讨论的两个限制。对具有不同词数和定向的复杂网络进行分层聚类得到规则。该方法通过在标准终身学习数据集上使用单向规则,提高了规则的利用率,从而提高了主题的质量。
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