Evolving long-term dependency rules in lifelong learning models

Muhammad Taimoor Khan, Sonam Yar, S. Khalid, Furqan Aziz
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引用次数: 6

Abstract

Topic models are extensively used for text analysis to extract prominent concepts as topics in a large collection of documents about a subject domain. They are extended with different approaches to suit various application areas. Automatic knowledge-based topic models are recently introduced to specifically meet the processing needs of large-scale data having many subject domains. The model automatically learns rules across all domains and uses them to improve the results of the current domain by purposefully grouping words into topics to better represent the underlying concept. The existing models apply thresholds on evaluation criteria to learn rules; however, being automatic it may learn wrong, irrelevant or inconsistent rules as well. In this research article the proposed model learns rules and monitors their contributions towards the quality of results. As the model learns new rules, the existing rules undergo refinement and detachment procedures to retain reliable rules only. Experimental results on user reviews from Amazon.com shows improvement in the quality of topics by using fewer rules which advocates the quality of rules and help avoid performance bottleneck at high experience.
在终身学习模式中发展长期依赖规则
主题模型广泛用于文本分析,以从主题领域的大量文档中提取突出的概念作为主题。它们可以用不同的方法进行扩展,以适应不同的应用领域。基于知识的自动主题模型是近年来专门为满足具有多个主题域的大规模数据的处理需求而引入的。该模型自动学习所有领域的规则,并通过有目的地将单词分组到主题中以更好地表示底层概念,使用这些规则来改进当前领域的结果。现有模型采用评价标准的阈值来学习规则;然而,由于它是自动的,它也可能学习到错误的、不相关的或不一致的规则。在这篇研究文章中,提出的模型学习规则并监控它们对结果质量的贡献。当模型学习新规则时,对现有规则进行细化和分离,只保留可靠的规则。对amazon用户评论的实验结果表明,使用较少的规则可以提高主题的质量,提倡规则的质量,有助于避免高体验下的性能瓶颈。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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