Joint Lifelong Topic Model and Manifold Ranking for Document Summarization
Jianying Lin, Rui Liu, Quanye Jia

TL;DR
This paper introduces two enhanced manifold ranking models incorporating semantic features and lifelong learning constraints to improve multi- and single-document summarization, outperforming recent deep learning models.
Contribution
The paper proposes two novel models, JTMMR and JLTMMR, integrating semantic features and lifelong learning to enhance document summarization accuracy.
Findings
Models outperform baseline methods in multi-document summarization.
Models show significant improvements over recent deep learning approaches.
Adding feedback enhances model performance notably.
Abstract
Due to the manifold ranking method has a significant effect on the ranking of unknown data based on known data by using a weighted network, many researchers use the manifold ranking method to solve the document summarization task. However, their models only consider the original features but ignore the semantic features of sentences when they construct the weighted networks for the manifold ranking method. To solve this problem, we proposed two improved models based on the manifold ranking method. One is combining the topic model and manifold ranking method (JTMMR) to solve the document summarization task. This model not only uses the original feature, but also uses the semantic feature to represent the document, which can improve the accuracy of the manifold ranking method. The other one is combining the lifelong topic model and manifold ranking method (JLTMMR). On the basis of the…
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Taxonomy
TopicsTopic Modeling · Advanced Text Analysis Techniques · Web Data Mining and Analysis
