Optimized Text Summarization method based on Fuzzy Logic

N. Premakumara, C. Shiranthika, Chathurangi Shyalika, Surangani Bandara
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Abstract

Text summarization is the task of condensing a text segment into a shorter version, reducing the size of the original text context while also preserving the informational elements and the meaning of the content. Manual text summarization will involve a significant amount of time and thus become a time expensive and generally laborious task. Aiming to reduce these pitfalls in manual text summarization, automatic text summarization has been evolving now bearing a strong motivation for academic research. Text Summarization is carried out by two main approaches, namely Extraction and Abstraction. This paper utilizes the extraction process for sentence selection. We also used some feature-based sentence scoring techniques, which play an important role in text summarization. Recently fuzzy logic-based research projects have been popularized among researchers and have been extensively applied in the domain of Natural Language Processing. Our main goal in this paper is to apply fuzzy logic in the task of text summarization. Finally, we analyzed the performance metrics resulting from the fuzzy logic-based text summarization with the benchmark methods; Rule Base and Neural Network techniques for computing the values for Precision, Recall, and F-Measure. In the process of applying the Fuzzy logic, rules were used to balance the weights between important and unimportant features based on the Feature Extraction. With the experimental results achieved, it was concluded that approaching Fuzzy Logic in the process of text summarization yields more successful results than the Rule Base and Neural Network methods.
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基于模糊逻辑的文本摘要优化方法
文本摘要是将文本片段压缩成较短版本的任务,减少原始文本上下文的大小,同时保留信息元素和内容的含义。手动文本摘要将涉及大量的时间,因此成为一项时间昂贵且通常费力的任务。为了减少人工文本摘要中存在的这些缺陷,自动文本摘要已经得到了广泛的研究。文本摘要主要通过抽取和抽象两种方法进行。本文利用抽取过程进行选句。我们还使用了一些基于特征的句子评分技术,这些技术在文本摘要中起着重要的作用。近年来,基于模糊逻辑的研究项目得到了研究人员的广泛关注,并在自然语言处理领域得到了广泛的应用。本文的主要目标是将模糊逻辑应用于文本摘要任务。最后,利用基准测试方法对基于模糊逻辑的文本摘要的性能指标进行了分析;用于计算精度、召回率和F-Measure值的规则库和神经网络技术。在应用模糊逻辑的过程中,在特征提取的基础上,利用规则来平衡重要特征和不重要特征之间的权重。实验结果表明,在文本摘要过程中使用模糊逻辑比使用规则库和神经网络方法更有效。
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