ATSSI: Abstractive Text Summarization Using Sentiment Infusion

Abstract Text Summarization is condensing of text such that, redundant data are removed and important information is extracted and represented in the shortest way possible. With the explosion of the abundant data present on social media, it has become important to analyze this text for seeking information and use it for the advantage of various applications and people. From past few years, this task of automatic summarization has stirred the interest among communities of Natural Language Processing and Text Mining, especially when it comes to opinion summarization. Opinions play a pivotal role in decision making in the society. Other's opinions and suggestions are the base for an individual or a company while making decisions. In this paper, we propose a graph based technique that generates summaries of redundant opinions and uses sentiment analysis to combine the statements. The summaries thus generated are abstraction based summaries and are well formed to convey the gist of the text.

[1]  Fei Liu,et al.  From Extractive to Abstractive Meeting Summaries: Can It Be Done by Sentence Compression? , 2009, ACL.

[2]  K. Srinathan,et al.  A Knowledge Induced Graph-Theoretical Model for Extract and Abstract Single Document Summarization , 2013, CICLing.

[3]  Jiawei Han,et al.  Opinosis: A Graph Based Approach to Abstractive Summarization of Highly Redundant Opinions , 2010, COLING.

[4]  Subhankar Ghosh,et al.  Text summarization using Wikipedia , 2014, Inf. Process. Manag..

[5]  Elena Lloret,et al.  Analyzing the Use of Word Graphs for Abstractive Text Summarization , 2011 .

[6]  Pradeep Ravikumar,et al.  Adaptive Name Matching in Information Integration , 2003, IEEE Intell. Syst..

[7]  Chris H. Q. Ding,et al.  Multi-document summarization via sentence-level semantic analysis and symmetric matrix factorization , 2008, SIGIR '08.

[8]  Bernard A. Nadel,et al.  Representation selection for constraint satisfaction: a case study using n-queens , 1990, IEEE Expert.

[9]  Jackie Chi Kit Cheung,et al.  Extractive vs. NLG-based Abstractive Summarization of Evaluative Text: The Effect of Corpus Controversiality , 2008, INLG.

[10]  Noah A. Smith,et al.  Toward Abstractive Summarization Using Semantic Representations , 2018, NAACL.

[11]  Mirella Lapata,et al.  Models for Sentence Compression: A Comparison across Domains, Training Requirements and Evaluation Measures , 2006, ACL.

[12]  Andrea Esuli,et al.  SentiWordNet 3.0: An Enhanced Lexical Resource for Sentiment Analysis and Opinion Mining , 2010, LREC.

[13]  Karel Jezek,et al.  Two uses of anaphora resolution in summarization , 2007, Inf. Process. Manag..

[14]  Florian Metze,et al.  Beyond audio and video retrieval: towards multimedia summarization , 2012, ICMR.

[15]  Guy Lapalme,et al.  Fully Abstractive Approach to Guided Summarization , 2012, ACL.

[16]  Jimmy J. Lin,et al.  Multi-candidate reduction: Sentence compression as a tool for document summarization tasks , 2007, Inf. Process. Manag..

[17]  Eduard H. Hovy,et al.  Automatic Evaluation of Summaries Using N-gram Co-occurrence Statistics , 2003, NAACL.

[18]  Chin-Yew Lin,et al.  ROUGE: A Package for Automatic Evaluation of Summaries , 2004, ACL 2004.

[19]  Mihai Surdeanu,et al.  The Stanford CoreNLP Natural Language Processing Toolkit , 2014, ACL.

[20]  Daniel Marcu,et al.  Summarization beyond sentence extraction: A probabilistic approach to sentence compression , 2002, Artif. Intell..