Document Summarization and Evaluation using Knowledge based Super Set Features
Sneh Garg,Sunil Chhillar +1 more
TL;DR: Three new weights are introduced as super sentence coverage weight, super corpus coverage weight and super term coverage weight which are based on synonyms of the key words.
read more
Abstract: Document summarization is an important step while clustering the large no of digital documents data base Documents are clustered in accordance with their contents using the document text summary The document summarization involves the knowledge corpus scheme comprising of corpus coverage, sentence coverage and term coverage weight Further, three new weights are introduced as super sentence coverage weight, super corpus coverage weight and super term coverage weight Super coverage weight is based on synonyms of the key words The quality of document summary improves and diversified when synonyms of key words are also given due weightage in the process of text processing The evaluation for the document summary quality is based on inner content metrics precision, recall, F-measure method
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
References
Unsupervised Methods for Determining Object and Relation Synonyms on the Web
Alexander Yates,Oren Etzioni +1 more
TL;DR: This paper proposed a probabilistic relational model for predicting whether two strings are co-referential based on the similarity of the assertions containing them, which can resolve relations with 90% precision and 35% recall.
Feature based Summarization of Customers’ Reviews of Online Products☆
Kushal Bafna,Durga Toshniwal +1 more
TL;DR: A dynamic system for feature based summarization of customers’ opinions for online products, which works according to the domain of the product, which can easily be digested by the user.
100
A Survey of Extractive and Abstractive Text Summarization Techniques
Vipul Dalal,Latesh Malik +1 more
- 16 Dec 2013
TL;DR: This paper intends to investigate techniques and methods used by researchers for automatic text summarization, with special attention paid to Bio-inspired methods for text summarizing.
71
Improving readability through extractive summarization for learners with reading difficulties
K. Nandhini,S. R. Balasundaram +1 more
TL;DR: The design and evaluation of extractive summarization approach to assist the learners with reading difficulties and the results show significant improvement in readability for the target audience using assistive summary.
44
Data-to-text summarisation of patient records: Using computer-generated summaries to access patient histories
TL;DR: AI-based computer-generated textual summaries of patient histories can be as accurate as, and more efficient than, human-produced patient records for clinicians seeking to accurately identify key information about a patients overall history.
42