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            A Context based Word Indexing Model for Document
                             Summarization
   Abstract
          Existing models for document summarization mostly use the similarity
   between sentences in the document to extract most salient sentences. The
   documents as well as the sentences are indexed using traditional term indexing
   measures, which do not take the context into consideration. Therefore, the sentence
   similarity values remain independent of the context. In this paper, we propose a
   context sensitive document indexing model based on the Bernoulli model of
   randomness. The Bernoulli model of randomness has been used to find the
   probability of the co-occurrences of two terms in a large corpora. A new approach
   using the lexical association between terms to give a context sensitive weight to the
   document terms has been proposed. The resulting indexing weights are used to
   compute the sentence similarity matrix. The proposed sentence similarity measure
   has been used with the baseline graph-based ranking models for sentence
   extraction. Experiments have been conducted over the benchmark DUC datasets
   and it has been shown that the proposed Bernoulli based sentence similarity model
   provides consistent improvements over the baseline IntraLink and UniformLink
   methods




  Your Own Ideas or Any project from any company can be Implemented
at Better price (All Projects can be done in Java or DotNet whichever the student wants)
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  • 1. Impulse Technologies Beacons U to World of technology 044-42133143, 98401 03301,9841091117 ieeeprojects@yahoo.com www.impulse.net.in A Context based Word Indexing Model for Document Summarization Abstract Existing models for document summarization mostly use the similarity between sentences in the document to extract most salient sentences. The documents as well as the sentences are indexed using traditional term indexing measures, which do not take the context into consideration. Therefore, the sentence similarity values remain independent of the context. In this paper, we propose a context sensitive document indexing model based on the Bernoulli model of randomness. The Bernoulli model of randomness has been used to find the probability of the co-occurrences of two terms in a large corpora. A new approach using the lexical association between terms to give a context sensitive weight to the document terms has been proposed. The resulting indexing weights are used to compute the sentence similarity matrix. The proposed sentence similarity measure has been used with the baseline graph-based ranking models for sentence extraction. Experiments have been conducted over the benchmark DUC datasets and it has been shown that the proposed Bernoulli based sentence similarity model provides consistent improvements over the baseline IntraLink and UniformLink methods Your Own Ideas or Any project from any company can be Implemented at Better price (All Projects can be done in Java or DotNet whichever the student wants) 1