Author/Authors :
Ramanujam, Nedunchelian Department of Computer Science and Engineering - Sri Venkateswara College of Engineering - Pennalur - Sriperumbudur TK 602117 - India , Kaliappan, Manivannan Department of Information Technology - RMK Engineering College - Kavaraipettai 601206 - India
Abstract :
Nowadays, automatic multidocument text summarization systems can successfully retrieve the summary sentences from the input documents. But, it has many limitations such as inaccurate extraction to essential sentences, low coverage, poor coherence among
the sentences, and redundancy. This paper introduces a new concept of timestamp approach with Na¨ıve Bayesian Classification
approach for multidocument text summarization. The timestamp provides the summary an ordered look, which achieves the
coherent looking summary. It extracts the more relevant information from the multiple documents. Here, scoring strategy is
also used to calculate the score for the words to obtain the word frequency. The higher linguistic quality is estimated in terms of
readability and comprehensibility. In order to show the efficiency of the proposed method, this paper presents the comparison
between the proposed methods with the existing MEAD algorithm. The timestamp procedure is also applied on the MEAD
algorithm and the results are examined with the proposed method. The results show that the proposed method results in lesser
time than the existing MEAD algorithm to execute the summarization process. Moreover, the proposed method results in better precision, recall, and 𝐹-score than the existing clustering with lexical chaining approach.