S. Lalitha , V. Shanthi , Segmenting Broadcast News Streams Using Jlexchains, Asian Journal of Information Technology, Volume 6,Issue 11, 2007, Pages 1137-1142, ISSN 1682-3915, ajit.2007.1137.1142, (https://makhillpublications.co/view-article.php?doi=ajit.2007.1137.1142) Abstract: In this study, we propose a course-grained NLP approach to text segmentation based on the analysis of lexical cohesion within text. Most research in this area has focused on the discovery of textual units that discuss subtopic structure within documents. In contrast our segmentation task requires the discovery of topical units of text i.e., distinct news stories from broadcast news programmes. Our system SeLeCT first builds a set of lexical chains, in order to model the discourse structure of the text. A boundary detector is then used to search for breaking points in this structure indicated by patterns of cohesive strength and weakness within the text. We evaluate this technique on a test set of concatenated CNN news story transcripts and compare it with an established statistical approach to segmentation called TextTiling. Keywords: Text segmentation;JWordnet;lexical cohesion;statistical word association