%0 Journal Article %T Document Summarization Using Positive Pointwise Mutual Information %A Aji S %A Ramachandra Kaimal %J International Journal of Computer Science & Information Technology %D 2012 %I Academy & Industry Research Collaboration Center (AIRCC) %X The degree of success in document summarization processes depends on the performance of the method used in identifying significant sentences in the documents. The collection of unique words characterizes the major signature of the document, and forms the basis for Term-Sentence-Matrix (TSM). The Positive Pointwise Mutual Information, which works well for measuring semantic similarity in the TermSentence-Matrix, is used in our method to assign weights for each entry in the Term-Sentence-Matrix. The Sentence-Rank-Matrix generated from this weighted TSM, is then used to extract a summary from the document. Our experiments show that such a method would outperform most of the existing methods in producing summaries from large documents. %K Data mining %K text mining %K document summarization %K Positive Pointwise Mutual Information %K TermSentence-Matrix %U http://airccse.org/journal/jcsit/0412csit04.pdf