專案描述

Auto summarization provides a concise summary for a document. In this I present a Statistical approach to addressing the text generation problem in domain-independent, single-document summarization.
My thesis Includes salton’s vector space model which divides the sentences into categories which can also be used for summarizing the contents in WebPages.

The summarizer initially breaks the entire document into sentences based on the separators.
The Second step is that the unnecessary words are removed from the document.
The document after removing the stop words is revised again for the unique words. Unique words are the one which have the same meaning or might be redundant in the document. These are removed by a method called stemming.

By using the Stemming mechanism the occurrence of a word is calculated and the results are displayed in the format of how many times they occur and the number of sentences they have occurred.

(This Description is auto-translated) Try to translate to Japanese Show Original Description

下載

您的評分
撰寫專案評