Document Type : Review Paper

Authors

1 Department of Computer Science, College of Science, Al-Nahrain University, Baghdad-Iraq.

2 Chemical Engineering Department, University of Technology,Baghdad,Iraq.

Abstract

This paper is a literature survey about applications of textual analysis. It aims to provide brief description about the common textual analysis applications. The paper talks about the dictionary which is mostly, one of the main components for textual analysis applications. The paper highlights a number of related examples that were proved in previous published papers. Common features for the related examples are illustrated. And their results are discussed. It will be shown that “morphological and syntactic analysis” is a proved approach. Also, it will be shown that text similarity based on “morphological and syntactic analysis” approach has more accurate results than text similarity based on semantic approach
 

 

Keywords

Main Subjects

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