Abasi, Ammar Kamal Mousa
(2021)
Improved Multi-Verse Optimizer In Text Document Clustering For Topic Extraction.
PhD thesis, Universiti Sains Malaysia.
Abstract
This study aims to propose a suitable TE approach, which provides a better overview of the text documents. To achieve this aim: First, A new feature selection method for TDC, that is, binary multi-verse optimizer algorithm (BMVO) is
proposed to eliminate irrelevantly, redundant features and obtain a new subset of more informative features. Second, three multi-verse optimizer algorithm (MVOs), namely,
basic MVO, modified MVO, hybrid MVO is proposed to solve the TDC problem; these algorithms are incremental improvements of the preceding versions. Third, a novel ensemble
method for an automatic TE from a collection of text document is proposed to extract the topics from the clustered documents
Actions (login required)
|
View Item |