Bookcover of Automatic Amharic Text News Classification: A Neural Networks Approach
Booktitle:

Automatic Amharic Text News Classification: A Neural Networks Approach

LAP LAMBERT Academic Publishing (2016-05-24 )

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ISBN-13:

978-3-659-89432-9

ISBN-10:
365989432X
EAN:
9783659894329
Book language:
English
Blurb/Shorttext:
The book is about text classification, more specifically news content classification. Large volume of information is produced in electronic form using different media. This information has to be organized for ease of access. Classification comes first so as to organize information and use it wisely. This book provides how to classify news items in to predefined set of categories. A lot of attempts has been done on English text classification but very few attempts are made on how to classify Amharic texts. Amharic is one of the largest Semitic language spoken by Ethiopian in Ethiopia and around the world. This book gives details on how to classify Amharic text news classification and forward the challenges and recommendations for doing so. Learning Vector Quantization (LVQ), which is one of efficient method among neural network algorithms, is used for Amharic text classification. The performance of the algorithm is measured for classifying Amharic text news. In general, the book is very important and it provides valuable information about Amharic language characteristics for computerization, Amharic text news classification, and LVQ among others.
Publishing house:
LAP LAMBERT Academic Publishing
Website:
https://www.lap-publishing.com/
By (author) :
Worku Kelemework
Number of pages:
144
Published on:
2016-05-24
Stock:
Available
Category:
Informatics, IT
Price:
55.90 €
Keywords:
classification, LVQ, Networks

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