
Privacy Preserving Support Vector Machine Classification in WSN
LAP Lambert Academic Publishing
Published on 30. May 2018
Book
Paperback/Softback
60 pages
978-613-9-84660-3 (ISBN)
Description
The increasing prominence of Wireless Sensor Network (WSN) is stimulating greater interest in developing many application areas. WSNs promise viable solutions aiming at many monitoring problems despite energy, communication, computation & storage constraints. The security issues, data privacy, confidentiality and integrity become vital when the sensors are deployed in a hostile environment. Support Vector Machines (SVM) classification is one of the most widely used classifications having advantage of accuracy and sparse representation that SVMs provide for decision boundaries. It is important to achieve energy efficient data mining in WSN while preserving privacy of data. In this thesis we introduce SVM classification for WSN consisting energy efficiency advantage by distributed incremental learning for the training and construction of global SVM classification model without disclosing the data to others. We show security analysis and energy estimation for preserving privacy and energy efficiency in WSN using SVM.
More details
Language
English
Product notice
Paperback (trade)
Unsewn / adhesive bound
Dimensions
Height: 220 mm
Width: 150 mm
Thickness: 4 mm
Weight
107 gr
ISBN-13
978-613-9-84660-3 (9786139846603)
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Schweitzer Classification
Persons
Muhammad Anwarul Azim é Professor Associado no Departamento de Informática e Engenharia, Universidade de Chittagong, Chittagong-4331, Bangladesh. O seu bacharelato (Engg.) é do Departamento de Informática e Engenharia, Universidade de Ciência e Tecnologia de Shahjalal, Sylhet, Bangladesh e MSc (Engg.) da Universidade Aeroespacial da Coreia, Coreia do Sul.