Title : Studies on accuracy enhancement by efficient feature selection and cost sensitive models

Type of Material: Thesis
Title: Studies on accuracy enhancement by efficient feature selection and cost sensitive models
Researcher: R KARTHIKEYAN
Guide: V. KHANAA
Department: Department of Engineering and Technology(Computer Science and Engineering)
Publisher: Bharath University, Chennai
Place: Chennai
Year: 2017
Language: English
Subject: Waikato Environment for Knowledge Analysis
Knowledge Extraction based on Evolutionary Learning
Computer Science and Information Technology
Engineering and Technology
Dissertation/Thesis Note: PhD; 2017; D11CS014
Fulltext: Shodhganga

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035__|a(IN-AhILN)th_454417
040__|aBHAU_600073|dIN-AhILN
041__|aeng
100__|aR KARTHIKEYAN|eResearcher
110__|aDepartment of Engineering and Technology(Computer Science and Engineering)|bBharath University, Chennai|dChennai|ein
245__|aStudies on accuracy enhancement by efficient feature selection and cost sensitive models
260__|bBharath University, Chennai|aChennai|c2017
300__|dDVD
502__|bPhD|d2017|oD11CS014
518__|oDate of Registration|d2011-05-18
520__|aEven though there are many factors influencing the final results of the predicting exercises, we should be very careful enough to select the list of most important ones especially in the context like diagnosing heart diseases. We focus on dataset size, cost sensitiveness, regional influence, and prioritization of the features. Mining the data sets of different sizes or different regions many times need not yield similar results with expected maximum accuracy. Hence the data size or inherent regional characteristics act as important parameters for mining exercises. In this research studies firstly we consider data sets from two different geographical regions and the calculation of performance measures separately. Also, we get the same for integrated data set obtained by the union of the original sets independently as inverse results establishing the hypothesis for integrated data set. Secondly we consider the issue of mechanizing the prediction of new patientsand#8223; heart disease diagnosis based on data m
650__|aComputer Science and Information Technology|2UGC
650__|aEngineering and Technology|2AIU
653__|aWaikato Environment for Knowledge Analysis
653__|aKnowledge Extraction based on Evolutionary Learning
700__|aV. KHANAA|eGuide
856__|yShodhganga|uhttp://shodhganga.inflibnet.ac.in/handle/10603/156423
905__|afromsg

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