DocumentCode :
3764438
Title :
Sparse representation using optimum threshold based relevance vector machine
Author :
V.A. Nishanth;J. Manikandan
Author_Institution :
Department of Telecommunication Engineering, PES University, 100-Feet Ring Road, BSK Stage III, Bangalore 560085, INDIA
fYear :
2015
Firstpage :
1
Lastpage :
5
Abstract :
Sparse representation is a signal processing technique that is capable of determining the entire signal from relatively fewer samples. Support vector machines (SVM) and relevance vector machines (RVM) are the most commonly used sparse representation techniques, where the ability of the model to estimate the output is directly related to the sparsity. It is also reported in literature that the performance of RVM is superior over SVM in terms of accuracy and sparseness. In this paper, an optimum threshold based relevance vector machine is proposed for sparse representation. In order to assess the sparseness of proposed approach, three signals and datasets from UCI databases are used for sparse approximation using proposed RVM model and the results are reported. The performance of proposed system is assessed using two parameters, Relative error and Mean square error. It is observed that the number of relevance vectors is pruned by 7.18 - 69.46% on using the proposed optimum threshold technique based RVM model for sparse approximation.
Keywords :
"Support vector machines","Training","Computational modeling","Mean square error methods","Sparse matrices","Servomotors","Signal processing"
Publisher :
ieee
Conference_Titel :
India Conference (INDICON), 2015 Annual IEEE
Electronic_ISBN :
2325-9418
Type :
conf
DOI :
10.1109/INDICON.2015.7443136
Filename :
7443136
Link To Document :
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