Wavelet Tree ensembles with Machine Learning and its classification

Author:

Katiyar Neha,Gupta Sonam,Yadav Arun Kumar,Yadav Divakar

Abstract

Abstract Wavelet trees are compact data structures in computational geometry. In the past, it was used as an essential tool for handling the size of data, data compression, indexing and for many more applications. Machine learning algorithms are used for classification of data and its analysis. In this article, we discuss the scope of machine learning with wavelet trees, wavelet entropy, wavelet matrix and wavelet packets. The study concludes that machine learning applications with wavelet tree is a better choice in terms storage and classification of data. The proposed methodology consists of three techniques for making the data more efficient. It consists of LZW Compression techniques, Wavelet tree, and machine learning algorithm SVM. In this methodology compression with classification process is done for datasets. This proposed methodology performs with machine learningalgorithms in terms of classification of data. In future this method can be used for efficient searching and indexing of large data sets. The classified and compressed dataset perform the indexing with wavelet tree takes less searching time.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference30 articles.

1. Pattern recognition with SVM and dual-tree complex wavelets;Chen;Image Vis Comput.,2007

2. Wavelet-based fingerprint image retrieval;Montoya Zegarra;J Comput Appl Math.,2009

3. Combination of dual-tree complex wavelet and SVM for face recognition;Zhang;Proc 7th Int Conf Mach Learn Cybern ICMLC,2008

4. A blind PSO watermarking using wavelet trees quantization;Wang;Proc-Int Conf Mach Learn Cybern.,2011

5. Improved compressed indexes for full-text document retrieval;Belazzougui;J Discret Algorithms,2013

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