The applications of sparsity in classification

The real-world data nowadays is usually in high dimension. For example, one data image can be represented as a thousand to million dimension vector. The disadvantage of processing high dimension data is not only in the term of computational complexity but also in the term of non-reliability due to n...

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Main Author: Tuong, Nguyen Xuan.
Other Authors: Vitali Zagorodnov
Format: Final Year Project
Language:English
Published: 2011
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Online Access:http://hdl.handle.net/10356/44846
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-448462023-03-03T20:52:19Z The applications of sparsity in classification Tuong, Nguyen Xuan. Vitali Zagorodnov School of Computer Engineering DRNTU::Engineering::Computer science and engineering The real-world data nowadays is usually in high dimension. For example, one data image can be represented as a thousand to million dimension vector. The disadvantage of processing high dimension data is not only in the term of computational complexity but also in the term of non-reliability due to noisy or corrupted input features. To indentify noisy features, to reconstruct original data from noisy measured model or to perform feature selection, we can reformulate the problem as an energy minimization problem using l0 norm penalty function for the regularization term. It is where the keyword “Sparsity” comes in. Because of the generality of the definition of Sparsity, in this report, we limit our discussion to a particular meaning of sparsity in which we say that a vector is sparse if it has only few non-zero coefficients. From infinitive solution space, basically, we can try to minimize the l0 norm in order to find a sparse solution. However, because sparsity is a general term and it has less meaning without a particular context, in this report, we discuss sparsity in the context of Compressive Sensing and Sparse Support Vector Machine for clarification. The purpose of this report is to demonstrate how sparsity can be used to form a regularization function in minimizing energy function that is applicable to a wide range of practical problem. Bachelor of Engineering (Computer Science) 2011-06-06T04:32:17Z 2011-06-06T04:32:17Z 2011 2011 Final Year Project (FYP) http://hdl.handle.net/10356/44846 en Nanyang Technological University 72 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Tuong, Nguyen Xuan.
The applications of sparsity in classification
description The real-world data nowadays is usually in high dimension. For example, one data image can be represented as a thousand to million dimension vector. The disadvantage of processing high dimension data is not only in the term of computational complexity but also in the term of non-reliability due to noisy or corrupted input features. To indentify noisy features, to reconstruct original data from noisy measured model or to perform feature selection, we can reformulate the problem as an energy minimization problem using l0 norm penalty function for the regularization term. It is where the keyword “Sparsity” comes in. Because of the generality of the definition of Sparsity, in this report, we limit our discussion to a particular meaning of sparsity in which we say that a vector is sparse if it has only few non-zero coefficients. From infinitive solution space, basically, we can try to minimize the l0 norm in order to find a sparse solution. However, because sparsity is a general term and it has less meaning without a particular context, in this report, we discuss sparsity in the context of Compressive Sensing and Sparse Support Vector Machine for clarification. The purpose of this report is to demonstrate how sparsity can be used to form a regularization function in minimizing energy function that is applicable to a wide range of practical problem.
author2 Vitali Zagorodnov
author_facet Vitali Zagorodnov
Tuong, Nguyen Xuan.
format Final Year Project
author Tuong, Nguyen Xuan.
author_sort Tuong, Nguyen Xuan.
title The applications of sparsity in classification
title_short The applications of sparsity in classification
title_full The applications of sparsity in classification
title_fullStr The applications of sparsity in classification
title_full_unstemmed The applications of sparsity in classification
title_sort applications of sparsity in classification
publishDate 2011
url http://hdl.handle.net/10356/44846
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