Gene expression data classification using exponential locality sensitive discriminant analysis
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@Article{JICS-12-210,
author = {Chunming Xu},
title = {Gene expression data classification using exponential locality sensitive discriminant analysis},
journal = {Journal of Information and Computing Science},
year = {2024},
volume = {12},
number = {3},
pages = {210--215},
abstract = { Locality sensitive discriminant analysis is a typical and very effective graph-based
dimensionality reduction method which has been successfully applied in pattern recognition problems.
LSDA aims to find a projection which maximizes the margin between data points from different classes at
each local area. As a result, it can discover the local geometrical structure of the data samples. However, just
as linear discriminant analysis, it has the small sample size (SSS) problem. To overcome this limitation, we
propose a novel exponential locality sensitive discriminant analysis algorithm in this paper. The proposed
algorithm can make nearby objects with the same labels in the input space also nearby in the new
representation; while nearby objects with different labels in the input space should be far apart. In addition, it
can also deal with the SSS problem. The experiments on gene expression data sets verify the effectiveness of
the proposed algorithm.
},
issn = {1746-7659},
doi = {https://doi.org/},
url = {http://global-sci.org/intro/article_detail/jics/22479.html}
}
TY - JOUR
T1 - Gene expression data classification using exponential locality sensitive discriminant analysis
AU - Chunming Xu
JO - Journal of Information and Computing Science
VL - 3
SP - 210
EP - 215
PY - 2024
DA - 2024/01
SN - 12
DO - http://doi.org/
UR - https://global-sci.org/intro/article_detail/jics/22479.html
KW - gene expression data classification
KW - dimensionality reduction
KW - locality sensitive discriminant
analysis
KW - exponential locality sensitive discriminant analysis
AB - Locality sensitive discriminant analysis is a typical and very effective graph-based
dimensionality reduction method which has been successfully applied in pattern recognition problems.
LSDA aims to find a projection which maximizes the margin between data points from different classes at
each local area. As a result, it can discover the local geometrical structure of the data samples. However, just
as linear discriminant analysis, it has the small sample size (SSS) problem. To overcome this limitation, we
propose a novel exponential locality sensitive discriminant analysis algorithm in this paper. The proposed
algorithm can make nearby objects with the same labels in the input space also nearby in the new
representation; while nearby objects with different labels in the input space should be far apart. In addition, it
can also deal with the SSS problem. The experiments on gene expression data sets verify the effectiveness of
the proposed algorithm.
Chunming Xu. (2024). Gene expression data classification using exponential locality sensitive discriminant analysis.
Journal of Information and Computing Science. 12 (3).
210-215.
doi:
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