Application of three graph Laplacian based semisupervised learning methods to protein function prediction problem
L. Tran. International Journal on Bioinformatics & Biosciences (IJBB), Volume 3 (Number 2):
11-26(June 2013)
DOI: 10.5121/ijbb.2013.3202
Abstract
Protein function prediction is the important problem in modern biology. In this paper, the un-normalized,symmetric normalized, and random walk graph Laplacian based semi-supervised learning methods will be applied to the integrated network combined from multiple networks to predict the functions of all yeast proteins in these multiple networks. These multiple networks are network created from Pfam domain
structure, co-participation in a protein complex, protein-protein interaction network, genetic interaction network, and network created from cell cycle gene expression measurements. Multiple networks are combined with fixed weights instead of using convex optimization to determine the combination weights due to high time complexity of convex optimization method. This simple combination method will not affect
the accuracy performance measures of the three semi-supervised learning methods. Experiment results show that the un-normalized and symmetric normalized graph Laplacian based methods perform slightly better than random walk graph Laplacian based method for integrated network. Moreover, the accuracy performance measures of these three semi-supervised learning methods for integrated network are much
better than the best accuracy performance measures of these three methods for the individual network.
%0 Journal Article
%1 noauthororeditor
%A Tran, Loc
%D 2013
%J International Journal on Bioinformatics & Biosciences (IJBB)
%K Laplacian function graph learning protein semi-supervised yeast
%N Number 2
%P 11-26
%R 10.5121/ijbb.2013.3202
%T Application of three graph Laplacian based semisupervised learning methods to protein function prediction problem
%U https://wireilla.com/papers/ijbb/V3N2/3213ijbb02.pdf
%V Volume 3
%X Protein function prediction is the important problem in modern biology. In this paper, the un-normalized,symmetric normalized, and random walk graph Laplacian based semi-supervised learning methods will be applied to the integrated network combined from multiple networks to predict the functions of all yeast proteins in these multiple networks. These multiple networks are network created from Pfam domain
structure, co-participation in a protein complex, protein-protein interaction network, genetic interaction network, and network created from cell cycle gene expression measurements. Multiple networks are combined with fixed weights instead of using convex optimization to determine the combination weights due to high time complexity of convex optimization method. This simple combination method will not affect
the accuracy performance measures of the three semi-supervised learning methods. Experiment results show that the un-normalized and symmetric normalized graph Laplacian based methods perform slightly better than random walk graph Laplacian based method for integrated network. Moreover, the accuracy performance measures of these three semi-supervised learning methods for integrated network are much
better than the best accuracy performance measures of these three methods for the individual network.
@article{noauthororeditor,
abstract = {Protein function prediction is the important problem in modern biology. In this paper, the un-normalized,symmetric normalized, and random walk graph Laplacian based semi-supervised learning methods will be applied to the integrated network combined from multiple networks to predict the functions of all yeast proteins in these multiple networks. These multiple networks are network created from Pfam domain
structure, co-participation in a protein complex, protein-protein interaction network, genetic interaction network, and network created from cell cycle gene expression measurements. Multiple networks are combined with fixed weights instead of using convex optimization to determine the combination weights due to high time complexity of convex optimization method. This simple combination method will not affect
the accuracy performance measures of the three semi-supervised learning methods. Experiment results show that the un-normalized and symmetric normalized graph Laplacian based methods perform slightly better than random walk graph Laplacian based method for integrated network. Moreover, the accuracy performance measures of these three semi-supervised learning methods for integrated network are much
better than the best accuracy performance measures of these three methods for the individual network.
},
added-at = {2018-08-25T07:14:53.000+0200},
author = {Tran, Loc},
biburl = {https://www.bibsonomy.org/bibtex/2fbb754119c7518e4841491f7f69c3788/jack-12},
doi = {10.5121/ijbb.2013.3202},
interhash = {af86b6facb0b70ba37ee218308bc6dce},
intrahash = {fbb754119c7518e4841491f7f69c3788},
journal = {International Journal on Bioinformatics & Biosciences (IJBB)},
keywords = {Laplacian function graph learning protein semi-supervised yeast},
language = {english},
month = {June},
number = { Number 2},
pages = {11-26},
timestamp = {2018-08-25T07:14:53.000+0200},
title = {Application of three graph Laplacian based semisupervised learning methods to protein function prediction problem},
url = {https://wireilla.com/papers/ijbb/V3N2/3213ijbb02.pdf},
volume = {Volume 3},
year = 2013
}