Title
Incremental and Decremental Least Squares Support Vector Machine and Its Application to Drug Design
Abstract
The least squares support vector machine (LS-SVM) has shown to exhibit excellent classification performance in many applications. In this paper, we propose an incremental and decremental LS-SVM based on updating and downdating the QR decomposition. It can efficiently compute the updated solution when data points are appended or removed. The experiment results illustrated that the proposed incremental algorithm efficiently produces the same solutions as those obtained by LS-SVM which recomputes the solution all over even for small changes in the data. For drug design, the results of each biochemistry laboratory test on a new compound can be iteratively included in the training set. This procedure can further improve precision in order to select the next best predicted organic compound. Instead of retraining entire data points, it is much efficient to update solution by incremental LS-SVM.
Year
DOI
Venue
2004
10.1109/CSB.2004.103
CSB
Keywords
Field
DocType
data point,entire data point,proposed incremental algorithm,decremental ls-svm,organic compound,drug design,new compound,updated solution,biochemistry laboratory test,qr decomposition,squares support,vector machine,incremental ls-svm,least squares support vector machine
Training set,Data point,Data mining,Least squares support vector machine,Computer science,Algorithm,Artificial intelligence,QR decomposition,Machine learning
Conference
ISBN
Citations 
PageRank 
0-7695-2194-0
3
0.46
References 
Authors
1
2
Name
Order
Citations
PageRank
Hyunsoo Kim11558.12
Haesun Park23546232.42