Title
Confident Identification of Relevant Objects Based on Nonlinear Rescaling Method and Transductive Inference
Abstract
We present a novel machine learning algorithm to identify relevant objects from a large amount of data. This approach is driven by linear discrimination based on nonlinear rescaling (NR) method and transductive inference. The NR algorithm for linear discrimination (NRLD) computes both the primal and the dual approximation at each step. The dual variables associated with the given labeled data-set provide important information about the objects in the data-set and play the key role in ordering these objects. A confidence score based on a transductive inference procedure using NRLD is used to rank and identify the relevant objects from a pool of unlabeled data. Experimental results on an unbalanced protein data-set for the drug target prioritization and identification problem are used to illustrate the feasibility of the proposed identification algorithm.
Year
DOI
Venue
2007
10.1109/ICDM.2007.24
ICDM
Keywords
Field
DocType
confident identification,confidence score,linear discrimination,identification problem,relevant object,relevant objects,approximation theory,learning (artificial intelligence),drug identification problem,proteins,drug target prioritization,transductive inference procedure,transductive inference,nonlinear rescaling method,proposed identification algorithm,data handling,dual approximation,machine learning algorithm,nr algorithm,dual variable,unbalanced protein data-set,drugs,drug targeting,learning artificial intelligence,machine learning
Transduction (machine learning),Confidence score,Data mining,Nonlinear system,Computer science,Prioritization,Artificial intelligence,Parameter identification problem,Pattern recognition,Approximation theory,Drug target,Group method of data handling,Machine learning
Conference
ISSN
ISBN
Citations 
1550-4786
978-0-7695-3018-5
0
PageRank 
References 
Authors
0.34
3
2
Name
Order
Citations
PageRank
Shen-Shyang Ho127922.21
Roman A. Polyak221152.70