DocumentCode
243780
Title
Dual Uncertainty Minimization Regularization and Its Applications on Heterogeneous Data
Author
Yu Cheng ; Choudhary, Alok ; Jun Wang ; Pankanti, Sharath ; Huan Liu
Author_Institution
EECS Dept., Northwestern Univ., Evanston, IL, USA
fYear
2014
fDate
14-14 Dec. 2014
Firstpage
1163
Lastpage
1170
Abstract
In many practical machine learning systems, the prediction/classification tasks involve the usage of heterogeneous data in semi-supervised settings, where the objective is to maximize the utility of multiple views (usually dual views) information from the data. In this work, we propose a general framework, Dual Uncertainty Minimization Regularization (DUMR), that maximizes the usage of heterogeneous data for a dual view semi-supervised classification/prediction. Through extending a recent uncertainty regularizer to a heterogeneous setting, we propose to optimize an objective which ensures the minimum uncertainty of the prediction over both views extracted from heterogeneous source. In specific, for different problem settings, we design two type of uncertainty regularizer with entropy and squared-loss mutual information, separately. The proposed framework is exploited in three datamining/multimeida analysis tasks, social role identification, legislative prediction and action recognition, and the comparison with other peer methods corroborate the superior performance of the proposed method.
Keywords
learning (artificial intelligence); minimisation; pattern classification; DUMR; action recognition; data mining analysis task; dual uncertainty minimization regularization; dual view semisupervised classification/prediction; entropy; heterogeneous data; heterogeneous source; legislative prediction; machine learning system; multimedia analysis task; peer method; prediction/classification task; semisupervised setting; social role identification; squared-loss mutual information; uncertainty regularizer; Data models; Electronic mail; Kernel; Minimization; Predictive models; Social network services; Uncertainty; Dual Uncertainty Minimization; Heterogeneous Data; Multiple-Views Learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining Workshop (ICDMW), 2014 IEEE International Conference on
Conference_Location
Shenzhen
Print_ISBN
978-1-4799-4275-6
Type
conf
DOI
10.1109/ICDMW.2014.138
Filename
7022727
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