DocumentCode
245139
Title
Learning from Label and Feature Heterogeneity
Author
Pei Yang ; Jingrui He ; Hongxia Yang ; Haoda Fu
fYear
2014
fDate
14-17 Dec. 2014
Firstpage
1079
Lastpage
1084
Abstract
Multiple types of heterogeneity, such as label heterogeneity and feature heterogeneity, often co-exist in many real-world data mining applications, such as news article categorization, gene functionality prediction. To effectively leverage such heterogeneity, in this paper, we propose a novel graph-based framework for Learning with both Label and Feature heterogeneities, namely L2F. It models the label correlation by requiring that any two label-specific classifiers behave similarly on the same views if the associated labels are similar, and imposes the view consistency by requiring that view-based classifiers generate similar predictions on the same examples. To solve the resulting optimization problem, we propose an iterative algorithm, which is guaranteed to converge to the global optimum. Furthermore, we analyze its generalization performance based on Rademacher complexity, which sheds light on the benefits of jointly modeling the label and feature heterogeneity. Experimental results on various data sets show the effectiveness of the proposed approach.
Keywords
data mining; graph theory; iterative methods; learning (artificial intelligence); optimisation; pattern classification; Rademacher complexity; feature heterogeneity; iterative algorithm; label heterogeneity; label-specific classifiers; multilabel learning; optimization; real-world data mining applications; Complexity theory; Correlation; Diabetes; Linear programming; Loss measurement; Optimization; Vectors; Rademacher complexity; heterogeneity; multi-label learning; multi-view learning;
fLanguage
English
Publisher
ieee
Conference_Titel
Data Mining (ICDM), 2014 IEEE International Conference on
Conference_Location
Shenzhen
ISSN
1550-4786
Print_ISBN
978-1-4799-4303-6
Type
conf
DOI
10.1109/ICDM.2014.42
Filename
7023450
Link To Document