Multilabel classification through random graph ensembles

被引:0
|
作者
Hongyu Su
Juho Rousu
机构
[1] Aalto University,Helsinki Institute for Information Technology HIIT, Department of Information and Computer Science
来源
Machine Learning | 2015年 / 99卷
关键词
Multilabel classification; Structured output; Ensemble methods; Kernel methods; Graphical models;
D O I
暂无
中图分类号
学科分类号
摘要
We present new methods for multilabel classification, relying on ensemble learning on a collection of random output graphs imposed on the multilabel, and a kernel-based structured output learner as the base classifier. For ensemble learning, differences among the output graphs provide the required base classifier diversity and lead to improved performance in the increasing size of the ensemble. We study different methods of forming the ensemble prediction, including majority voting and two methods that perform inferences over the graph structures before or after combining the base models into the ensemble. We put forward a theoretical explanation of the behaviour of multilabel ensembles in terms of the diversity and coherence of microlabel predictions, generalizing previous work on single target ensembles. We compare our methods on a set of heterogeneous multilabel benchmark problems against the state-of-the-art machine learning approaches, including multilabel AdaBoost, convex multitask feature learning, as well as single target learning approaches represented by Bagging and SVM. In our experiments, the random graph ensembles are very competitive and robust, ranking first or second on most of the datasets. Overall, our results show that our proposed random graph ensembles are viable alternatives to flat multilabel and multitask learners.
引用
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页码:231 / 256
页数:25
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