Title :
Implementation and comparison of SVM-based Multi-Task Learning methods
Author :
Shiao, Han-Tai ; Cherkassky, Vladimir
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Minnesota, Twin Cities, Minneapolis, MN, USA
Abstract :
Exploiting additional information to improve traditional inductive learning is an active research area in machine learning. In many supervised-learning applications, data can be naturally separated into several groups, or tasks, and incorporating this information into learning may improve generalization. There are many Multi-Task Learning (MTL) techniques for classification recently proposed in machine learning. This paper focuses on analysis and comparison of the two recent SVM-based MTL techniques: regularized MTL (rMTL) and SVM+ based MTL (SVM+MTL). In particular, our analysis shows how these two methods can be implemented using standard SVM software. Further, we present extensive empirical comparisons between these two methods, which relates advantages/limitations of each method to statistical characteristics of the training data.
Keywords :
learning (artificial intelligence); support vector machines; MTL; SVM based multitask learning methods; active research; inductive learning; machine learning; multitask learning; supervised learning applications; Kernel; Standards; Support vector machines; Training; Training data; Vectors; Zirconium; SVM-Plus (SVM+); classification; land mine data; model selection; multi-task learning (MTL); support vector machine;
Conference_Titel :
Neural Networks (IJCNN), The 2012 International Joint Conference on
Conference_Location :
Brisbane, QLD
Print_ISBN :
978-1-4673-1488-6
Electronic_ISBN :
2161-4393
DOI :
10.1109/IJCNN.2012.6252442