Multi-Task Feature Learning
Author(s) -
Andreas A. Argyriou,
Theodoros Evgeniou,
Massimiliano Pontil
Publication year - 2007
Publication title -
advances in neural information processing systems
Language(s) - English
Resource type - Book series
SCImago Journal Rank - 1.399
H-Index - 284
ISSN - 1049-5258
DOI - 10.7551/mitpress/7503.003.0010
Subject(s) - task (project management) , feature (linguistics) , computer science , artificial intelligence , engineering , linguistics , philosophy , systems engineering
We present a method for learning a low-dimensional representation which is shared across a set of multiple related tasks. The method builds upon the well-known 1-norm regularization problem using a new regularizer which controls the number of learned features common for all the tasks. We show that this problem is equivalent to a convex optimization problem and develop an iterative algorithm for solving it. The algorithm has a simple interpretation: it alternately performs a supervised and an unsupervised step, where in the latter step we learn commonacross-tasks representations and in the former step we learn task-specific functions using these representations. We report experiments on a simulated and a real data set which demonstrate that the proposed method dramatically improves the performance relative to learning each task independently. Our algorithm can also be used, as a special case, to simply select – not learn – a few common features across the tasks.
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