A New Modeling for Knowledge Transfer in Machine Learning: Minimum Enclosing Ball-based Learner Independent Knowledge Transfer for Correlated Multi-task Learning - Fan Liu - 書籍 - LAP LAMBERT Academic Publishing - 9783844397321 - 2011年5月13日
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A New Modeling for Knowledge Transfer in Machine Learning: Minimum Enclosing Ball-based Learner Independent Knowledge Transfer for Correlated Multi-task Learning

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発送予定日 年6月22日 - 年7月2日
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Multi-Task Learning (MTL), as opposed to Single Task Learning (STL), has become a hot topic in machine learning research. MTL has shown significant advantage to STL because of its ability to facilitate knowledge sharing between tasks. This thesis presents my recent studies on Knowledge Transfer (KT) ? the process of transferring knowledge from one task to another, which is at the core of MTL. The novelly proposed KT algorithm for correlated MTL adapts learner independence, thus empowering any ordinary classifier for MTL. The proposed MEB-based KT is on the basis that in the feature space, the two correlated tasks share some common input data that lie on the overlapping regions of the feature spaces in-between the two correlated tasks. The main idea is to find the correlating knowledge ? overlapping regions of the two tasks ? and transfer the related data regardless of the learner employed. KT is done by building a correlation space via MEBs and transferring the enclosed instances from the primary task to the secondary task. The extent of KT depends on the amount of overlapping instances between two tasks. This book is required reading for post-graduates and researchers in MTL.

メディア 書籍     Paperback Book   (ソフトカバーで背表紙を接着した本)
リリース済み 2011年5月13日
ISBN13 9783844397321
出版社 LAP LAMBERT Academic Publishing
ページ数 88
寸法 150 × 5 × 226 mm   ·   149 g
言語 ドイツ語  

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