Knowledge Transfer Via Multiple Model Local Structure Mapping

The effectiveness of knowledge transfer using classification algorithms depends on the difference between the distribution that generates the training examples and the one from which test examples are to be drawn. The task can be especially difficult when the training examples are from one or severa...

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Main Authors: GAO, Jing, FAN, Wei, JIANG, Jing, HAN, Jiawei
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Language:English
Published: Institutional Knowledge at Singapore Management University 2008
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Online Access:https://ink.library.smu.edu.sg/sis_research/307
https://ink.library.smu.edu.sg/context/sis_research/article/1306/viewcontent/p283_gao.pdf
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spelling sg-smu-ink.sis_research-13062018-11-26T05:59:03Z Knowledge Transfer Via Multiple Model Local Structure Mapping GAO, Jing FAN, Wei JIANG, Jing HAN, Jiawei The effectiveness of knowledge transfer using classification algorithms depends on the difference between the distribution that generates the training examples and the one from which test examples are to be drawn. The task can be especially difficult when the training examples are from one or several domains different from the test domain. In this paper, we propose a locally weighted ensemble framework to combine multiple models for transfer learning, where the weights are dynamically assigned according to a model's predictive power on each test example. It can integrate the advantages of various learning algorithms and the labeled information from multiple training domains into one unified classification model, which can then be applied on a different domain. Importantly, different from many previously proposed methods, none of the base learning method is required to be specifically designed for transfer learning. We show the optimality of a locally weighted ensemble framework as a general approach to combine multiple models for domain transfer. We then propose an implementation of the local weight assignments by mapping the structures of a model onto the structures of the test domain, and then weighting each model locally according to its consistency with the neighborhood structure around the test example. Experimental results on text classification, spam filtering and intrusion detection data sets demonstrate significant improvements in classification accuracy gained by the framework. On a transfer learning task of newsgroup message categorization, the proposed locally weighted ensemble framework achieves 97% accuracy when the best single model predicts correctly only on 73% of the test examples. In summary, the improvement in accuracy is over 10% and up to 30% across different problems. 2008-08-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/307 info:doi/10.1145/1401890.1401928 https://ink.library.smu.edu.sg/context/sis_research/article/1306/viewcontent/p283_gao.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Algorithms Classification accuracies Learning methods Databases and Information Systems Numerical Analysis and Scientific Computing
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Algorithms
Classification accuracies
Learning methods
Databases and Information Systems
Numerical Analysis and Scientific Computing
spellingShingle Algorithms
Classification accuracies
Learning methods
Databases and Information Systems
Numerical Analysis and Scientific Computing
GAO, Jing
FAN, Wei
JIANG, Jing
HAN, Jiawei
Knowledge Transfer Via Multiple Model Local Structure Mapping
description The effectiveness of knowledge transfer using classification algorithms depends on the difference between the distribution that generates the training examples and the one from which test examples are to be drawn. The task can be especially difficult when the training examples are from one or several domains different from the test domain. In this paper, we propose a locally weighted ensemble framework to combine multiple models for transfer learning, where the weights are dynamically assigned according to a model's predictive power on each test example. It can integrate the advantages of various learning algorithms and the labeled information from multiple training domains into one unified classification model, which can then be applied on a different domain. Importantly, different from many previously proposed methods, none of the base learning method is required to be specifically designed for transfer learning. We show the optimality of a locally weighted ensemble framework as a general approach to combine multiple models for domain transfer. We then propose an implementation of the local weight assignments by mapping the structures of a model onto the structures of the test domain, and then weighting each model locally according to its consistency with the neighborhood structure around the test example. Experimental results on text classification, spam filtering and intrusion detection data sets demonstrate significant improvements in classification accuracy gained by the framework. On a transfer learning task of newsgroup message categorization, the proposed locally weighted ensemble framework achieves 97% accuracy when the best single model predicts correctly only on 73% of the test examples. In summary, the improvement in accuracy is over 10% and up to 30% across different problems.
format text
author GAO, Jing
FAN, Wei
JIANG, Jing
HAN, Jiawei
author_facet GAO, Jing
FAN, Wei
JIANG, Jing
HAN, Jiawei
author_sort GAO, Jing
title Knowledge Transfer Via Multiple Model Local Structure Mapping
title_short Knowledge Transfer Via Multiple Model Local Structure Mapping
title_full Knowledge Transfer Via Multiple Model Local Structure Mapping
title_fullStr Knowledge Transfer Via Multiple Model Local Structure Mapping
title_full_unstemmed Knowledge Transfer Via Multiple Model Local Structure Mapping
title_sort knowledge transfer via multiple model local structure mapping
publisher Institutional Knowledge at Singapore Management University
publishDate 2008
url https://ink.library.smu.edu.sg/sis_research/307
https://ink.library.smu.edu.sg/context/sis_research/article/1306/viewcontent/p283_gao.pdf
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