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教授 博士生导师
招生学科专业:
网络空间安全 -- 【招收硕士研究生】 -- 计算机科学与技术学院
计算机科学与技术 -- 【招收博士、硕士研究生】 -- 人工智能学院
软件工程 -- 【招收硕士研究生】 -- 人工智能学院
电子信息 -- 【招收博士、硕士研究生】 -- 人工智能学院
学历:南京航空航天大学
学位:工学博士学位
所在单位:计算机科学与技术学院/人工智能学院/软件学院
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A novel knowledge-leverage-based transfer learning algorithm
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所属单位:计算机科学与技术学院/人工智能学院/软件学院
发表刊物:APPLIED INTELLIGENCE
关键字:Transfer learning Ensemble selection Rank-based ensemble pruning Rank-based Reduce Error (RankRE) ensemble selection approach Transfer learning algorithm based on rankRE (RankRE-TL)
摘要:A major assumption in traditional machine leaning is that the training and testing data must be in the same feature space and have the same distribution. However, in many real-world applications, this assumption may not hold. In recent years, transfer learning has emerged as a new learning paradigm to cope with this considerable challenge. It focuses on exploiting previously learnt knowledge by leveraging information from an old source domain to help learning in a new target domain. In this work, we integrate the knowledge-leverage-based Transfer Learning mechanism with a Rank-based Reduce Error ensemble selection approach to fulfill the transfer learning task, called RankRE-TL. Ensemble selection is important for improving both efficiency and predictive accuracy of an ensemble system. It aims to select a proper subset of the whole ensemble, which usually outperforms the whole one. Therefore, we appropriately modify the Reduce Error (RE) pruning technique and design a new Rank-based Reduce Error ensemble selection method (RankRE) to deal with the transfer learning task. The design idea of RankRE is to find the candidate classifier which is expected to improve the classification performance of the extended subensemble the most. In the RankRE-TL algorithm, the initial Support Vector Machine (SVM) ensemble is learnt based upon dynamic training dataset regrouping. And simultaneously, a new construction method of validation set is designed for RankRE-TL, which differs from the method used in conventional ensemble selection paradigm.
ISSN号:0924-669X
是否译文:否
发表时间:2018-08-01
合写作者:李美岭
通讯作者:戴群