中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Representative Task Self-Selection for Flexible Clustered Lifelong Learning

文献类型:期刊论文

作者Sun G(孙干)1,5; Cong Y(丛杨)5; Wang QQ(王倩倩)4; Zhong BN(钟必能)3; Fu Y(付昀)1,2
刊名IEEE Transactions on Neural Networks and Learning Systems
出版日期2022
卷号33期号:4页码:1467-1481
ISSN号2162-237X
关键词Clustering analysis lifelong machine learning multitask learning (MTL) transfer learning
产权排序1
英文摘要

Consider the lifelong machine learning paradigm whose objective is to learn a sequence of tasks depending on previous experiences, e.g., knowledge library or deep network weights. However, the knowledge libraries or deep networks for most recent lifelong learning models are of prescribed size and can degenerate the performance for both learned tasks and coming ones when facing with a new task environment (cluster). To address this challenge, we propose a novel incremental clustered lifelong learning framework with two knowledge libraries: feature learning library and model knowledge library, called Flexible Clustered Lifelong Learning (FCL). Specifically, the feature learning library modeled by an autoencoder architecture maintains a set of representation common across all the observed tasks, and the model knowledge library can be self-selected by identifying and adding new representative models (clusters). When a new task arrives, our FCL model firstly transfers knowledge from these libraries to encode the new task, i.e., effectively and selectively soft-assigning this new task to multiple representative models over feature learning library. Then: 1) the new task with a higher outlier probability will be judged as a new representative, and used to redefine both feature learning library and representative models over time; or 2) the new task with lower outlier probability will only refine the feature learning library. For model optimization, we cast this lifelong learning problem as an alternating direction minimization problem as a new task comes. Finally, we evaluate the proposed framework by analyzing several multitask data sets, and the experimental results demonstrate that our FCL model can achieve better performance than most lifelong learning frameworks, even batch clustered multitask learning models.

语种英语
WOS记录号WOS:000778930100012
资助机构National Natural Science Foundation of China under Grant 61722311, Grant U1613214, Grant 61821005, and Grant 62003336 ; National Postdoctoral Innovative Talents Support Program under Grant BX20200353 ; National Nature Science Foundation of China under Grant 61533015
源URL[http://ir.sia.cn/handle/173321/28138]  
专题沈阳自动化研究所_机器人学研究室
通讯作者Sun G(孙干)
作者单位1.Department of Electrical and Computer Engineering, Northeastern University, Boston, MA 02115 USA
2.Khoury College of Computer Sciences, Northeastern University, Boston, MA 02115 USA.
3.Department of Computer Science, Guangxi Normal University, Guilin 541004, China.
4.Xidian University, Xian, Shanxi 710071, China.
5.State Key Laboratory of Robotics, Shenyang Institute of Automation, Chinese Academy of Sciences, Shenyang 110016, China
推荐引用方式
GB/T 7714
Sun G,Cong Y,Wang QQ,et al. Representative Task Self-Selection for Flexible Clustered Lifelong Learning[J]. IEEE Transactions on Neural Networks and Learning Systems,2022,33(4):1467-1481.
APA Sun G,Cong Y,Wang QQ,Zhong BN,&Fu Y.(2022).Representative Task Self-Selection for Flexible Clustered Lifelong Learning.IEEE Transactions on Neural Networks and Learning Systems,33(4),1467-1481.
MLA Sun G,et al."Representative Task Self-Selection for Flexible Clustered Lifelong Learning".IEEE Transactions on Neural Networks and Learning Systems 33.4(2022):1467-1481.

入库方式: OAI收割

来源:沈阳自动化研究所

浏览0
下载0
收藏0
其他版本

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。