Particle swarm optimization based parameter selection technique for unsupervised discriminant analysis in transfer learning framework

被引:0
作者
Rakesh Kumar Sanodiya
Jimson Mathew
Sriparna Saha
Piyush Tripathi
机构
[1] Indian Institute of Technology Patna,Department of Computer Science, Engineering
[2] IIEST Shibpur,undefined
来源
Applied Intelligence | 2020年 / 50卷
关键词
Unsupervised discriminant analysis; Transfer learning; Particle swarm optimization; Domain adaptation; Classification; Parameter selection;
D O I
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中图分类号
学科分类号
摘要
The purpose of transfer learning is to utilize the knowledge gained from the existing (source) domain to enhance the performance on a distinct but related (target) domain. Existing works on transfer learning are not capable of optimizing different quality measures (components) such as minimizing the marginal distribution, minimizing the conditional distribution, maximizing the target domain variance, modeling the manifold by utilizing the common geometric properties in the source as well as the target domain at the same time. Moreover, existing transfer learning methods use conventional approaches to determine the appropriate values of their parameters, which is very hectic and time-consuming. Therefore, in order to overcome the drawbacks of existing approaches, we propose a Particle Swarm Optimization based Parameter Selection Approach for Unsupervised Discriminant Analysis (UDATL-PSO) in transfer learning framework. In UDATL-PSO, all the quality measures are considered at the same time, as well as the PSO approach has been used to select the best values of their parameters. Extensive experiments on various transfer learning tasks show that the proposed method has a significant influence on state-of-the-art methods.
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页码:3071 / 3089
页数:18
相关论文
共 79 条
[1]  
Ionescu B(2018)Datasets column: diversity and credibility for social images and image retrieval ACM SIGMultimedia Rec 9 7-1359
[2]  
Lupu M(2010)A survey on transfer learning IEEE Trans Knowl Data Eng 22 1345-1034
[3]  
Rohm M(2015)Transfer learning for visual categorization: a survey IEEE Trans Neural Netw Learn Syst 26 1019-670
[4]  
Gînsca AL(2017)Robust transfer metric learning for image classification IEEE Trans Image Process 26 660-98
[5]  
Müller H(2006)Distance metric learning: a comprehensive survey Michigan State Universiy 2 4-14
[6]  
Pan SJ(2017)Regularized coplanar discriminant analysis for dimensionality reduction Pattern Recogn 62 87-42967
[7]  
Yang Q(2019)A framework for semi-supervised metric transfer learning on manifolds Knowl-Based Syst 176 1-1171
[8]  
Shao L(2019)A new transfer learning algorithm in semi-supervised setting IEEE Access 7 42956-210
[9]  
Zhu F(2017)A unified framework for metric transfer learning IEEE Trans Knowl Data Eng 29 1158-3789
[10]  
Li X(2011)Domain adaptation via transfer component analysis IEEE Trans Neural Netw 22 199-942