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      Joint Feature Adaptation and Graph Adaptive Label Propagation for Cross-Subject Emotion Recognition From EEG Signals

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          A Survey on Transfer Learning

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            Domain adaptation via transfer component analysis.

            Domain adaptation allows knowledge from a source domain to be transferred to a different but related target domain. Intuitively, discovering a good feature representation across domains is crucial. In this paper, we first propose to find such a representation through a new learning method, transfer component analysis (TCA), for domain adaptation. TCA tries to learn some transfer components across domains in a reproducing kernel Hilbert space using maximum mean miscrepancy. In the subspace spanned by these transfer components, data properties are preserved and data distributions in different domains are close to each other. As a result, with the new representations in this subspace, we can apply standard machine learning methods to train classifiers or regression models in the source domain for use in the target domain. Furthermore, in order to uncover the knowledge hidden in the relations between the data labels from the source and target domains, we extend TCA in a semisupervised learning setting, which encodes label information into transfer components learning. We call this extension semisupervised TCA. The main contribution of our work is that we propose a novel dimensionality reduction framework for reducing the distance between domains in a latent space for domain adaptation. We propose both unsupervised and semisupervised feature extraction approaches, which can dramatically reduce the distance between domain distributions by projecting data onto the learned transfer components. Finally, our approach can handle large datasets and naturally lead to out-of-sample generalization. The effectiveness and efficiency of our approach are verified by experiments on five toy datasets and two real-world applications: cross-domain indoor WiFi localization and cross-domain text classification.
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              A Comprehensive Survey on Transfer Learning

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                Author and article information

                Contributors
                Journal
                IEEE Transactions on Affective Computing
                IEEE Trans. Affective Comput.
                Institute of Electrical and Electronics Engineers (IEEE)
                1949-3045
                2371-9850
                October 1 2022
                October 1 2022
                : 13
                : 4
                : 1941-1958
                Affiliations
                [1 ]School of Computer Science and Technology, Zhejiang Key Laboratory of Brain-Machine Collaborative Intelligence, Hangzhou Dianzi University, Hangzhou, China
                [2 ]School of Artificial Intelligence, OPtics and ElectroNics (iOPEN), Northwestern Polytechnical University, Xi’an, China
                [3 ]Department of Computer Science and Engineering, Shanghai Jiao Tong University, Shanghai, China
                [4 ]Center for Computational and Data-Intensive Science and Engineering, Skolkov Institute of Science and Technology, Moscow, Russia
                Article
                10.1109/TAFFC.2022.3189222
                24772d9a-c199-4e8e-b7f9-024716a09752
                © 2022

                https://ieeexplore.ieee.org/Xplorehelp/downloads/license-information/IEEE.html

                https://doi.org/10.15223/policy-029

                https://doi.org/10.15223/policy-037

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