Literature DB >> 26091754

L1-norm locally linear representation regularization multi-source adaptation learning.

Jianwen Tao1, Shiting Wen2, Wenjun Hu3.   

Abstract

In most supervised domain adaptation learning (DAL) tasks, one has access only to a small number of labeled examples from target domain. Therefore the success of supervised DAL in this "small sample" regime needs the effective utilization of the large amounts of unlabeled data to extract information that is useful for generalization. Toward this end, we here use the geometric intuition of manifold assumption to extend the established frameworks in existing model-based DAL methods for function learning by incorporating additional information about the target geometric structure of the marginal distribution. We would like to ensure that the solution is smooth with respect to both the ambient space and the target marginal distribution. In doing this, we propose a novel L1-norm locally linear representation regularization multi-source adaptation learning framework which exploits the geometry of the probability distribution, which has two techniques. Firstly, an L1-norm locally linear representation method is presented for robust graph construction by replacing the L2-norm reconstruction measure in LLE with L1-norm one, which is termed as L1-LLR for short. Secondly, considering the robust graph regularization, we replace traditional graph Laplacian regularization with our new L1-LLR graph Laplacian regularization and therefore construct new graph-based semi-supervised learning framework with multi-source adaptation constraint, which is coined as L1-MSAL method. Moreover, to deal with the nonlinear learning problem, we also generalize the L1-MSAL method by mapping the input data points from the input space to a high-dimensional reproducing kernel Hilbert space (RKHS) via a nonlinear mapping. Promising experimental results have been obtained on several real-world datasets such as face, visual video and object.
Copyright © 2015 Elsevier Ltd. All rights reserved.

Keywords:  Graph regularization; Graph-based semi-supervised learning; L1-norm locally linear representation; Multi-source adaptation learning

Mesh:

Year:  2015        PMID: 26091754     DOI: 10.1016/j.neunet.2015.01.009

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  5 in total

1.  Multi-Model Adaptation Learning With Possibilistic Clustering Assumption for EEG-Based Emotion Recognition.

Authors:  Yufang Dan; Jianwen Tao; Di Zhou
Journal:  Front Neurosci       Date:  2022-05-04       Impact factor: 5.152

2.  Robust Latent Multi-Source Adaptation for Encephalogram-Based Emotion Recognition.

Authors:  Jianwen Tao; Yufang Dan; Di Zhou; Songsong He
Journal:  Front Neurosci       Date:  2022-04-27       Impact factor: 5.152

3.  Reconstruction of conductivity distribution with electrical impedance tomography based on hybrid regularization method.

Authors:  Yanyan Shi; Xiaoyue He; Meng Wang; Bin Yang; Feng Fu; Xiaolong Kong
Journal:  J Med Imaging (Bellingham)       Date:  2021-06-17

4.  Multi-Source Co-adaptation for EEG-Based Emotion Recognition by Mining Correlation Information.

Authors:  Jianwen Tao; Yufang Dan
Journal:  Front Neurosci       Date:  2021-05-13       Impact factor: 4.677

5.  Possibilistic Clustering-Promoting Semi-Supervised Learning for EEG-Based Emotion Recognition.

Authors:  Yufang Dan; Jianwen Tao; Jianjing Fu; Di Zhou
Journal:  Front Neurosci       Date:  2021-06-23       Impact factor: 4.677

  5 in total

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