Literature DB >> 20215078

Flexible manifold embedding: a framework for semi-supervised and unsupervised dimension reduction.

Feiping Nie1, Dong Xu, Ivor Wai-Hung Tsang, Changshui Zhang.   

Abstract

We propose a unified manifold learning framework for semi-supervised and unsupervised dimension reduction by employing a simple but effective linear regression function to map the new data points. For semi-supervised dimension reduction, we aim to find the optimal prediction labels F for all the training samples X, the linear regression function h(X) and the regression residue F(0) = F - h(X) simultaneously. Our new objective function integrates two terms related to label fitness and manifold smoothness as well as a flexible penalty term defined on the residue F(0). Our Semi-Supervised learning framework, referred to as flexible manifold embedding (FME), can effectively utilize label information from labeled data as well as a manifold structure from both labeled and unlabeled data. By modeling the mismatch between h(X) and F, we show that FME relaxes the hard linear constraint F = h(X) in manifold regularization (MR), making it better cope with the data sampled from a nonlinear manifold. In addition, we propose a simplified version (referred to as FME/U) for unsupervised dimension reduction. We also show that our proposed framework provides a unified view to explain and understand many semi-supervised, supervised and unsupervised dimension reduction techniques. Comprehensive experiments on several benchmark databases demonstrate the significant improvement over existing dimension reduction algorithms.

Entities:  

Year:  2010        PMID: 20215078     DOI: 10.1109/TIP.2010.2044958

Source DB:  PubMed          Journal:  IEEE Trans Image Process        ISSN: 1057-7149            Impact factor:   10.856


  10 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.  Learning important features from multi-view data to predict drug side effects.

Authors:  Xujun Liang; Pengfei Zhang; Jun Li; Ying Fu; Lingzhi Qu; Yongheng Chen; Zhuchu Chen
Journal:  J Cheminform       Date:  2019-12-16       Impact factor: 5.514

4.  Discriminative Label Relaxed Regression with Adaptive Graph Learning.

Authors:  Jingjing Wang; Zhonghua Liu; Wenpeng Lu; Kaibing Zhang
Journal:  Comput Intell Neurosci       Date:  2020-12-12

5.  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

6.  Quantitative classification and radiomics of [18F]FDG-PET/CT in indeterminate thyroid nodules.

Authors:  Elizabeth J de Koster; Wyanne A Noortman; Jacob M Mostert; Jan Booij; Catherine B Brouwer; Bart de Keizer; John M H de Klerk; Wim J G Oyen; Floris H P van Velden; Lioe-Fee de Geus-Oei; Dennis Vriens
Journal:  Eur J Nucl Med Mol Imaging       Date:  2022-02-09       Impact factor: 10.057

7.  [18F]FDG-PET/CT radiomics for the identification of genetic clusters in pheochromocytomas and paragangliomas.

Authors:  Wyanne A Noortman; Dennis Vriens; Lioe-Fee de Geus-Oei; Cornelis H Slump; Erik H Aarntzen; Anouk van Berkel; Henri J L M Timmers; Floris H P van Velden
Journal:  Eur Radiol       Date:  2022-08-24       Impact factor: 7.034

8.  BinSPreader: Refine binning results for fuller MAG reconstruction.

Authors:  Ivan Tolstoganov; Yuri Kamenev; Roman Kruglikov; Sofia Ochkalova; Anton Korobeynikov
Journal:  iScience       Date:  2022-07-19

9.  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

10.  Laplacian mixture modeling for network analysis and unsupervised learning on graphs.

Authors:  Daniel Korenblum
Journal:  PLoS One       Date:  2018-10-01       Impact factor: 3.240

  10 in total

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