Literature DB >> 28333584

Unsupervised 2D Dimensionality Reduction with Adaptive Structure Learning.

Xiaowei Zhao1, Feiping Nie2, Sen Wang3, Jun Guo4, Pengfei Xu5, Xiaojiang Chen6.   

Abstract

In recent years, unsupervised two-dimensional (2D) dimensionality reduction methods for unlabeled large-scale data have made progress. However, performance of these degrades when the learning of similarity matrix is at the beginning of the dimensionality reduction process. A similarity matrix is used to reveal the underlying geometry structure of data in unsupervised dimensionality reduction methods. Because of noise data, it is difficult to learn the optimal similarity matrix. In this letter, we propose a new dimensionality reduction model for 2D image matrices: unsupervised 2D dimensionality reduction with adaptive structure learning (DRASL). Instead of using a predetermined similarity matrix to characterize the underlying geometry structure of the original 2D image space, our proposed approach involves the learning of a similarity matrix in the procedure of dimensionality reduction. To realize a desirable neighbors assignment after dimensionality reduction, we add a constraint to our model such that there are exact [Formula: see text] connected components in the final subspace. To accomplish these goals, we propose a unified objective function to integrate dimensionality reduction, the learning of the similarity matrix, and the adaptive learning of neighbors assignment into it. An iterative optimization algorithm is proposed to solve the objective function. We compare the proposed method with several 2D unsupervised dimensionality methods. K-means is used to evaluate the clustering performance. We conduct extensive experiments on Coil20, AT&T, FERET, USPS, and Yale data sets to verify the effectiveness of our proposed method.

Year:  2017        PMID: 28333584     DOI: 10.1162/NECO_a_00950

Source DB:  PubMed          Journal:  Neural Comput        ISSN: 0899-7667            Impact factor:   2.026


  1 in total

Review 1.  Study Progress of Radiomics With Machine Learning for Precision Medicine in Bladder Cancer Management.

Authors:  Lingling Ge; Yuntian Chen; Chunyi Yan; Pan Zhao; Peng Zhang; Runa A; Jiaming Liu
Journal:  Front Oncol       Date:  2019-11-28       Impact factor: 6.244

  1 in total

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