Residential College | false |
Status | 已發表Published |
Sampling sparse representations with randomized measurement langevin dynamics | |
Wang,Kafeng1; Xiong,Haoyi2; Bian,Jiang3; Zhu,Zhanxing4; Gao,Qian5; Guo,Zhishan3; Xu,Cheng Zhong6; Huan,Jun7; Dou,Dejing2 | |
2021-02-10 | |
Source Publication | ACM Transactions on Knowledge Discovery from Data |
ISSN | 1556-4681 |
Volume | 15Issue:2 |
Abstract | Stochastic Gradient Langevin Dynamics (SGLD) have been widely used for Bayesian sampling from certain probability distributions, incorporating derivatives of the log-posterior. With the derivative evaluation of the log-posterior distribution, SGLD methods generate samples from the distribution through performing as a thermostats dynamics that traverses over gradient flows of the log-posterior with certainly controllable perturbation. Even when the density is not known, existing solutions still can first learn the kernel density models from the given datasets, then produce new samples using the SGLD over the kernel density derivatives. In this work, instead of exploring new samples from kernel spaces, a novel SGLD sampler, namely, Randomized Measurement Langevin Dynamics (RMLD) is proposed to sample the high-dimensional sparse representations from the spectral domain of a given dataset. Specifically, given a random measurement matrix for sparse coding, RMLD first derives a novel likelihood evaluator of the probability distribution from the loss function of LASSO, then samples from the high-dimensional distribution using stochastic Langevin dynamics with derivatives of the logarithm likelihood and Metropolis-Hastings sampling. In addition, new samples in low-dimensional measuring spaces can be regenerated using the sampled high-dimensional vectors and the measurement matrix. The algorithm analysis shows that RMLD indeed projects a given dataset into a high-dimensional Gaussian distribution with Laplacian prior, then draw new sparse representation from the dataset through performing SGLD over the distribution. Extensive experiments have been conducted to evaluate the proposed algorithm using real-world datasets. The performance comparisons on three real-world applications demonstrate the superior performance of RMLD beyond baseline methods. |
Keyword | Compressive Sensing Hamiltonian Monte Carlo Lasso |
DOI | 10.1145/3427585 |
URL | View the original |
Indexed By | SCIE |
Language | 英語English |
WOS Research Area | Computer Science |
WOS Subject | Computer Science, Information Systems ; Computer Science, Software Engineering |
WOS ID | WOS:000639049700008 |
Scopus ID | 2-s2.0-85103959900 |
Fulltext Access | |
Citation statistics | |
Document Type | Journal article |
Collection | Faculty of Science and Technology |
Corresponding Author | Wang,Kafeng |
Affiliation | 1.Shenzhen Institutes of Advanced Technology,Chinese Academy of Sciences,University of Chinese Academy of Sciences,Shenzhen, Guangdong,518055,China 2.Big Data Lab,Baidu Inc.,Haidian, Beijing,100193,China 3.Department of Electrical and Computer Engineering,University of Central Florida,Orlando,32816,United States 4.School of Mathematical Sciences,Peking University,Haidian, Beijing,100871,China 5.Business Group of Baidu Search,Baidu Inc.,Haidian, Beijing,100193,China 6.State Key Laboratory of Internet of Things for Smart City,Faculty of Science and Technology,University of Macau,Taipa,Macao 7.StylingAI Inc.,Haidian, Beijing,100193,China |
Recommended Citation GB/T 7714 | Wang,Kafeng,Xiong,Haoyi,Bian,Jiang,et al. Sampling sparse representations with randomized measurement langevin dynamics[J]. ACM Transactions on Knowledge Discovery from Data, 2021, 15(2). |
APA | Wang,Kafeng., Xiong,Haoyi., Bian,Jiang., Zhu,Zhanxing., Gao,Qian., Guo,Zhishan., Xu,Cheng Zhong., Huan,Jun., & Dou,Dejing (2021). Sampling sparse representations with randomized measurement langevin dynamics. ACM Transactions on Knowledge Discovery from Data, 15(2). |
MLA | Wang,Kafeng,et al."Sampling sparse representations with randomized measurement langevin dynamics".ACM Transactions on Knowledge Discovery from Data 15.2(2021). |
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