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Dive into the research topics where Wenlin Wang is active.

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Featured researches published by Wenlin Wang.


european conference on machine learning | 2016

Deep Metric Learning with Data Summarization

Wenlin Wang; Changyou Chen; Wenlin Chen; Piyush Rai; Lawrence Carin

We present Deep Stochastic Neighbor Compression DSNC, a framework to compress training data for instance-based methods such as k-nearest neighbors. We accomplish this by inferring a smaller set of pseudo-inputs in a new feature space learned by a deep neural network. Our framework can equivalently be seen as jointly learning a nonlinear distance metric induced by the deep feature space and learning a compressed version of the training data. In particular, compressing the data in a deep feature space makes DSNC robust against label noise and issues such as within-class multi-modal distributions. This leads to DSNC yielding better accuracies and faster predictions at test time, as compared to other competing methods. We conduct comprehensive empirical evaluations, on both quantitative and qualitative tasks, and on several benchmark datasets, to show its effectiveness as compared to several baselines.


national conference on artificial intelligence | 2018

Zero-Shot Learning via Class-Conditioned Deep Generative Models

Wenlin Wang; Yunchen Pu; Vinay Kumar Verma; Kai Fan; Yizhe Zhang; Changyou Chen; Piyush Rai; Lawrence Carin


meeting of the association for computational linguistics | 2018

Baseline Needs More Love: On Simple Word-Embedding-Based Models and Associated Pooling Mechanisms.

Dinghan Shen; Guoyin Wang; Wenlin Wang; Martin Renqiang Min; Qinliang Su; Yizhe Zhang; Chunyuan Li; Ricardo Henao; Lawrence Carin


Archive | 2017

A Convergence Analysis for A Class of Practical Variance-Reduction Stochastic Gradient MCMC

Changyou Chen; Wenlin Wang; Yizhe Zhang; Qinliang Su; Lawrence Carin


international conference on artificial intelligence and statistics | 2017

Topic Compositional Neural Language Model.

Wenlin Wang; Zhe Gan; Wenqi Wang; Dinghan Shen; Jiaji Huang; Wei Ping; Sanjeev Satheesh; Lawrence Carin


arXiv: Machine Learning | 2017

Continuous-Time Flows for Deep Generative Models

Changyou Chen; Chunyuan Li; Liqun Chen; Wenlin Wang; Yunchen Pu; Lawrence Carin


arXiv: Learning | 2016

Earliness-Aware Deep Convolutional Networks for Early Time Series Classification.

Wenlin Wang; Changyou Chen; Wenqi Wang; Piyush Rai; Lawrence Carin


uncertainty in artificial intelligence | 2018

A Unified Particle-Optimization Framework for Scalable Bayesian Sampling

Changyou Chen; Ruiyi Zhang; Wenlin Wang; Bai Li; Liqun Chen


neural information processing systems | 2018

Distilled Wasserstein Learning for Word Embedding and Topic Modeling

Hongteng Xu; Wenlin Wang; Wei Liu; Lawrence Carin


meeting of the association for computational linguistics | 2018

On Simple Word-Embedding-Based Models and Associated Pooling Mechanisms

Dinghan Shen; Guoyin Wang; Wenlin Wang; Martin Renqiang Min; Qinliang Su; Yizhe Zhang; Chunyuan Li; Ricardo Henao; Lawrence Carin

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