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Tingting Zhao

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Information Retrieval and Classification of Real-Time Multi-Source Hurricane Evacuation Notices

Jan 07, 2024
Tingting Zhao, Shubo Tian, Jordan Daly, Melissa Geiger, Minna Jia, Jinfeng Zhang

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Representation Learning for Continuous Action Spaces is Beneficial for Efficient Policy Learning

Nov 23, 2022
Tingting Zhao, Ying Wang, Wei Sun, Yarui Chen, Gang Niub, Masashi Sugiyama

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Cost-aware Generalized $α$-investing for Multiple Hypothesis Testing

Oct 31, 2022
Thomas Cook, Harsh Vardhan Dubey, Ji Ah Lee, Guangyu Zhu, Tingting Zhao, Patrick Flaherty

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Exploiting Dynamic and Fine-grained Semantic Scope for Extreme Multi-label Text Classification

May 24, 2022
Yuan Wang, Huiling Song, Peng Huo, Tao Xu, Jucheng Yang, Yarui Chen, Tingting Zhao

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Deep Bayesian Unsupervised Lifelong Learning

Jun 13, 2021
Tingting Zhao, Zifeng Wang, Aria Masoomi, Jennifer Dy

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Identification of 27 abnormalities from multi-lead ECG signals: An ensembled Se-ResNet framework with Sign Loss function

Jan 12, 2021
Zhaowei Zhu, Xiang Lan, Tingting Zhao, Yangming Guo, Pipin Kojodjojo, Zhuoyang Xu, Zhuo Liu, Siqi Liu, Han Wang, Xingzhi Sun, Mengling Feng

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A Computer Vision Application for Assessing Facial Acne Severity from Selfie Images

Jul 31, 2019
Tingting Zhao, Hang Zhang, Jacob Spoelstra

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Adaptive Nonparametric Variational Autoencoder

Jun 07, 2019
Tingting Zhao, Zifeng Wang, Aria Masoomi, Jennifer G. Dy

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Analysis of high-dimensional Continuous Time Markov Chains using the Local Bouncy Particle Sampler

Jun 03, 2019
Tingting Zhao, Alexandre Bouchard-Côté

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