Recipient |
University |
Research title |
Jacob Andreas |
Massachusetts Institute of Technology |
Natural Language Summaries of Deep Networks and Decisions |
Elias Bareinboim |
Columbia University |
Approximate Causal Inference and Decision-Making |
Luisa Bentivogli |
Fondazione Bruno Kessler |
Bias Mitigation and Gender Neutralization Techniques for Automatic Translation |
Adel Bibi |
University of Oxford |
Randomized Smoothing: Future Directions and Extensions |
Peter Brusilovsky |
University of Pittsburgh |
Investigating and Evaluating Exploratory Recommender Systems |
Marine Carpuat |
University of Maryland, College Park |
Model Introspection for Detecting Hallucinations in Neural Machine Translation |
Snigdha Chaturvedi |
University of North Carolina at Chapel Hill |
Task-agnostic Learning of Fair Text Representations and their Application in Natural Language Generation |
Tianyi Chen |
Rensselaer Polytechnic Institute |
Automating Decentralized Machine Learning via Bilevel Optimization |
Ashok Cutkosky |
Boston University |
Private Non-Convex Optimization via Momentum |
Bhuwan Dhingra |
Duke University |
Long-form Question Answering via Collaborative Writing |
Yufei Ding |
University of California, Santa Barbara |
Tensor-centric Acceleration Framework for Large-Scale Deep-Learning Recommendation Model on GPU Clouds |
Yonina Eldar |
Massachusetts Institute of Technology/Weizmann Institute of Science |
Efficient and Interpretable Deep Learning for Low Cost Ultrasound Imaging |
Ferdinando Fioretto |
Syracuse University |
Toward Understanding the Unintended Disparate Impacts of Differentially Private Machine Learning Systems |
David Forsyth |
University of Illinois Urbana-Champaign |
Learning and Evaluating Object Detectors in the All-Novel-Class Regime |
Tom Goldstein |
University of Maryland |
Automated and Efficient Graph Algorithms with AutoGluon and DGL Integration |
Dan Goldwasser |
Purdue University, West Lafayette |
Understanding Socially Grounded Language using Contextualized Discourse Embedding |
Hui Guan |
University of Massachusetts Amherst |
Groot: A GPU-Resident System for Efficient Graph Machine Learning |
Callie Hao |
Georgia Institute of Technology |
Generalizable Zero-shot Auto-tuning for Efficient Deep Learning Workloads Delivery Co-learned with Neural Architecture Search |
Wen-mei Hwu |
University of Illinois, Urbana–Champaign |
Design and Implementation of Storage-Scale Tensors for Efficient GNN Training |
Yani Ioannou |
University of Calgary |
Addressing Catastrophic Forgetting with Dynamic Sparse Training |
Yangfeng Ji |
University of Virginia |
Building Conversational Agents with Limited Resources |
Zhihao Jia |
Carnegie Mellon University |
Towards Affordable and Accessible ML by Leveraging Heterogeneous Spot Instances |
Preethi Jyothi |
Indian Institute of Technology Bombay |
Towards Fairness in Speech Recognition using Targeted Subset Selection and Active Semi-supervised Learning |
Dimosthenis Karatzas |
Autonomous University of Barcelona |
Multipage and Multilingual Document Visual Question Answering |
Parisa Kordjamshidi |
Michigan State University |
Natural Language Instruction Following in Realistic Visual Environments |
Jana Kosecka |
George Mason University |
Hand Shape Modeling for American Sign Language Recognition |
Jing (Jane) Li |
University of Pennsylvania |
HDIBench: An End-to-End Benchmark for High-Dimensional Data Indexing and Searching |
Sharon Yixuan Li |
University of Wisconsin–Madison |
Uncertainty-aware Deep Learning for Reliable Decision Making in an Open World |
Rada Mihalcea |
University of Michigan |
Community-aware Product Question Generation |
Hongseok Namkoong |
Columbia University |
Distributionally Robust Deep Learning Using Pre-trained Models |
Shirui Pan |
Griffith University |
Effective Multi-Task Self-Supervised Learning for Graph Anomaly Detection |
Nicolas Papernot |
University of Toronto |
Characterizing the Privacy Attack Surface of Machine Learning |
Yifan Peng |
Weill Cornell Medicine |
Modeling longitudinal EHR to compose interpretable, deep knowledge-enhanced radiology reports |
Christopher Potts |
Stanford University |
Causal abstractions of neural networks: Towards more explainable models and generalization guarantees |
Saurabh Prasad |
University Of Houston |
Steerable Sparse Deep Neural Networks and Knowledge Transfer for Robust GeoAI |
Pradeep Ravikumar |
Carnegie Mellon University |
Causal + Deep Out-of-Distribution Learning |
Xiang Ren |
University of Southern California |
Generating and Utilizing Explanations for Human-in-the-Loop Language Model Refinement |
Andrej Risteski |
Carnegie Mellon University |
Causal + Deep Out-of-Distribution Learning |
Marco Serafini |
University of Massachusetts Amherst |
Groot: A GPU-Resident System for Efficient Graph Machine Learning |
Matteo Sesia |
University of Southern California |
CONFORMALIZED LEARNING FOR UNCERTAINTY-AWARE AI |
Vatsal Sharan |
University of Southern California |
Actionable Insights at Scale: Certified Anomaly Detection for Data-Intensive Systems |
George Shih |
Weill Cornell Medicine |
Modeling longitudinal EHR to compose interpretable, deep knowledge-enhanced radiology reports |
Shashank Srivastava |
University of North Carolina At Chapel Hill |
Learning from Natural Language Explanations for the Long Tail |
Philip Torr |
University of Oxford |
Randomized Smoothing: Future Directions and Extensions |
Yuxiong Wang |
University of Illinois At Urbana–Champaign |
Learning and Evaluating Object Detectors in the All-Novel-Class Regime |
Fei Wang |
Cornell University |
High-Throughput Drug Repurposing with Real World Data Enhanced with Biomedical Knowledge |
Shinji Watanabe |
Carnegie Mellon University |
Non-Autoregressive Conversational Speech Recognition |
Yang Xu |
University of Toronto |
Developing machine comprehension and fairness toward informal language |
Carl Yang |
Emory University |
Federated Learning on Graph Data: Utility, Efficiency, and Privacy |
Diyi Yang |
Georgia Institute of Technology |
Learning Continually and Adaptatively for Natural Language Processing |
Tao Yu |
University of Hong Kong |
Scalable Conversational Structured Knowledge Grounding with a Unified Language Model |
Bin Yu |
UC Berkeley |
Interpretable and Stable AutoML |
Bolei Zhou |
University of California, Los Angeles |
Improving Out-of-Distribution Generalization through Steerable Generative Modeling. |
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