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Andrew Bennett

Researcher at Cornell University

Publications -  24
Citations -  791

Andrew Bennett is an academic researcher from Cornell University. The author has contributed to research in topics: Generalized method of moments & Markov decision process. The author has an hindex of 9, co-authored 24 publications receiving 579 citations. Previous affiliations of Andrew Bennett include Medical College of Wisconsin & Veterans Health Administration.

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Journal ArticleDOI

AskHERMES: An online question answering system for complex clinical questions

TL;DR: A clinical question answering system named AskHERMES is built to perform robust semantic analysis on complex clinical questions and output question-focused extractive summaries as answers and demonstrates the potential to outperform both Google and UpToDate systems.
Proceedings ArticleDOI

Mapping Instructions to Actions in 3D Environments with Visual Goal Prediction

TL;DR: A model that maps raw visual observations to goals using LINGUNET, a language-conditioned image generation network, and then generates the actions required to complete them is designed.
Posted Content

CHALET: Cornell House Agent Learning Environment.

TL;DR: The environment and actions available are designed to create a challenging domain to train and evaluate autonomous agents, including for tasks that combine language, vision, and planning in a dynamic environment.
Posted Content

Deep Generalized Method of Moments for Instrumental Variable Analysis

TL;DR: This paper proposes the DeepGMM algorithm, a new variational reformulation of GMM with optimal inverse-covariance weighting that allows us to efficiently control very many moment conditions and develops practical techniques for optimization and model selection that make it particularly successful in practice.
Proceedings ArticleDOI

Following High-level Navigation Instructions on a Simulated Quadcopter with Imitation Learning

TL;DR: A method for following high-level navigation instructions by mapping directly from images, instructions and pose estimates to continuous low-level velocity commands for real-time control is introduced.