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Marti A. Hearst

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Shallow Synthesis of Knowledge in GPT-Generated Texts: A Case Study in Automatic Related Work Composition

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Feb 19, 2024
Anna Martin-Boyle, Aahan Tyagi, Marti A. Hearst, Dongyeop Kang

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Beyond the Chat: Executable and Verifiable Text-Editing with LLMs

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Sep 27, 2023
Philippe Laban, Jesse Vig, Marti A. Hearst, Caiming Xiong, Chien-Sheng Wu

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Complex Mathematical Symbol Definition Structures: A Dataset and Model for Coordination Resolution in Definition Extraction

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May 24, 2023
Anna Martin-Boyle, Andrew Head, Kyle Lo, Risham Sidhu, Marti A. Hearst, Dongyeop Kang

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Pragmatically Appropriate Diversity for Dialogue Evaluation

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Apr 06, 2023
Katherine Stasaski, Marti A. Hearst

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The Semantic Reader Project: Augmenting Scholarly Documents through AI-Powered Interactive Reading Interfaces

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Mar 25, 2023
Kyle Lo, Joseph Chee Chang, Andrew Head, Jonathan Bragg, Amy X. Zhang, Cassidy Trier, Chloe Anastasiades, Tal August, Russell Authur, Danielle Bragg, Erin Bransom, Isabel Cachola, Stefan Candra, Yoganand Chandrasekhar, Yen-Sung Chen, Evie Yu-Yen Cheng, Yvonne Chou, Doug Downey, Rob Evans, Raymond Fok, Fangzhou Hu, Regan Huff, Dongyeop Kang, Tae Soo Kim, Rodney Kinney, Aniket Kittur, Hyeonsu Kang, Egor Klevak, Bailey Kuehl, Michael Langan, Matt Latzke, Jaron Lochner, Kelsey MacMillan, Eric Marsh, Tyler Murray, Aakanksha Naik, Ngoc-Uyen Nguyen, Srishti Palani, Soya Park, Caroline Paulic, Napol Rachatasumrit, Smita Rao, Paul Sayre, Zejiang Shen, Pao Siangliulue, Luca Soldaini, Huy Tran, Madeleine van Zuylen, Lucy Lu Wang, Christopher Wilhelm, Caroline Wu, Jiangjiang Yang, Angele Zamarron, Marti A. Hearst, Daniel S. Weld

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Semantic Diversity in Dialogue with Natural Language Inference

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May 03, 2022
Katherine Stasaski, Marti A. Hearst

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Paper Plain: Making Medical Research Papers Approachable to Healthcare Consumers with Natural Language Processing

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Feb 28, 2022
Tal August, Lucy Lu Wang, Jonathan Bragg, Marti A. Hearst, Andrew Head, Kyle Lo

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NewsPod: Automatic and Interactive News Podcasts

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Feb 15, 2022
Philippe Laban, Elicia Ye, Srujay Korlakunta, John Canny, Marti A. Hearst

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SummaC: Re-Visiting NLI-based Models for Inconsistency Detection in Summarization

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Nov 18, 2021
Philippe Laban, Tobias Schnabel, Paul N. Bennett, Marti A. Hearst

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Can Transformer Models Measure Coherence In Text? Re-Thinking the Shuffle Test

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Jul 07, 2021
Philippe Laban, Luke Dai, Lucas Bandarkar, Marti A. Hearst

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