Date & Time:
May 22, 2025 1:00 pm – 2:00 pm
Location:
Crerar 298, 5730 S. Ellis Ave., Chicago, IL,
05/22/2025 01:00 PM 05/22/2025 02:00 PM America/Chicago Tom McCoy (Yale)- Bridging the divide between linguistics and NLP: From vectors to symbols and back again Crerar 298, 5730 S. Ellis Ave., Chicago, IL,

Abstract: Capturing the structure of language is a central goal in both linguistics and natural language processing (NLP). Despite this overlap in goals, linguistics and NLP differ substantially in how they handle language. Linguistic theories typically assume a symbolic view, in which discrete units (e.g., words) are combined in structured ways (e.g., in syntax trees). In NLP, however, the most successful systems are neural networks, which encode information in continuous vectors that do not appear to have any of the rich structure posited in linguistics. In this talk, I will discuss two lines of work that show how vectors and symbols may not be as incompatible as they seem. First, I will present mechanistic interpretability analyses of how standard neural networks represent syntactic structure, with the conclusion that, in at least many cases, these models build implicit symbolic representations. Thus, despite appearances, they may not be incompatible with symbolic views of language. Second, I will turn from representations to learning by showing how neural networks can realize strong, structured learning biases of the sort traditionally seen only in symbolic models; the experiments in this part of the talk are made possible by recent advances in meta-learning. Taken together, these results provide some first steps toward bridging the divide between vectors and symbols.

Speakers

headshot

Tom McCoy

Assistant Professor of Linguistics, Yale

Tom McCoy is an Assistant Professor in the Department of Linguistics at Yale University, also affiliated with the Department of Computer Science and the Wu Tsai Institute. He studies computational linguistics using techniques from cognitive science and artificial intelligence. His research focuses on the computational principles that underlie human language. He is particularly interested in language learning and linguistic representations. On the side of learning, he investigates how people can acquire language from so little data and how we can replicate this ability in machines. On the side of representations, he investigates what types of machines can represent the structure of language and how they do it. Much of his research involves neural network language models, with an emphasis on connecting such systems to linguistics.

Related News & Events

BloomBeacon touch
UChicago CS News

Flexible Displays, Flexible Lives: How BloomBeacon Reimagines Interaction

Jun 11, 2026
UChicago CS News

SciFM 2026 at UChicago: Inside the Premier Gathering of AI, Foundation Models, and the Future of Scientific Discovery

Jun 03, 2026
Student using ChatGPT
UChicago CS News

Are Students Hiding Their AI Use? The Social Stigma Behind AI Use in the Classroom

May 27, 2026
headshot
In the News

Exploring Sustainable Computing

May 21, 2026
headshot
UChicago CS News

Seeing What Matters: UChicago’s Alex Kale Receives NSF Early CAREER Award for Rethinking Data Visualization Ethics

May 20, 2026
Headshot
UChicago CS News

Nick Feamster Receives 2026 Quantrell Teaching Award

May 14, 2026
headshot
UChicago CS News

From Dark Patterns Research to Landmark Litigation: UChicago CS PhD Graduate Brennan Schaffner Receives ACM SIGCHI Special Recognition Award

May 13, 2026
quicksilver detecting tool
UChicago CS News

Unmasking AI Music: Quicksilver and the Ethical Movement Behind It

May 11, 2026
headshot
UChicago CS News

Rebecca Willett Named 2026 Recipient of the Arthur L. Kelly Faculty Prize

May 11, 2026
headshot
UChicago CS News

Assistant Professor Yuxin Chen Receives Prestigious NSF CAREER Award

May 05, 2026
chart
UChicago CS News

Who Gets Hired, Paid, and Liked? Who Gets Credit? New Research Examines AI’s Role in Writing and the Workplace

Apr 22, 2026
Jiayin presenting her work at CHI
UChicago CS News

The Time Constraints of AI Access Could Change How We Think

Apr 21, 2026
arrow-down-largearrow-left-largearrow-right-large-greyarrow-right-large-yellowarrow-right-largearrow-right-smallbutton-arrowclosedocumentfacebookfacet-arrow-down-whitefacet-arrow-downPage 1CheckedCheckedicon-apple-t5backgroundLayer 1icon-google-t5icon-office365-t5icon-outlook-t5backgroundLayer 1icon-outlookcom-t5backgroundLayer 1icon-yahoo-t5backgroundLayer 1internal-yellowinternalintranetlinkedinlinkoutpauseplaypresentationsearch-bluesearchshareslider-arrow-nextslider-arrow-prevtwittervideoyoutube