Michael Y. Li

Hi, I'm Michael! I'm a CS PhD student at Stanford, advised by Noah Goodman and Emily Fox.

Previously, I graduated from Princeton (summa cum laude, Phi Beta Kappa), where I worked with Tom Griffiths and Ryan Adams. I’ve also spent time in tech and quant research.

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Research

I'm broadly interested in reasoning in language models, with a recent focus on making test-time computation more resource-efficient. Can reasoning models learn to garbage-collect their own KV cache? Some of my work draws on ideas from statistics—for example, can classic Monte Carlo methods help scale parallel test-time compute more efficiently? Previously, I worked on statistical machine learning, including twisted Sequential Monte Carlo. If you're a Stanford student interested in collaborating, feel free to reach out at firstname.middle_initial.lastname@stanford.edu! I've collaborated with a number of great undergrads on a few projects.

Selected Publications

Neural Garbage Collection


Michael Y. Li, Jubayer Ibn Hamid, Emily B. Fox, Noah D. Goodman
arXiv preprint, 2026
paper / tweet

QuasiMoTTo: Quasi-Monte Carlo Test-Time Scaling


Michael Y. Li*, Anthony Zhan*, Kanishk Gandhi, Noah D. Goodman, Emily B. Fox
arXiv preprint, 2026
paper / tweet

SPIRAL: Learning to Search and Aggregate


Jubayer Ibn Hamid*, Ifdita Hasan Orney*, Michael Y. Li, Omar Shaikh, Yoonho Lee, Dorsa Sadigh, Chelsea Finn, Noah D. Goodman
arXiv preprint, 2026
paper / tweet

Simplified Sparse Attention via Gist Tokens


Yuzhen Mao, Michael Y. Li, Emily B. Fox
arXiv preprint, 2026
paper / tweet

NAS-X: Neural Adaptive Smoothing via Twisting


Dieterich Lawson*, Michael Y. Li*, Scott W. Linderman
NeurIPS, 2023
paper / website

All Publications

2026

QuasiMoTTo: Quasi-Monte Carlo Test-Time Scaling


Michael Y. Li*, Anthony Zhan*, Kanishk Gandhi, Noah D. Goodman, Emily B. Fox
arXiv preprint, 2026
paper tweet

auto-psych: Automating the science of mind using agent-driven theory discovery and experimentation


Ben Prystawski, Kushin Mukherjee, Daniel Wurgaft, Linas Nasvytis, Michael Y. Li, Noah D. Goodman, Michael C. Frank
arXiv preprint, 2026
paper tweet

SPIRAL: Learning to Search and Aggregate


Jubayer Ibn Hamid*, Ifdita Hasan Orney*, Michael Y. Li, Omar Shaikh, Yoonho Lee, Dorsa Sadigh, Chelsea Finn, Noah D. Goodman
arXiv preprint, 2026
paper tweet

Simplified Sparse Attention via Gist Tokens


Yuzhen Mao, Michael Y. Li, Emily B. Fox
arXiv preprint, 2026
paper tweet

Neural Garbage Collection


Michael Y. Li, Jubayer Ibn Hamid, Emily B. Fox, Noah D. Goodman
arXiv preprint, 2026
paper

GIANTS: Generative Insight Anticipation from Scientific Literature


Joy He-Yueya, Anikait Singh, Ge Gao, Michael Y. Li, Sherry Yang, Chelsea Finn, Emma Brunskill, Noah D. Goodman
arXiv preprint, 2026
paper tweet

2025

Simple, Scalable Reasoning via Iterated Summarization


Vivek Vajipey, Aditya Tadimeti, Justin Shen, Ben Prystawski, Michael Y. Li, Noah Goodman
ICML 2025 Workshop on Long-Context Foundation Models, 2025
paper

We study iterated summarization—alternating between summarizing long reasoning traces and reasoning over those summaries—as a simple, scalable way to extend test-time compute.

Automated Hypothesis Validation with Agentic Sequential Falsifications


Kexin Huang*, Ying Jin*, Ryan Li*, Michael Y. Li, Emmanuel Candès, Jure Leskovec
ICML, 2025
paper

LLMs + sequential hypothesis tests with Type-I error control

BoxingGym: Benchmarking Progress in Automated Experimental Design and Model Discovery


Kanishk Gandhi*, Michael Y. Li*, Lyle Goodyear,Louise Li, Aditi Bhaskar, Mohammed Zaman,Noah D. Goodman
NeurIPS Workshop on Scaling Environments for Agents, 2025
paper

A benchmark for LLM driven experimental design and model discovery

2024

CriticAL: Model Criticism Automation with Language Models


Michael Y. Li, Noah D. Goodman, Emily B. Fox
NeurIPS Statistical Foundations of LLMs and Foundation Models Workshop, 2024
paper

Automated Bayesian model criticism.

What Should Embeddings Embed? Transformers Represent Latent Generating Distributions


Liyi Zhang, Michael Y. Li, Thomas L. Griffiths
preprint, 2024
paper

We study the embeddings of transformers through the lens of predictive sufficient statistics.

Automated Statistical Model Discovery with Language Models


Michael Y. Li, Emily B. Fox, Noah D. Goodman
ICML, 2024
paper

We propose a language model driven automated statistical model discovery system.

2023

NAS-X: Neural Adaptive Smoothing via Twisting


Dieterich Lawson* Michael Y. Li*, Scott W. Linderman
NeurIPS, 2023
Advances in Approximate Bayesian Inference, 2023 [Oral Presentation]
paper website

Twisted Sequential Monte Carlo for inference in latent variables models.

Why think step-by-step? Reasoning emerges from the locality of experience


Ben Prystawski, Michael Y. Li, Noah D. Goodman
NeurIPS, 2023 [Oral Presentation, top 0.5%]
paper

We empirically and theoretically study when chain-of-thought reasoning emerges in large language models.

Gaussian Process Surrogate Models for Neural Networks


Michael Y. Li, Erin Grant, Thomas L. Griffiths
UAI, 2023
paper

Using Gaussian processes to approximate neural networks.

Learning to Learn Functions


Michael Y. Li, Fred Callaway, William D. Thompson, Ryan P. Adams, Thomas L. Griffiths
Cognitive Science, 2023
paper

We propose hierarchical Bayesian models of how people learn to learn functions and validate our model in behavioral experiments.


Design and source code from Jon Barron's website