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Noah Goodman | Stanford HAI

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peopleFaculty

Noah Goodman

Associate Professor of Psychology, of Computer Science, and by courtesy, of Linguistics

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External Bio
Latest Work
pyvene: A Library for Understanding and Improving PyTorch Models via Interventions
Aryaman Arora, Zheng Wang, Atticus Geiger, Jing Huang, Zhengxuan Wu, Christopher Potts, Noah Goodman
Jun 01
Research
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Interventions on model-internal states are fundamental operations in many areas of AI, including model editing, steering, robustness, and interpretability. To facilitate such research, we introduce pyvene, an open-source Python library that supports customizable interventions on a range of different PyTorch modules. pyvene supports complex intervention schemes with an intuitive configuration format, and its interventions can be static or include trainable parameters. We show how pyvene provides a unified and extensible framework for performing interventions on neural models and sharing the intervened upon models with others. We illustrate the power of the library via interpretability analyses using causal abstraction and knowledge localization. We publish our library through Python Package Index (PyPI) and provide code, documentation, and tutorials at ‘https://github.com/stanfordnlp/pyvene‘.

Understanding Social Reasoning in Language Models with Language Models
Jan-Philipp Fränken, Kanishk Gandhi, Noah Goodman, Tobias Gerstenberg
Sep 25
Research
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As Large Language Models (LLMs) become increasingly integrated into our everyday lives, understanding their ability to comprehend human mental states becomes critical for ensuring effective interactions. However, despite the recent attempts to assess the Theory-of-Mind (ToM) reasoning capabilities of LLMs, the degree to which these models can align with human ToM remains a nuanced topic of exploration. This is primarily due to two distinct challenges: (1) the presence of inconsistent results from previous evaluations, and (2) concerns surrounding the validity of existing evaluation methodologies. To address these challenges, we present a novel framework for procedurally generating evaluations with LLMs by populating causal templates. Using our framework, we create a new social reasoning benchmark (BigToM) for LLMs which consists of 25 controls and 5,000 model-written evaluations. We find that human participants rate the quality of our benchmark higher than previous crowd-sourced evaluations and comparable to expert-written evaluations. Using BigToM, we evaluate the social reasoning capabilities of a variety of LLMs and compare model performances with human performance. Our results suggest that GPT4 has ToM capabilities that mirror human inference patterns, though less reliable, while other LLMs struggle.

Generative Grading: Near Human-level Accuracy for Automated Feedback on Richly Structured Problems
Ali Malik, Jinpeng Song, Madison Coots, Mike Wu, Vrinda Vasavada, Christopher Piech, John Mitchell, Noah Goodman
Dec 20
Research
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Generative Grading: Near Human-level Accuracy for Automated Feedback on Richly Structured Problems

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