Siyuan Guo
2026
On the Emergence and Test-Time Use of Structural Information in Large Language Models
Michelle Chao Chen | Moritz Miller | Bernhard Schölkopf | Siyuan Guo
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Michelle Chao Chen | Moritz Miller | Bernhard Schölkopf | Siyuan Guo
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Learning structural information from observational data is central to producing new knowledge outside the training corpus. This holds for mechanistic understanding in scientific discovery as well as flexible test-time compositional generation. We thus study how language models learn abstract structures and utilize the learnt structural information at test-time. To ensure a controlled setup, we design a natural language dataset based on linguistic structural transformations. We empirically show that the emergence of learning structural information correlates with complex reasoning tasks, and that the ability to perform test-time compositional generation remains limited.
2024
CausalCite: A Causal Formulation of Paper Citations
Ishan Agrawal | Zhijing Jin | Ehsan Mokhtarian | Siyuan Guo | Yuen Chen | Mrinmaya Sachan | Bernhard Schölkopf
Findings of the Association for Computational Linguistics: ACL 2024
Ishan Agrawal | Zhijing Jin | Ehsan Mokhtarian | Siyuan Guo | Yuen Chen | Mrinmaya Sachan | Bernhard Schölkopf
Findings of the Association for Computational Linguistics: ACL 2024
Citation count of a paper is a commonly used proxy for evaluating the significance of a paper in the scientific community. Yet citation measures are widely criticized for failing to accurately reflect the true impact of a paper. Thus, we propose CausalCite, a new way to measure the significance of a paper by assessing the causal impact of the paper on its follow-up papers. CausalCite is based on a novel causal inference method, TextMatch, which adapts the traditional matching framework to high-dimensional text embeddings. TextMatch encodes each paper using text embeddings from large language models (LLMs), extracts similar samples by cosine similarity, and synthesizes a counterfactual sample as the weighted average of similar papers according to their similarity values. We demonstrate the effectiveness of CausalCite on various criteria, such as high correlation with paper impact as reported by scientific experts on a previous dataset of 1K papers, (test-of-time) awards for past papers, and its stability across various subfields of AI. We also provide a set of findings that can serve as suggested ways for future researchers to use our metric for a better understanding of the quality of a paper. Our code is available at https://github.com/causalNLP/causal-cite.