Yuxuan Hu


2025

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LM-Searcher: Cross-domain Neural Architecture Search with LLMs via Unified Numerical Encoding
Yuxuan Hu | Jihao Liu | Ke Wang | Jinliang Zheng | Weikang Shi | Manyuan Zhang | Qi Dou | Rui Liu | Aojun Zhou | Hongsheng Li
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Recent progress in Large Language Models (LLMs) has opened new avenues for solving complex optimization problems, including Neural Architecture Search (NAS). However, existing LLM-driven NAS approaches rely heavily on prompt engineering and domain-specific tuning, limiting their practicality and scalability across diverse tasks. In this work, we propose LM-Searcher, a novel framework that leverages LLMs for cross-domain neural architecture optimization without the need for extensive domain-specific adaptation. Central to our approach is NCode, a universal numerical string representation for neural architectures, which enables cross-domain architecture encoding and search. We also reformulate the NAS problem as a ranking task, training LLMs to select high-performing architectures from candidate pools using instruction-tuning samples derived from a novel pruning-based subspace sampling strategy. Our curated dataset, encompassing a wide range of architecture-performance pairs, encourages robust and transferable learning. Comprehensive experiments demonstrate that LM-Searcher achieves competitive performance in both in-domain (e.g., CNNs for image classification) and out-of-domain (e.g., LoRA configurations for segmentation and generation) tasks, establishing a new paradigm for flexible and generalizable LLM-based architecture search.

2024

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SP3: Enhancing Structured Pruning via PCA Projection
Yuxuan Hu | Jing Zhang | Zhe Zhao | Chen Zhao | Xiaodong Chen | Cuiping Li | Hong Chen
Findings of the Association for Computational Linguistics: ACL 2024

2023

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A Generation-based Deductive Method for Math Word Problems
Yuxuan Hu | Jing Zhang | Haoyang Li | Cuiping Li | Hong Chen
Proceedings of the 2023 Conference on Empirical Methods in Natural Language Processing

Math word problems (MWP) involving advanced operators such as linear equation solver cannot be easily tackled by earlier MWP methods, because the existing generation methods suffer from repeated sub-expression generation and deductive methods are restricted to dealing with binary operations. This paper propose a new multivariate directed acyclic graph (mDAG) as an alternative to the generation methods’ binary expression tree or the deductive methods’ binary directed acyclic graph. Then to produce the topological ordering of mDAG, we propose a generation-based deductive (GeDe) model, which equips a generation model with a re-encoder to keep the deductive property but avoid the expensive enumeration of the deductive methods. GeDe performs well on math problems with many operators on the widely used benchmarks as well as solving multivariate operators on our own CMWPA benchmark. Our code is available at https://github.com/hyx1999/GeDe

2008

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A Cascaded Syntactic and Semantic Dependency Parsing System
Wanxiang Che | Zhenghua Li | Yuxuan Hu | Yongqiang Li | Bing Qin | Ting Liu | Sheng Li
CoNLL 2008: Proceedings of the Twelfth Conference on Computational Natural Language Learning

2007

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HIT-IR-WSD: A WSD System for English Lexical Sample Task
Yuhang Guo | Wanxiang Che | Yuxuan Hu | Wei Zhang | Ting Liu
Proceedings of the Fourth International Workshop on Semantic Evaluations (SemEval-2007)

2005

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Semantic Role Labeling System Using Maximum Entropy Classifier
Ting Liu | Wanxiang Che | Sheng Li | Yuxuan Hu | Huaijun Liu
Proceedings of the Ninth Conference on Computational Natural Language Learning (CoNLL-2005)