Yue Zhao
Papers on this page may belong to the following people: Yue Zhao, Yue Zhao, Yue Zhao, Yue Zhao
2026
Proceedings of the First Workshop on Structured Understanding, Retrieval, and Generation in the LLM Era (SURGeLLM 2026)
Vivek Gupta | Kaize Ding | Harsha Kokel | Yue Zhao | Amit Agarwal | Yu Wang | Michael Glass | Yu Zhang | Kavitha Srinivas | Xiusi Chen | Oktie Hassanzadeh | Qi Zhu | Shuaichen Chang | Yuan Luo
Proceedings of the First Workshop on Structured Understanding, Retrieval, and Generation in the LLM Era (SURGeLLM 2026)
Vivek Gupta | Kaize Ding | Harsha Kokel | Yue Zhao | Amit Agarwal | Yu Wang | Michael Glass | Yu Zhang | Kavitha Srinivas | Xiusi Chen | Oktie Hassanzadeh | Qi Zhu | Shuaichen Chang | Yuan Luo
Proceedings of the First Workshop on Structured Understanding, Retrieval, and Generation in the LLM Era (SURGeLLM 2026)
2024
LLM Factoscope: Uncovering LLMs’ Factual Discernment through Measuring Inner States
Jinwen He | Yujia Gong | Zijin Lin | Cheng’an Wei | Yue Zhao | Kai Chen
Findings of the Association for Computational Linguistics: ACL 2024
Jinwen He | Yujia Gong | Zijin Lin | Cheng’an Wei | Yue Zhao | Kai Chen
Findings of the Association for Computational Linguistics: ACL 2024
Large Language Models (LLMs) have revolutionized various domains with extensive knowledge and creative capabilities. However, a critical issue with LLMs is their tendency to produce outputs that diverge from factual reality. This phenomenon is particularly concerning in sensitive applications such as medical consultation and legal advice, where accuracy is paramount. Inspired by human lie detectors using physiological responses, we introduce the LLM Factoscope, a novel Siamese network-based model that leverages the inner states of LLMs for factual detection. Our investigation reveals distinguishable patterns in LLMs’ inner states when generating factual versus non-factual content. We demonstrate its effectiveness across various architectures, achieving over 96% accuracy on our custom-collected factual detection dataset. Our work opens a new avenue for utilizing LLMs’ inner states for factual detection and encourages further exploration into LLMs’ inner workings for enhanced reliability and transparency.
2022
Clues Before Answers: Generation-Enhanced Multiple-Choice QA
Zixian Huang | Ao Wu | Jiaying Zhou | Yu Gu | Yue Zhao | Gong Cheng
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies
Zixian Huang | Ao Wu | Jiaying Zhou | Yu Gu | Yue Zhao | Gong Cheng
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies
A trending paradigm for multiple-choice question answering (MCQA) is using a text-to-text framework. By unifying data in different tasks into a single text-to-text format, it trains a generative encoder-decoder model which is both powerful and universal. However, a side effect of twisting a generation target to fit the classification nature of MCQA is the under-utilization of the decoder and the knowledge that can be decoded. To exploit the generation capability and underlying knowledge of a pre-trained encoder-decoder model, in this paper, we propose a generation-enhanced MCQA model named GenMC. It generates a clue from the question and then leverages the clue to enhance a reader for MCQA. It outperforms text-to-text models on multiple MCQA datasets.
2018
Document Embedding Enhanced Event Detection with Hierarchical and Supervised Attention
Yue Zhao | Xiaolong Jin | Yuanzhuo Wang | Xueqi Cheng
Proceedings of the 56th Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)
Yue Zhao | Xiaolong Jin | Yuanzhuo Wang | Xueqi Cheng
Proceedings of the 56th Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)
Document-level information is very important for event detection even at sentence level. In this paper, we propose a novel Document Embedding Enhanced Bi-RNN model, called DEEB-RNN, to detect events in sentences. This model first learns event detection oriented embeddings of documents through a hierarchical and supervised attention based RNN, which pays word-level attention to event triggers and sentence-level attention to those sentences containing events. It then uses the learned document embedding to enhance another bidirectional RNN model to identify event triggers and their types in sentences. Through experiments on the ACE-2005 dataset, we demonstrate the effectiveness and merits of the proposed DEEB-RNN model via comparison with state-of-the-art methods.
2015
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Co-authors
- Amit Agarwal 1
- Muthu Kumar Chandrasekaran 1
- Shuaichen Chang 1
- Kai Chen 1
- Tao Chen 1
- Xiusi Chen 1
- Gong Cheng 1
- Xueqi Cheng (程学旗) 1
- Kaize Ding 1
- Michael Glass 1
- Yujia Gong 1
- Yu Gu (谷峪) 1
- Vivek Gupta 1
- Oktie Hassanzadeh 1
- Jinwen He 1
- Zixian Huang 1
- Xiaolong Jin 1
- Min-Yen Kan 1
- Harsha Kokel 1
- Zijin Lin 1
- Yuan Luo 1
- Kavitha Srinivas 1
- Yu Wang 1
- Yuanzhuo Wang 1
- Cheng’an Wei 1
- Ao Wu 1
- Yu Zhang 1
- Naijia Zheng 1
- Jiaying Zhou 1
- Qi Zhu 1