Zhuoer Wang
2026
WildFeedback: Aligning LLMs With In-situ User Interactions And Feedback
Taiwei Shi | Zhuoer Wang | Longqi Yang | Ying-Chun Lin | Zexue He | Mengting Wan | Pei Zhou | Sujay Kumar Jauhar | Sihao Chen | Shan Xia | Hongfei Zhang | Jieyu Zhao | Xiaofeng Xu | Xia Song | Jennifer Neville
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Taiwei Shi | Zhuoer Wang | Longqi Yang | Ying-Chun Lin | Zexue He | Mengting Wan | Pei Zhou | Sujay Kumar Jauhar | Sihao Chen | Shan Xia | Hongfei Zhang | Jieyu Zhao | Xiaofeng Xu | Xia Song | Jennifer Neville
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
As large language models (LLMs) continue to advance, aligning these models with human preferences has emerged as a critical challenge. Traditional alignment methods, relying on human or LLM annotated datasets, are limited by their resource-intensive nature, inherent subjectivity, misalignment with real-world user preferences, and the risk of feedback loops that amplify model biases. To overcome these limitations, we introduce WildFeedback, a novel framework that leverages in-situ user feedback during conversations with LLMs to create preference datasets automatically. Given a corpus of multi-turn user-LLM conversation, WildFeedback identifies and classifies user feedback to LLM responses between conversation turns. The user feedback is then used to create examples of preferred and dispreferred responses according to users’ preference. Our experiments demonstrate that LLMs fine-tuned on WildFeedback dataset exhibit significantly improved alignment with user preferences, as evidenced by both traditional benchmarks and our proposed checklist-guided evaluation. By incorporating in-situ feedback from actual users, WildFeedback addresses the scalability, subjectivity, and bias challenges that plague existing approaches, marking a significant step toward developing LLMs that are more responsive to the diverse and evolving needs of their users.
2025
DHP Benchmark: Are LLMs Good NLG Evaluators?
Yicheng Wang | Jiayi Yuan | Yu-Neng Chuang | Zhuoer Wang | Yingchi Liu | Mark Cusick | Param Kulkarni | Zhengping Ji | Yasser Ibrahim | Xia Hu
Findings of the Association for Computational Linguistics: NAACL 2025
Yicheng Wang | Jiayi Yuan | Yu-Neng Chuang | Zhuoer Wang | Yingchi Liu | Mark Cusick | Param Kulkarni | Zhengping Ji | Yasser Ibrahim | Xia Hu
Findings of the Association for Computational Linguistics: NAACL 2025
Large Language Models (LLMs) are increasingly serving as evaluators in Natural Language Generation (NLG) tasks; this is often referred to as “LLM-as-a-judge” paradigm. However, the capabilities of LLMs in evaluating NLG quality remain underexplored. Current studies depend on human assessments and simple metrics that fail to capture the discernment of LLMs across diverse NLG tasks. To address this gap, we propose the Discernment of Hierarchical Perturbation (DHP) benchmarking framework, which provides quantitative discernment scores for LLMs. This framework leverages hierarchically perturbed text data and statistical tests to systematically measure the NLG evaluation capabilities of LLMs. We re-established six evaluation datasets for this benchmark, covering four NLG tasks: Summarization, Story Completion, Question Answering, and Translation. Our comprehensive benchmarking of five major LLM families provides critical insight into their strengths and limitations as NLG evaluators. Our dataset is available at https://huggingface.co/datasets/YCWANGVINCE/DHP_Benchmark.
2024
FANTAstic SEquences and Where to Find Them: Faithful and Efficient API Call Generation through State-tracked Constrained Decoding and Reranking
Zhuoer Wang | Leonardo F. R. Ribeiro | Alexandros Papangelis | Rohan Mukherjee | Tzu-Yen Wang | Xinyan Zhao | Arijit Biswas | James Caverlee | Angeliki Metallinou
Findings of the Association for Computational Linguistics: EMNLP 2024
Zhuoer Wang | Leonardo F. R. Ribeiro | Alexandros Papangelis | Rohan Mukherjee | Tzu-Yen Wang | Xinyan Zhao | Arijit Biswas | James Caverlee | Angeliki Metallinou
Findings of the Association for Computational Linguistics: EMNLP 2024
API call generation is the cornerstone of large language models’ tool-using ability that provides access to the larger world. However, existing supervised and in-context learning approaches suffer from high training costs, poor data efficiency, and generated API calls that can be unfaithful to the API documentation and the user’s request. To address these limitations, we propose an output-side optimization approach called FANTASE. Two of the unique contributions of FANTASE are its State-Tracked Constrained Decoding (SCD) and Reranking components. SCD dynamically incorporates appropriate API constraints in the form of Token Search Trie for efficient and guaranteed generation faithfulness with respect to the API documentation. The Reranking component efficiently brings in the supervised signal by leveraging a lightweight model as the discriminator to rerank the beam-searched candidate generations of the large language model. We demonstrate the superior performance of FANTASE in API call generation accuracy, inference efficiency, and context efficiency with DSTC8 and API Bank datasets.
2023
Co2PT: Mitigating Bias in Pre-trained Language Models through Counterfactual Contrastive Prompt Tuning
Xiangjue Dong | Ziwei Zhu | Zhuoer Wang | Maria Teleki | James Caverlee
Findings of the Association for Computational Linguistics: EMNLP 2023
Xiangjue Dong | Ziwei Zhu | Zhuoer Wang | Maria Teleki | James Caverlee
Findings of the Association for Computational Linguistics: EMNLP 2023
Pre-trained Language Models are widely used in many important real-world applications. However, recent studies show that these models can encode social biases from large pre-training corpora and even amplify biases in downstream applications. To address this challenge, we propose Co2PT, an efficient and effective *debias-while-prompt tuning* method for mitigating biases via counterfactual contrastive prompt tuning on downstream tasks. Our experiments conducted on three extrinsic bias benchmarks demonstrate the effectiveness of Co2PT on bias mitigation during the prompt tuning process and its adaptability to existing upstream debiased language models. These findings indicate the strength of Co2PT and provide promising avenues for further enhancement in bias mitigation on downstream tasks.
Faithful Low-Resource Data-to-Text Generation through Cycle Training
Zhuoer Wang | Marcus Collins | Nikhita Vedula | Simone Filice | Shervin Malmasi | Oleg Rokhlenko
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zhuoer Wang | Marcus Collins | Nikhita Vedula | Simone Filice | Shervin Malmasi | Oleg Rokhlenko
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Methods to generate text from structured data have advanced significantly in recent years, primarily due to fine-tuning of pre-trained language models on large datasets. However, such models can fail to produce output faithful to the input data, particularly on out-of-domain data. Sufficient annotated data is often not available for specific domains, leading us to seek an unsupervised approach to improve the faithfulness of output text. Since the problem is fundamentally one of consistency between the representations of the structured data and text, we evaluate the effectiveness of cycle training in this work. Cycle training uses two models which are inverses of each other: one that generates text from structured data, and one which generates the structured data from natural language text. We show that cycle training, when initialized with a small amount of supervised data (100 samples in our case), achieves nearly the same performance as fully supervised approaches for the data-to-text generation task on the WebNLG, E2E, WTQ, and WSQL datasets. We perform extensive empirical analysis with automated evaluation metrics and a newly designed human evaluation schema to reveal different cycle training strategies’ effectiveness of reducing various types of generation errors. Our code is publicly available at https://github.com/Edillower/CycleNLG.
Unsupervised Candidate Answer Extraction through Differentiable Masker-Reconstructor Model
Zhuoer Wang | Yicheng Wang | Ziwei Zhu | James Caverlee
Findings of the Association for Computational Linguistics: EMNLP 2023
Zhuoer Wang | Yicheng Wang | Ziwei Zhu | James Caverlee
Findings of the Association for Computational Linguistics: EMNLP 2023
Question generation is a widely used data augmentation approach with extensive applications, and extracting qualified candidate answers from context passages is a critical step for most question generation systems. However, existing methods for candidate answer extraction are reliant on linguistic rules or annotated data that face the partial annotation issue and challenges in generalization. To overcome these limitations, we propose a novel unsupervised candidate answer extraction approach that leverages the inherent structure of context passages through a Differentiable Masker-Reconstructor (DMR) Model with the enforcement of self-consistency for picking up salient information tokens. We curated two datasets with exhaustively-annotated answers and benchmark a comprehensive set of supervised and unsupervised candidate answer extraction methods. We demonstrate the effectiveness of the DMR model by showing its performance is superior among unsupervised methods and comparable to supervised methods.
2020
PARADE: A New Dataset for Paraphrase Identification Requiring Computer Science Domain Knowledge
Yun He | Zhuoer Wang | Yin Zhang | Ruihong Huang | James Caverlee
Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP)
Yun He | Zhuoer Wang | Yin Zhang | Ruihong Huang | James Caverlee
Proceedings of the 2020 Conference on Empirical Methods in Natural Language Processing (EMNLP)
We present a new benchmark dataset called PARADE for paraphrase identification that requires specialized domain knowledge. PARADE contains paraphrases that overlap very little at the lexical and syntactic level but are semantically equivalent based on computer science domain knowledge, as well as non-paraphrases that overlap greatly at the lexical and syntactic level but are not semantically equivalent based on this domain knowledge. Experiments show that both state-of-the-art neural models and non-expert human annotators have poor performance on PARADE. For example, BERT after fine-tuning achieves an F1 score of 0.709, which is much lower than its performance on other paraphrase identification datasets. PARADE can serve as a resource for researchers interested in testing models that incorporate domain knowledge. We make our data and code freely available.
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- James Caverlee 4
- Yicheng Wang 2
- Ziwei Zhu 2
- Arijit Biswas 1
- Sihao Chen 1
- Yu-Neng Chuang 1
- Marcus Collins 1
- Mark Cusick 1
- Xiangjue Dong 1
- Simone Filice 1
- Yun He 1
- Zexue He 1
- Xia Hu 1
- Ruihong Huang 1
- Yasser Ibrahim 1
- Sujay Kumar Jauhar 1
- Zhengping Ji 1
- Param Kulkarni 1
- Ying-Chun Lin 1
- Yingchi Liu 1
- Shervin Malmasi 1
- Angeliki Metallinou 1
- Rohan Mukherjee 1
- Jennifer Neville 1
- Alexandros Papangelis 1
- Leonardo F. R. Ribeiro 1
- Oleg Rokhlenko 1
- Taiwei Shi 1
- Xia Song 1
- Maria Teleki 1
- Nikhita Vedula 1
- Mengting Wan 1
- Tzu-Yen Wang 1
- Shan Xia 1
- Xiaofeng Xu 1
- Longqi Yang 1
- Jiayi Yuan 1
- Yin Zhang 1
- Hongfei Zhang 1
- Xinyan Zhao 1
- Jieyu Zhao 1
- Pei Zhou 1