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Reinforcement Retrieval Leveraging Fine-grained Feedback for Fact Checking News Claims with Black-Box LLM Speaker (s):  ZHANG Xuan PhD Candidate School of Computing and Information Systems Singapore Management University
| Date: Time:
Venue:
| | 3 May 2024, Friday 1:30pm - 2:00pm
Meeting room 4.4, Level 4 School of Computing and Information Systems 1, Singapore Management University, 80 Stamford Road, Singapore 178902
Please register by 2 May 2024.

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About the Talk Retrieval-augmented language models have exhibited promising performance across various areas of natural language processing (NLP), including fact-critical tasks. However, due to the black-box nature of advanced large language models (LLMs) and the non-retrieval-oriented supervision signal of specific tasks, the training of retrieval model faces significant challenges under the setting of black-box LLM. We propose an approach leveraging Fine-grained Feedback with Reinforcement Retrieval (FFRR) to enhance fact-checking on news claims by using black-box LLM. FFRR adopts a two-level strategy to gather fine-grained feedback from the LLM, which serves as a reward for optimizing the retrieval policy, by rating the retrieved documents based on the non-retrieval ground truth of the task. We evaluate our model on two public datasets for real-world news claim verification, and the results demonstrate that FFRR achieves significant improvements over strong LLM-enabled and non-LLM baselines.
This is a Pre-Conference talk for The 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024). About the Speaker ZHANG Xuan is a Ph.D. candidate in computer Science at the SMU school of Computing and Information Systems, supervised by Professor Wei GAO. Her research interests stand in factuality-enhanced rumor claim surveillance and verification.
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