Patanjali Bhamidipati


2024

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Maha Bhaashya at SemEval-2024 Task 6: Zero-Shot Multi-task Hallucination Detection
Patanjali Bhamidipati | Advaith Malladi | Manish Shrivastava | Radhika Mamidi
Proceedings of the 18th International Workshop on Semantic Evaluation (SemEval-2024)

In recent studies, the extensive utilization oflarge language models has underscored the importance of robust evaluation methodologiesfor assessing text generation quality and relevance to specific tasks. This has revealeda prevalent issue known as hallucination, anemergent condition in the model where generated text lacks faithfulness to the source anddeviates from the evaluation criteria. In thisstudy, we formally define hallucination and propose a framework for its quantitative detectionin a zero-shot setting, leveraging our definitionand the assumption that model outputs entailtask and sample specific inputs. In detectinghallucinations, our solution achieves an accuracy of 0.78 in a model-aware setting and 0.61in a model-agnostic setting. Notably, our solution maintains computational efficiency, requiring far less computational resources than other SOTA approaches, aligning with the trendtowards lightweight and compressed models.