SubmissionNumber#=%=#237 FinalPaperTitle#=%=#MARiA at SemEval 2024 Task-6: Hallucination Detection Through LLMs, MNLI, and Cosine similarity ShortPaperTitle#=%=# NumberOfPages#=%=#5 CopyrightSigned#=%=#MohammadHossein Rezaei JobTitle#==# Organization#==# Abstract#==#The advent of large language models (LLMs) has revolutionized Natural Language Generation (NLG), offering unmatched text generation capabilities. However, this progress introduces significant challenges, notably hallucinations—semantically incorrect yet fluent outputs. This phenomenon undermines content reliability, as traditional detection systems focus more on fluency than accuracy, posing a risk of misinformation spread. Our study addresses these issues by proposing a unified strategy for detecting hallucinations in neural model-generated text, focusing on the SHROOM task in SemEval 2024. We employ diverse methodologies to identify output divergence from the source content. We utilized Sentence Transformers to measure cosine similarity between source-hypothesis and source-target embeddings, experimented with omitting source content in the cosine similarity computations, and Leveragied LLMs' In-Context Learning with detailed task prompts as our methodologies. The varying performance of our different approaches across the subtasks underscores the complexity of Natural Language Understanding tasks, highlighting the importance of addressing the nuances of semantic correctness in the era of advanced language models. Author{1}{Firstname}#=%=#Reza Author{1}{Lastname}#=%=#Sanayei Author{1}{Username}#=%=#rsanayei Author{1}{Email}#=%=#rsanayei@arizona.edu Author{1}{Affiliation}#=%=#University of Arizona Author{2}{Firstname}#=%=#Abhyuday Author{2}{Lastname}#=%=#Singh Author{2}{Username}#=%=#abhyudaysingh Author{2}{Email}#=%=#abhyudaysingh@arizona.edu Author{2}{Affiliation}#=%=#University of Arizona Author{3}{Firstname}#=%=#MohammadHossein Author{3}{Lastname}#=%=#Rezaei Author{3}{Username}#=%=#mhrezaei Author{3}{Email}#=%=#mhrezaei@arizona.edu Author{3}{Affiliation}#=%=#The University of Arizona Author{4}{Firstname}#=%=#Steven Author{4}{Lastname}#=%=#Bethard Author{4}{Username}#=%=#steven.bethard Author{4}{Email}#=%=#bethard@arizona.edu Author{4}{Affiliation}#=%=#University of Arizona ========== èéáğö