Survey Of Hallucination In Natural Language Generation

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Survey on Natural Language Generation

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A Survey on Hallucination in Large Language Models Principles

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While Large Language Models (Llms) Have Shown Remarkable Effectiveness In Various Nlp Tasks, They Are Still Prone To Issues Such As Hallucination, Unfaithful.

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