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Discover how a new multi-LLM negotiation framework enhances sentiment analysis by using generator-discriminator collaboration to improve accuracy
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A multi-LLM negotiation framework for sentiment analysis uses a generator-discriminator model to iteratively refine decisions, overcoming single-turn limitations. This approach improves performance across various benchmarks, including Twitter and movie reviews.