Abstract

This paper delves into the challenges of discerning optimal answers from science-based questions generated by large language models (LLM), particularly emphasizing the intricate task of ranking. Employing the MAP@3 evaluation metric and drawing from the OpenBookQA dataset, the study explores modeling strategies and highlights the exceptional performance of the Platypus2-70B model. Equipped with a state-of-the-art text encoder, Platypus2-70B achieves an impressive score of 0.909904, setting a benchmark for excellence in future large language model competitions. The paper goes beyond a mere description of model architectures and experimental results, offering a comprehensive journey that envisions the transformative impact of large-scale language models on the landscape of natural language understanding, especially within the intricate domains of scientific exploration.

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