2023
DOI: 10.20944/preprints202301.0219.v2
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When to Use Large Language Model: Upper Bound Analysis of BM25 Algorithms in Reading Comprehension Task

Abstract: Large language model (LLM) is a representation of a major advancement in AI, and has been used in multiple natural language processing tasks. Nevertheless, in different business scenarios, LLM requires fine-tuning by engineers to achieve satisfactory performance, and the cost of achieving target performance and fine-tuning may not match. Based on the Baidu STI dataset, we study the upper bound of the performance that classical information retrieval methods can achieve under a specific business, and compare it … Show more

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