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#31 David Tippet on BM25 As The Workhorse Of Search; Vectors Are Its Visionary Cousin | Search

How AI Is Built

CHAPTER

Understanding BM25: Evolution and Applications

This chapter explores the BM25 scoring function, detailing its advancements over the TF-IDF model, including term saturation and document length normalization. It discusses practical implications for document retrieval across various fields and highlights the significance of system tuning and user expectations in optimizing search results. Additionally, the chapter examines adaptations of the BM25 algorithm and its integration with other search approaches, underscoring the importance of user search behavior in enhancing retrieval effectiveness.

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