Neural Search Talks — Zeta Alpha cover image

ColBERT + ColBERTv2: late interaction at a reasonable inference cost

Neural Search Talks — Zeta Alpha

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Creating similarity matrix for query-document interaction

Before the BERT model, a common approach in natural language processing involved representing queries and documents as static embeddings to create a similarity matrix. This matrix was used to establish the similarity between each query term and each document term, allowing the generation of a score for each query-document pair based on the similarity matrix.

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