Search patent of the week: ED2LM: Encoder-Decoder to Language Model for Faster Document Re-ranking Inference

SEO Research Suite - The SEO and LLMO thought leading podcast - A podcast by Olaf Kopp

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This podcast episode focusses on a Google research paper introduces ED2LM (Encoder-Decoder to Language Model), a new approach to document re-ranking.ED2LM aims to improve inference efficiency by converting an encoder-decoder model into a decoder-only language model without compromising ranking quality.The paper compares ED2LM with established models such as BM25 and ColBERT in terms of performance, cost and interpretability.In addition, it examines the importance of user engagement data and how it can be used to fine-tune ED2LM to improve personalization and relevance.The paper also discusses metrics and signals that influence re-ranking, including explicit and implicit user signals, content characteristics and contextual factors.The goal is to optimize search results by integrating user behavior into the re-ranking process.