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Michael
Bendersky
Research Director
Google Deepmind
Michael is currently leading several research groups focusing on using large language models for retrieval augmentation, ranking and query/document understanding. Michael is broadly interested in practical applications at the intersection of information retrieval, natural language processing, and machine learning. Specifically, he has worked on research problems in a variety of domains, including search (web. social media, news, email & enterprise), recommendation systems, document clustering, web crawling, query intent classification, information extraction, plagiarism detection, e-commerce and search advertising.
30 April 2025 14:40 - 15:00
Beyond yes and no: Improving zero-shot pointwise LLM rankers via scoring fine-grained relevance labels
Zero-shot text rankers powered by recent LLMs achieve remarkable ranking performance by simply prompting. Existing prompts for pointwise LLM rankers mostly ask the model to choose from binary relevance labels like "Yes" and "No". However, the lack of intermediate relevance label options may cause the LLM to provide noisy or biased answers for documents that are partially relevant to the query. Join Michael as he breaks down his research on the matter.