Ranking Manipulation for Conversational Search Engines
Samuel Pfrommer, Yatong Bai, Tanmay Gautam, Somayeh Sojoudi
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Ranking Manipulation for Conversational Search Engines presents a ranking (information retrieval) approach for computer science.
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Evidence disclosure
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Utility signals: depth 65/100, grounding 58/100, status medium.
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Research context
4
Citations
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Tasks
Computer science, Search engine, Physical Sciences
Methods
Ranking (information retrieval), Information retrieval
Domains
Artificial intelligence, Natural language processing
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