Author: Olaf Kopp
Reading time: 8 Minutes

Modifying search result ranking based on a temporal element of user feedback

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The patent addresses a method for modifying search result rankings based on a temporal element of user feedback. It suggests a dynamic approach to adjusting search results based on how users interact with the results over time. This includes obtaining feedback related to the quality of electronic documents and adjusting their relevance in search results accordingly.

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