Author: Olaf Kopp
Reading time: 6 Minutes

Systems and methods for measuring the semantic relevance of keywords

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This patent describes a system designed to enhance keyword relevance measurements by using a semantic relationship graph. The system receives a seed keyword and generates additional keywords based on their semantic relationships to the seed keyword. It evaluates the relevance of these keywords by creating a semantic distance graph, computing affinity scores, and categorizing keywords based on their affinity to the seed keyword.

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