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In this chapter, we study the shortcomings of this approach for event data over <jats:italic>multiple entities<\/jats:italic>. We introduce <jats:italic>event knowledge graphs<\/jats:italic> as data structure that allows to naturally model behavior over multiple entities as a network of events. We explore how to construct, query, and aggregate event knowledge graphs to get insights into complex behaviors. 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