Recommendation systems that understand the underlying essence of hobbies—not just surface tags—so they can suggest hobbies similar to your current interests based on what makes them mentally or physically satisfying. You might discover that rock climbing and chess both appeal to you for the same reason: problem-solving under constraints.
Semantic similarity is a technique that allows AI recommendation engines to compare the underlying meaning of hobbies, activities, and user preferences rather than relying on exact keyword matches or rigid category tags. By representing hobbies as mathematical vectors in a shared meaning space, the AI can recognize that someone who enjoys watercolor painting might also love hand lettering or pottery even if those words never appear in their profile.
This approach produces hobby and activity recommendations that feel genuinely intuitive and personally relevant rather than generic. For leisure platforms, semantic similarity enables discovery of new passions that align with what a person already loves, expanding their recreational world in ways a simple tag-based system could never achieve.
Peri can explain this concept, give practical examples, help you decide whether it applies to your situation, or recommend a journey if appropriate.
Explore related journeys or tell Peri what you're working through.