Airbnb Experiences Ranking Algorithm Explained - Part I

Imaad Mohamed Khan · Beginner ·📄 Research Papers Explained ·5y ago
Airbnb Experiences is one-of-a-kind offering by Airbnb where people get to experience the local culture of their hosts. But when Airbnb started the Experiences offering, they were not sure how to rank them. In this video (and upcoming videos), we talk about how they went about developing the algorithm that ranks the experiences based on experience and user data. We take a look at the different stages the Airbnb Data Science team went through as they went from offline to online modeling. If you liked the video, please do give it a thumbs up. Please don't forget to subscribe to the channel as well.
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Airbnb Experiences Ranking Algorithm Explained - Part I
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