Authors
Julia Kiseleva, Melanie JI Mueller, Lucas Bernardi, Chad Davis, Ivan Kovacek, Mats Stafseng Einarsen, Jaap Kamps, Alexander Tuzhilin, Djoerd Hiemstra
Publication date
2015
Conference
SIGIR 2015
Pages
1097-1100
Publisher
ACM
Description
Recommendation based on user preferences is a common task for e-commerce websites. New recommendation algorithms are often evaluated by offline comparison to baseline algorithms such as recommending random or the most popular items. Here, we investigate how these algorithms themselves perform and compare to the operational production system in large scale online experiments in a real-world application. Specifically, we focus on recommending travel destinations at Booking.com, a major online travel site, to users searching for their preferred vacation activities. To build ranking models we use multi-criteria rating data provided by previous users after their stay at a destination. We implement three methods and compare them to the current baseline in Booking.com: random, most popular, and Naive Bayes. Our general conclusion is that, in an online A/B test with live users, our Naive-Bayes based …
Total citations
2015201620172018201920202021202220232024132471621
Scholar articles
J Kiseleva, MJI Mueller, L Bernardi, C Davis, I Kovacek… - Proceedings of the 38th International ACM SIGIR …, 2015