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Combination of Diverse Ranking Models for Personalized Expedia Hotel Searches

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arxiv 1311.7679 v1 pith:XTZIBI3B submitted 2013-11-29 cs.LG

Combination of Diverse Ranking Models for Personalized Expedia Hotel Searches

classification cs.LG
keywords hotellearningmodelmodelsrankingteamaccordingafterwards
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The ICDM Challenge 2013 is to apply machine learning to the problem of hotel ranking, aiming to maximize purchases according to given hotel characteristics, location attractiveness of hotels, user's aggregated purchase history and competitive online travel agency information for each potential hotel choice. This paper describes the solution of team "binghsu & MLRush & BrickMover". We conduct simple feature engineering work and train different models by each individual team member. Afterwards, we use listwise ensemble method to combine each model's output. Besides describing effective model and features, we will discuss about the lessons we learned while using deep learning in this competition.

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