Hotel Recommendation System

Authors: Aditi A. Mavalankar, Ajitesh Gupta, Chetan Gandotra, Rishabh Misra

arXiv admin note: text overlap with arXiv:1703.02915 by other authors
License: CC ZERO 1.0

Abstract: One of the first things to do while planning a trip is to book a good place to stay. Booking a hotel online can be an overwhelming task with thousands of hotels to choose from, for every destination. Motivated by the importance of these situations, we decided to work on the task of recommending hotels to users. We used Expedia's hotel recommendation dataset, which has a variety of features that helped us achieve a deep understanding of the process that makes a user choose certain hotels over others. The aim of this hotel recommendation task is to predict and recommend five hotel clusters to a user that he/she is more likely to book given hundred distinct clusters.

Submitted to arXiv on 20 Aug. 2019

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