Mining the Stars: Learning Quality Ratings with User-facing Explanations for Vacation Rentals

01/26/2021
by   Anastasiia Kornilova, et al.
0

Online Travel Platforms are virtual two-sided marketplaces where guests search for accommodations and accommodation providers list their properties such as hotels and vacation rentals. The large majority of hotels are rated by official institutions with a number of stars indicating the quality of service they provide. It is a simple and effective mechanism that contributes to match supply with demand by helping guests to find options meeting their criteria and accommodation suppliers to market their product to the right segment directly impacting the number of transactions on the platform. Unfortunately, no similar rating system exists for the large majority of vacation rentals, making it difficult for guests to search and compare options and hard for vacation rentals suppliers to market their product effectively. In this work we describe a machine learned quality rating system for vacation rentals. The problem is challenging, mainly due to explainability requirements and the lack of ground truth. We present techniques to address these challenges and empirical evidence of their efficacy. Our system was successfully deployed and validated through Online Controlled Experiments performed in Booking. com, a large Online Travel Platform, and running for more than one year, impacting more than a million accommodations and millions of guests.

READ FULL TEXT
research
07/10/2022

Parametric Empirical Bayes for Predicting Quality in Rating Systems

User-solicited ratings systems in online marketplaces suffer from a cold...
research
02/09/2018

Learning to Match

Booking.com is a virtual two-sided marketplace where guests and accommod...
research
10/30/2018

Designing Informative Rating Systems for Online Platforms: Evidence from Two Experiments

Platforms critically rely on rating systems to learn the quality of mark...
research
03/30/2017

FairJudge: Trustworthy User Prediction in Rating Platforms

Rating platforms enable large-scale collection of user opinion about ite...
research
08/05/2021

Itinerary-aware Personalized Deep Matching at Fliggy

Matching items for a user from a travel item pool of large cardinality h...
research
11/25/2014

HCRS: A hybrid clothes recommender system based on user ratings and product features

Nowadays, online clothes-selling business has become popular and extreme...

Please sign up or login with your details

Forgot password? Click here to reset