A genetic-based pairwise trip planner recommender system.

J Big Data

Computer Science Department, University of York, York, UK.

Published: May 2021

AI Article Synopsis

  • The growth of internet users presents a significant marketing opportunity for businesses, particularly in e-tourism and e-services.
  • A personalized recommender system is proposed that utilizes a combination of Genetic Algorithms and pairwise preference elicitation to improve user experience.
  • A study involving 24 participants was conducted to evaluate this system, using a dataset of 201 points of interest (POIs) to assess its effectiveness.

Article Abstract

The massive growth of internet users nowadays can be a big opportunity for the businesses to promote their services. This opportunity is not only for e-commerce, but also for other e-services, such as e-tourism. In this paper, we propose an approach of personalized recommender system with pairwise preference elicitation for the e-tourism domain area. We used a combination of Genetic Agorithm with pairwise user preference elicitation approach. The advantages of pairwise preference elicitation method, as opposed to the pointwise method, have been shown in many studies, including to reduce incosistency and confusion of a rating number. We also performed a user evaluation study by inviting 24 participants to examine the proposed system and publish the POIs dataset which contains 201 attractions used in this study.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8164892PMC
http://dx.doi.org/10.1186/s40537-021-00470-6DOI Listing

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