4.5 Article

Efficient itinerary recommendation via personalized POI selection and pruning

Journal

KNOWLEDGE AND INFORMATION SYSTEMS
Volume 64, Issue 4, Pages 963-993

Publisher

SPRINGER LONDON LTD
DOI: 10.1007/s10115-021-01648-3

Keywords

Itinerary recommendation; Personalization; Points of interest; Queuing time; Search pruning; Monte Carlo tree search

Funding

  1. CAUL

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Personalized itinerary recommendation is a widely studied area, but existing solutions have some issues. To address these issues, this research proposes an adaptive Monte Carlo tree search (MCTS)-based reinforcement learning algorithm called EffiTourRec. The algorithm considers multiple factors when selecting POIs and reduces non-optimal and duplicated itinerary generation through an efficient search pruning technique.
Personalized itinerary recommendation has garnered wide research interests for their ubiquitous applications. Recommending personalized itineraries is complex because of the large number of points of interest (POI) to consider in order to construct an itinerary based on visitors' interest and preference, time budget and uncertain queuing time. Previous studies typically aim to plan itineraries that maximize POI popularity, visitors' interest and minimize queuing time. However, existing solutions may not reflect visitor preferences because when creating itineraries, they prefer to recommend POIs with short prior visiting periods. These recommendations can conflict with real-life scenarios as visitors typically spend less time at POIs that they do not enjoy, thus leading to the inclusion of unsuitable POIs. Moreover, constructing itineraries based on selected POIs is a challenging and time-consuming process. Existing approaches involve searching through a large number of non-optimal, duplicate itineraries that are time-consuming to review and generate. To address these issues, we propose an adaptive Monte Carlo tree search (MCTS)-based reinforcement learning algorithm EffiTourRec using an effective POI selection strategy by giving preference to POIs with long visiting times and short queuing times along with high POI popularity and visitor interest. In addition, to reduce non-optimal and duplicated itineraries generation, we propose an efficient MCTS search pruning technique to explore a smaller, more promising portion of solution space. Experiment results in real theme park datasets show clear advantages of our proposed method over baselines, where our method outperforms the current state-of-the-art by 20.89 to 52.32% in precision, 8.36 to 21.35% in F1-score and 40.00 to 67.64% in execution time.

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