Personalized and situation-aware multimodal route recommendations: the FAVOUR algorithm
Paolo Campigotto, Christian Rudloff, Maximilian Leodolter, Dietmar, Bauer

TL;DR
The paper presents FAVOUR, a Bayesian learning-based algorithm that personalizes and makes route recommendations situation-aware by incorporating user preferences and context, improving over existing methods.
Contribution
Introduction of the FAVOUR algorithm that personalizes multimodal route recommendations using Bayesian learning and initial user profiling.
Findings
FAVOUR outperforms alternative algorithms in recommendation quality.
Mass preference prior improves prediction accuracy.
Personalization enhances route recommendation relevance.
Abstract
Route choice in multimodal networks shows a considerable variation between different individuals as well as the current situational context. Personalization of recommendation algorithms are already common in many areas, e.g., online retail. However, most online routing applications still provide shortest distance or shortest travel-time routes only, neglecting individual preferences as well as the current situation. Both aspects are of particular importance in a multimodal setting as attractivity of some transportation modes such as biking crucially depends on personal characteristics and exogenous factors like the weather. This paper introduces the FAVourite rOUte Recommendation (FAVOUR) approach to provide personalized, situation-aware route proposals based on three steps: first, at the initialization stage, the user provides limited information (home location, work place, mobility…
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