2021
DOI: 10.48550/arxiv.2109.00968
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Self-supervised Representation Learning for Trip Recommendation

Abstract: Trip recommendation is a significant and engaging locationbased service that can help new tourists make more customized travel plans. It often attempts to suggest a sequence of points of interest (POIs) for a user who requests a personalized travel demand. Conventional methods either leverage the heuristic algorithms (e.g., dynamic programming) or statistical analysis (e.g., Markov models) to search or rank a POI sequence. These procedures may fail to capture the diversity of human needs and transitional regul… Show more

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