Semi-supervised Trajectory Understanding with POI Attention for End-to-End Trip Recommendation

Author:

Zhou Fan1ORCID,Wu Hantao1,Trajcevski Goce2,Khokhar Ashfaq2,Zhang Kunpeng3

Affiliation:

1. University of Electronic Science and Technology of China, Chengdu, Sichuan, China

2. Iowa State University, Ames, IA, USA

3. University of Maryland, College Park, College Park, MD, USA

Abstract

Trip planning/recommendation is an important task for a plethora of applications in urban settings (e.g., tourism, transportation, social outings), relying on services provided by Location-Based Social Networks (LBSN). To provide greater context-awareness in trajectory planning, LBSNs combine historical trajectories of users for generating various hand-crafted features—e.g., geo-tags of photos taken by tourists and textual characteristics derived from reviews. Those features are used to learn tourists’ preferences, which are then used to generate a travel plan recommendation. However, many such features are extracted based on prior knowledge or empirical analysis specific to particular datasets, rendering the corresponding solutions not to be generalizable to diverse data sources. Thus, one important question for managing mobility is how to learn an accurate tour planning model based solely on POI visits or user check-ins and without the efforts of hand-crafted feature engineering. Inspired by recent successes of deep learning in sequence learning, we develop a solution to the tour planning problem based on the semi-supervised learning paradigm. An important aspect of our solution is that it does not involve any feature engineering. Specifically, we propose the Trip Recommendation method via trajectory Encoder and Decoder—a novel end-to-end approach encoding historical trajectories into vectors, while capturing both the intrinsic characteristics of individual POIs and the transition patterns among POIs. We also incorporate historical attention mechanism in our sequence-to-sequence trip recommendation task to improve the effectiveness. Experiments conducted on multiple publicly available LBSN datasets demonstrate significantly superior performance of our method.

Funder

ONR

NSF

National Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Subject

Discrete Mathematics and Combinatorics,Geometry and Topology,Computer Science Applications,Modeling and Simulation,Information Systems,Signal Processing

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1. Regionalization-Based Collaborative Filtering: Harnessing Geographical Information in Recommenders;ACM Transactions on Spatial Algorithms and Systems;2024-05-21

2. Overcoming Catastrophic Forgetting in Continual Fine-Grained Urban Flow Inference;ACM Transactions on Spatial Algorithms and Systems;2024-04-20

3. Recommendation rules to personalize itineraries for tourists in an unfamiliar city;Applied Soft Computing;2024-01

4. A Critical Perceptual Pre-trained Model for Complex Trajectory Recovery;Proceedings of the 2nd ACM SIGSPATIAL International Workshop on Searching and Mining Large Collections of Geospatial Data;2023-11-13

5. DeepAltTrip: Top-K Alternative Itineraries for Trip Recommendation;IEEE Transactions on Knowledge and Data Engineering;2023-09-01

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