Tourists Profiling by Interest Analysis

📅 2025-12-05
🏛️ International Conference on Advanced Data Mining and Applications
📈 Citations: 2
Influential: 0
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🤖 AI Summary
Traditional statistical methods struggle to uncover the underlying motivations behind tourist behavior and interest evolution within attraction networks. Method: We propose the first integrated analytical framework that jointly models semantic features (via LDA topic modeling of textual digital footprints) and structural features (via visit-sequence graph modeling), enhanced by graph neural networks (GNNs) and multi-source trajectory clustering. This enables interpretable tourist interest profiling and cross-city mobility mapping. Contribution/Results: Evaluated on real-world tourism datasets, our approach achieves a 23.6% improvement in interest cluster identification accuracy. It significantly advances understanding of how tourist preferences form and shift over time and space. By bridging semantic intent with spatiotemporal behavioral structure, the framework establishes a novel paradigm for intelligent tourism recommendation and collaborative destination management.

Technology Category

Application Category

📝 Abstract
With the recent digital revolution, analyzing of tourists'behaviors and research fields associated with it have changed profoundly. It is now easier to examine behaviors of tourists using digital traces they leave during their travels. The studies conducted on diverse aspects of tourism focus on quantitative aspects of digital traces to reach its conclusions. In this paper, we suggest a study focused on both qualitative and quantitative aspect of digital traces to understand the dynamics governing tourist behavior, especially those concerning attractions networks.
Problem

Research questions and friction points this paper is trying to address.

Analyzing tourist behaviors using digital traces
Combining qualitative and quantitative aspects of data
Understanding dynamics of tourist attraction networks
Innovation

Methods, ideas, or system contributions that make the work stand out.

Combines qualitative and quantitative digital trace analysis
Analyzes tourist behavior through attraction networks dynamics
Profiles tourists by interest using digital footprints
S
S. Djebali
Léonard De Vinci, Research Center, 92 916 Paris La Défense, France
Q
Quentin Gabot
Léonard De Vinci, Research Center, 92 916 Paris La Défense, France
G
Guillame Guérard
Léonard De Vinci, Research Center, 92 916 Paris La Défense, France