Multilingual Tourism Evaluation (MEA + CBTRS)
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MCRS: Multilingual Context and Role-playing Strategy for Tourism Evaluation
Overview
MCRS (Multilingual Context and Role-playing Strategy) is a novel framework designed to enhance intelligent evaluation of cross-border tourism services through multilingual context modeling and role-playing generation.By integrating advanced Multimodal Encoder Architecture (MEA) and the Cross-Border Tourism Role-Playing Strategy (CBTRS), the system simulates real-world interactions between tourists and service providers, enabling culturally adaptive and linguistically aware service assessments.
MCRS aims to improve accuracy, cultural inclusivity, and contextual sensitivity, setting a new standard for intelligent tourism service evaluation.
✨ Features
Multilingual Context Modeling
Supports multiple languages simultaneously.
Uses context vectors and historical dialogue aggregation for multilingual interaction analysis.
Captures linguistic nuances and cultural subtleties in tourist-service interactions.
Role-Playing Generation
Simulates realistic dialogues between tourists and service providers.
Dynamically assigns roles (e.g., tourist, guide, hotel staff) to create culturally grounded scenarios.
Enables adaptive, scenario-based evaluation of service quality.
Multimodal Encoder Architecture (MEA)
Combines linguistic, cultural, and contextual data to model multilingual interactions.
Employs CSRM, Mamba, and EFL layers for high-fidelity feature representation (see Fig. 1, p.7).
Adaptive feedback loop enables real-time updates based on new interaction data.
Cross-Border Tourism Role-Playing Strategy (CBTRS)
Leverages graphical propagation and adaptive learning to generate dynamic scenarios (see Fig. 3, p.9).
Evaluates service quality using scenario-based scoring functions.
Integrates reinforcement learning with multilingual processing for continuous improvement.
📊 Datasets
Dataset
Description
Purpose
Multilingual Tourism Interaction Dataset
Multilingual dialogues between tourists and service providers
Context modeling
Cross-Border Service Evaluation Dataset
Reviews and feedback from international tourists
Service quality scoring
Role-Playing Strategy Tourism Dataset
Simulated interactions under role-playing conditions
Scenario-based training
Intelligent Contextual Modeling Dataset
Contextual information such as time, location, and cultural events
Adaptive evaluation
🚀 Usage
Predicted service evaluation scores
Role-playing simulation results
Contextual insights (linguistic & cultural)
Scenario-based recommendation
🧪 Applications
Real-time multilingual tourism service evaluation
Cultural context-aware travel assistance
Role-playing based training for tourism staff
Adaptive dialogue modeling for multilingual customer support
🧩 Model Components
Multimodal Encoder Architecture (MEA) — multilingual and contextual modeling (Fig. 1, p.7)
Cross-Border Tourism Role-Playing Strategy (CBTRS) — scenario generation & evaluation (Fig. 3, p.9)
Adaptive Feedback Mechanism — real-time updates based on tourist interactions (Eq. 8, p.8)
Graphical Propagation Layer — scenario refinement with reinforcement learning (Eq. 10, p.10).
📈 Performance
Dataset
Accuracy
Precision
Recall
AUC
Multilingual Tourism Interaction
89.45
88.36
87.78
88.00
Cross-Border Service Evaluation
91.12
90.03
89.46
89.68
Role-Playing Strategy Tourism
89.12
88.01
87.34
87.67
Intelligent Contextual Modeling
91.23
90.12
89.45
89.78
MCRS consistently outperforms baseline models such as ResNet, ViT, I3D, BLIP, and DenseNet on multiple datasets (see Tables 1–2, p.13).
🧭 Future Work
Enhance cultural nuance modeling for more complex scenarios
Expand multilingual support to underrepresented languages
Integrate external tourism knowledge graphs for richer context
Optimize deployment for real-time evaluation in mobile environments
📜 License
This project is licensed under the MIT License.
🙏 Acknowledgments
This research was conducted at Guangxi Minzu University.Authors: Lin Gao (first author), Wenxuan Zhu (corresponding author).This work integrates multilingual NLP, role-playing simulation, and tourism evaluation to improve service adaptability and cross-cultural understanding.
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Zenodo创建时间:
2025-10-16



