Predictive Analytics for Sustainable Tourism Development: A Data-Driven Approach
Keywords:
Predictive analytics, sustainable tourism, machine learning, data science, Malaysia.Abstract
Tourism plays a significant role in Malaysia's economic and social development, with efforts increasingly aligned to Sustainable Development Goals (SDGs), particularly SDG 8 (Decent Work and Economic Growth). This project addresses the lack of predictive analytics for sustainable tourism by employing a structured methodology encompassing data collection and preparation, exploratory data analysis (EDA), descriptive and predictive analytics, and feature engineering to identify key factors influencing sustainable tourism in Malaysia. The results show trends and patterns in tourism that inform the development of robust machine learning models to forecast sustainable tourism outcomes, in which 92% and 100% accuracy were achieved with Gradient Boosting and Support Vector Machine respectively. These models aim to support data-driven decision-making and promote long-term sustainability in Malaysia's tourism industry.
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