Leveraging Circular Economy Metrics for Data-Driven Forecasting of Solid Waste Production in Europe
Chun-Chih Chen,
Yu-Shing Chang
Abstract:This study integrates circular economy (CE) metrics with machine learning techniques, specifically XGBoost and Shapley additive explanations (SHAP), to forecast municipal solid waste (MSW) in the EU, analyzing data from 2010 to 2020. It examines key economic and consumption indicators, including GDP per capita and energy consumption, along with CE metrics such as resource productivity, the municipal waste recycling rate, and the circular material use rate. The model demonstrates high predictive accuracy, with … Show more
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