cs.AI updates on arXiv.org 07月08日 12:34
Multicollinearity Resolution Based on Machine Learning: A Case Study of Carbon Emissions
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本文提出将DBSCAN聚类与Elastic Net回归模型结合,用于解决碳排放等复杂问题,通过对中国46个行业能源消耗数据(2000-2019)进行分析,识别出16个类别,并评估各类别排放特征及驱动因素。

arXiv:2507.02912v1 Announce Type: cross Abstract: This study proposes an analytical framework that integrates DBSCAN clustering with the Elastic Net regression model to address multifactorial problems characterized by structural complexity and multicollinearity, exemplified by carbon emissions analysis. DBSCAN is employed for unsupervised learning to objectively cluster features, while the Elastic Net is utilized for high-dimensional feature selection and complexity control. The Elastic Net is specifically chosen for its ability to balance feature selection and regularization by combining L1 (lasso) and L2 (ridge) penalties, making it particularly suited for datasets with correlated predictors. Applying this framework to energy consumption data from 46 industries in China (2000-2019) resulted in the identification of 16 categories. Emission characteristics and drivers were quantitatively assessed for each category, demonstrating the framework's capacity to identify primary emission sources and provide actionable insights. This research underscores the global applicability of the framework for analyzing complex regional challenges, such as carbon emissions, and highlights qualitative features that humans find meaningful may not be accurate for the model.

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DBSCAN Elastic Net 碳排放 数据分析 聚类
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