A Comprehensive Approach to Carbon Dioxide Emission Analysis in High Human Development Index Countries using Statistical and Machine Learning Techniques
Hamed Khosravi, Ahmed Shoyeb Raihan, Farzana Islam, Ashish Nimbarte,, Imtiaz Ahmed

TL;DR
This paper combines statistical and machine learning techniques to analyze, predict, and classify CO2 emission patterns in high HDI countries, aiming to inform effective climate policies.
Contribution
It introduces a dual-phase analytical framework using statistical models and ML methods to improve CO2 emission trend prediction and classification in high HDI countries.
Findings
Enhanced accuracy of emission trend forecasts.
Identification of key emission determinants.
Countries grouped by similar emission patterns.
Abstract
Reducing Carbon dioxide (CO2) emission is vital at both global and national levels, given their significant role in exacerbating climate change. CO2 emission, stemming from a variety of industrial and economic activities, are major contributors to the greenhouse effect and global warming, posing substantial obstacles in addressing climate issues. It's imperative to forecast CO2 emission trends and classify countries based on their emission patterns to effectively mitigate worldwide carbon emission. This paper presents an in-depth comparative study on the determinants of CO2 emission in twenty countries with high Human Development Index (HDI), exploring factors related to economy, environment, energy use, and renewable resources over a span of 25 years. The study unfolds in two distinct phases: initially, statistical techniques such as Ordinary Least Squares (OLS), fixed effects, and…
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Taxonomy
TopicsEnergy, Environment, and Transportation Policies
