LGAINov 26, 2022

Carbon Emission Prediction on the World Bank Dataset for Canada

arXiv:2211.17010v13 citationsh-index: 3
Originality Synthesis-oriented
AI Analysis

This is an incremental study applying existing machine learning methods to a new dataset for carbon emission prediction in Canada.

The paper tackled predicting future carbon emissions for Canada using World Bank data from 1960-2018, comparing the performance of Decision Tree, Linear Regression, Random Forest, and Support Vector Machine models, but did not report specific numerical results.

The continuous rise in CO2 emission into the environment is one of the most crucial issues facing the whole world. Many countries are making crucial decisions to control their carbon footprints to escape some of their catastrophic outcomes. There has been a lot of research going on to project the amount of carbon emissions in the future, which can help us to develop innovative techniques to deal with it in advance. Machine learning is one of the most advanced and efficient techniques for predicting the amount of carbon emissions from current data. This paper provides the methods for predicting carbon emissions (CO2 emissions) for the next few years. The predictions are based on data from the past 50 years. The dataset, which is used for making the prediction, is collected from World Bank datasets. This dataset contains CO2 emissions (metric tons per capita) of all the countries from 1960 to 2018. Our method consists of using machine learning techniques to take the idea of what carbon emission measures will look like in the next ten years and project them onto the dataset taken from the World Bank's data repository. The purpose of this research is to compare how different machine learning models (Decision Tree, Linear Regression, Random Forest, and Support Vector Machine) perform on a similar dataset and measure the difference between their predictions.

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