Classification Algorithms Using Ensemble Methods

Machine Learning techniques are the backbone of successful Artificial Intelligence (AI) applications as they empower AI systems to make quality predictions and provide valuable insights from data that will aid decision-making within various industries. Ensemble method is a machine learning technique...

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Published inInternational Conference on Future Internet of Things and Cloud (Online) pp. 168 - 175
Main Authors Ganiyu, Aishat, Darvishi, Iman, Addo-Quaye, Ronald, Yeboah-Ofori, Abel, Asare, Bismark Tei, Oguntoyinbo, Oluwole
Format Conference Proceeding
LanguageEnglish
Published IEEE 19.08.2024
Subjects
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ISSN2996-1017
DOI10.1109/FiCloud62933.2024.00033

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Abstract Machine Learning techniques are the backbone of successful Artificial Intelligence (AI) applications as they empower AI systems to make quality predictions and provide valuable insights from data that will aid decision-making within various industries. Ensemble method is a machine learning technique that helps to determine the suitable model for a dataset while limiting bias and variance; it is a technique used to obtain predictions by conducting maximum votes or averaging. This paper explores various Ensemble methods such as Bagging/Bootstrap Aggregation, Random Forest, and Boosting alongside their underlying algorithm Decision Tree for Regression and Classification cases. The contribution of this paper is threefold. The foremost objective is to perform a theoretical analysis of various Ensemble methods with sample pseudocodes to aid the implementation process. Secondly, we implement Ensemble method algorithms using basic Python packages such as numpy, pandas, math, matplotlib and dataset installation packages for performance evaluations. Finally, we applied the developed code to real-world datasets across various industries, including healthcare, manufacturing, and real estate. The results highlight the different parameters and their performance on the algorithms while observing the proposed Ensemble program for performance evaluation.
AbstractList Machine Learning techniques are the backbone of successful Artificial Intelligence (AI) applications as they empower AI systems to make quality predictions and provide valuable insights from data that will aid decision-making within various industries. Ensemble method is a machine learning technique that helps to determine the suitable model for a dataset while limiting bias and variance; it is a technique used to obtain predictions by conducting maximum votes or averaging. This paper explores various Ensemble methods such as Bagging/Bootstrap Aggregation, Random Forest, and Boosting alongside their underlying algorithm Decision Tree for Regression and Classification cases. The contribution of this paper is threefold. The foremost objective is to perform a theoretical analysis of various Ensemble methods with sample pseudocodes to aid the implementation process. Secondly, we implement Ensemble method algorithms using basic Python packages such as numpy, pandas, math, matplotlib and dataset installation packages for performance evaluations. Finally, we applied the developed code to real-world datasets across various industries, including healthcare, manufacturing, and real estate. The results highlight the different parameters and their performance on the algorithms while observing the proposed Ensemble program for performance evaluation.
Author Asare, Bismark Tei
Darvishi, Iman
Yeboah-Ofori, Abel
Addo-Quaye, Ronald
Ganiyu, Aishat
Oguntoyinbo, Oluwole
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  surname: Oguntoyinbo
  fullname: Oguntoyinbo, Oluwole
  email: 21516296@student.uwl.ac.uk
  organization: University of West London,School of Computing and Engineering,London,United Kingdom
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Snippet Machine Learning techniques are the backbone of successful Artificial Intelligence (AI) applications as they empower AI systems to make quality predictions and...
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StartPage 168
SubjectTerms Artificial Intelligence
Bagging
Boosting
Bootstrapping
Classification
Classification algorithms
Decision Trees
Ensemble learning
Ensemble Methods
Industries
Machine Learning
Manufacturing
Medical services
Performance evaluation
Prediction algorithms
Predictive models
Python
Radio frequency
Random Forest
Regression
Title Classification Algorithms Using Ensemble Methods
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