Food Sales Prediction Using MLP, RANSAC, and Bagging

Many datasets about food sales, these datasets contain different features depending on the data present. Also, the way these features are correlated differs from one dataset to another. The researchers used several artificial intelligence algorithms and applied them to food sales datasets. Despite...

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Main Authors: Hussam Mezher Merdas, Ayad Hameed Mousa
Format: Article
Language:English
Published: middle technical university 2023-12-01
Series:Journal of Techniques
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Online Access:https://journal.mtu.edu.iq/index.php/MTU/article/view/1458
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author Hussam Mezher Merdas
Ayad Hameed Mousa
author_facet Hussam Mezher Merdas
Ayad Hameed Mousa
author_sort Hussam Mezher Merdas
collection DOAJ
description Many datasets about food sales, these datasets contain different features depending on the data present. Also, the way these features are correlated differs from one dataset to another. The researchers used several artificial intelligence algorithms and applied them to food sales datasets. Despite the necessary pre-processing and cleaning of the datasets, some of the algorithms used in these studies did not give the desired results. Therefore, this study proposes a model based on two objectives, the first objective is to make a comparison between three different food sales datasets. the second objective is to apply three various Artificial Intelligence algorithms to obtain the best algorithm that gives the highest prediction accuracy with the specified dataset. Some studies used classical machine learning algorithms, some used deep learning algorithms, and others used ensemble techniques. To achieve a comprehensive comparison, one algorithm was chosen from each of the above. To measure the correlation between features used a tool available from the Seaborn library in Python. This tool is called a “Heatmap”. For comparison, used three datasets on which we performed the necessary preprocessing operations, after applying three algorithms, these algorithms are Multilayer perceptron, RANSAC, and Bagging regression. Then used several metrics to measure the accuracy of the algorithm applied to the specified dataset. Finally, identified the best dataset that gives excellent prediction results with these algorithms. The results showed that the first dataset gave ideal accuracy by using the Bagging regression algorithm, unlike the second dataset with medium correlation and the third dataset with weak correlation. This study lays the foundation for subsequent studies and saves them time in terms of choosing the datasets.
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spelling doaj-art-f0254a5f3ade4c12a643a8d61c39b0f52025-01-19T10:59:01Zengmiddle technical universityJournal of Techniques1818-653X2708-83832023-12-015410.51173/jt.v5i4.1458Food Sales Prediction Using MLP, RANSAC, and BaggingHussam Mezher Merdas0Ayad Hameed Mousa1College of Computer Science and Information Technology, University of Kerbala, Karbala, IraqCollege of Computer Science and Information Technology, University of Kerbala, Karbala, Iraq Many datasets about food sales, these datasets contain different features depending on the data present. Also, the way these features are correlated differs from one dataset to another. The researchers used several artificial intelligence algorithms and applied them to food sales datasets. Despite the necessary pre-processing and cleaning of the datasets, some of the algorithms used in these studies did not give the desired results. Therefore, this study proposes a model based on two objectives, the first objective is to make a comparison between three different food sales datasets. the second objective is to apply three various Artificial Intelligence algorithms to obtain the best algorithm that gives the highest prediction accuracy with the specified dataset. Some studies used classical machine learning algorithms, some used deep learning algorithms, and others used ensemble techniques. To achieve a comprehensive comparison, one algorithm was chosen from each of the above. To measure the correlation between features used a tool available from the Seaborn library in Python. This tool is called a “Heatmap”. For comparison, used three datasets on which we performed the necessary preprocessing operations, after applying three algorithms, these algorithms are Multilayer perceptron, RANSAC, and Bagging regression. Then used several metrics to measure the accuracy of the algorithm applied to the specified dataset. Finally, identified the best dataset that gives excellent prediction results with these algorithms. The results showed that the first dataset gave ideal accuracy by using the Bagging regression algorithm, unlike the second dataset with medium correlation and the third dataset with weak correlation. This study lays the foundation for subsequent studies and saves them time in terms of choosing the datasets. https://journal.mtu.edu.iq/index.php/MTU/article/view/1458Machine Learning AlgorithmsSeaborn LibraryMultilayer PerceptronRANSACBagging Regression
spellingShingle Hussam Mezher Merdas
Ayad Hameed Mousa
Food Sales Prediction Using MLP, RANSAC, and Bagging
Journal of Techniques
Machine Learning Algorithms
Seaborn Library
Multilayer Perceptron
RANSAC
Bagging Regression
title Food Sales Prediction Using MLP, RANSAC, and Bagging
title_full Food Sales Prediction Using MLP, RANSAC, and Bagging
title_fullStr Food Sales Prediction Using MLP, RANSAC, and Bagging
title_full_unstemmed Food Sales Prediction Using MLP, RANSAC, and Bagging
title_short Food Sales Prediction Using MLP, RANSAC, and Bagging
title_sort food sales prediction using mlp ransac and bagging
topic Machine Learning Algorithms
Seaborn Library
Multilayer Perceptron
RANSAC
Bagging Regression
url https://journal.mtu.edu.iq/index.php/MTU/article/view/1458
work_keys_str_mv AT hussammezhermerdas foodsalespredictionusingmlpransacandbagging
AT ayadhameedmousa foodsalespredictionusingmlpransacandbagging