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Application of Machine Learning Techniques for Okra Shelf Life Prediction

Iveren Blessing Iorliam, Barnabas A. Ikyo, Aamo Iorliam, Emmanuel Odeh Okube, Dekera Kenneth Kwaghtyo, Yahaya Isah Shehu

2021Journal of Data Analysis and Information Processing16 citationsDOIOpen Access PDF

Abstract

The ability of machine learning techniques to make accurate predications is increasing. The aim of this work is to apply machine learning techniques such as Support Vector Machine, Na&#239ve Bayes, Decision Tree, Logistic Regression, and K-Nearest Neighbour algorithms to predict the shelf life of Okra. Predicting the shelf life of Okra is important because Okra becomes harmful for human consumption if consumed after its shelf life. Okra parameters such as weight loss, firmness, Titrable Acid, Total Soluble Solids, Vitamin C/Ascorbic acid content, and PH were used as inputs into these machine learning techniques. Support Vector Machine, Na&#239ve Bayes and Decision Tree each accurately predicted the shelf life of Okra with accuracies of 100%. However, the Logistic Regression and K-Nearest Neighbour achieved 88.89% and 88.33% accuracies, respectively. These results showed that machine learning techniques especially Support Vector Machine, Na&#239ve Bayes and Decision Tree can be effectively applied for the prediction of Okra shelf life.

Topics & Concepts

Machine learningDecision treeNaive Bayes classifierSupport vector machineShelf lifeArtificial intelligenceLogistic regressionAscorbic acidComputer scienceMathematicsChemistryFood scienceSpectroscopy and Chemometric AnalysesFood Science and Nutritional StudiesAgricultural Practices and Plant Genetics
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