Authors :
Theophilus Bamise Ajala; Rashid Kehinde Oloko; Abiodun Richard Agboola
Volume/Issue :
Volume 10 - 2025, Issue 11 - November
Google Scholar :
https://tinyurl.com/2wkv4bsc
Scribd :
https://tinyurl.com/2cvb467m
DOI :
https://doi.org/10.38124/ijisrt/25nov409
Note : A published paper may take 4-5 working days from the publication date to appear in PlumX Metrics, Semantic Scholar, and ResearchGate.
Note : Google Scholar may take 30 to 40 days to display the article.
Abstract :
In the beverage sector, wine quality is crucial because of its high demand and competitive market. Classifying wine
quality is a challenging task because the evaluation provided by human specialists is costly and time-consuming. The aim of this
research is to develop a dashboard embedded with KNN machine learning algorithm for wine quality prediction. The user opens
the GUI application, supplies the values of the wine features, the entered information serves as the dataset for the red wine
quality prediction system, which utilizes it to accurately forecast outcomes based on the specified range. The output of the KNN
algorithm has been estimated using various evaluation metrics. with respect to precision, recall, f1-score and accuracy are
21.277%, 52.632%, 30.303%, and 85.625% respectively. Kaggle red wine dataset serves as a benchmark for the research. The
essence of this research is that the adoption of a machine learning algorithm in predicting wine quality can enhance both the
efficiency and precision of wine quality evaluations before production.
Keywords :
Quality of Wine, Red Wine, KNN, Classification, Machine Learning Algorithm.
References :
- Abernathy C. (2020). “Press Release: Frequent Wine Drinking Population in the US in Decline, Led by Younger Consumers, Though Overall Participation in Wine Category Up.” Wine Intelligence, Courtney Abernathy Retrieved from: https://Www.wineintelligence.com/Wp-Content/Uploads/2018/07/logo5.Png, 2020.
- Anggoro, D.A., & Kurnia, N.D. (2020). Comparison of Accuracy Level of Support Vector Machine (SVM) and K-Nearest Neighbors (KNN) Algorithms in Predicting Heart Disease. Volume 8. No. 5, May 2020. International Journal of Emerging Trends in Engineering Research Available Online at http://www.warse.org/IJETER/static/pdf/file/ijeter32852020.pdf. doi: https://doi.org/10.30534/ijeter/2020/32852020.
- Arshad, H., Naveed, H., Nasim, F., Ahmad, J., Ahmed, M., & Liaqat, M.S. (2024). Wine Quality Prediction Using Machine Learning.
- Aslam, M. (2022). Wine Quality Predictin by using Machine Learning Algorithms. GSJ: Volume 10, Issue 12, December 2022, Online: ISSN 2320-9186 www.globalscientificjournal.com.
- Baheti, A.S., Sawarkar, A.D., Shaikh, U.A., & Shrimankar, D.D. (2024). Alcohol Quality Analysis Using Machine Learning Regression Technique. DOI: https://doi.org/10.7759/s44389-02400227-1.
- Bansal, M., Goyal, A., & Choudhary, A. (2022). A comparative analysis of K-Nearest Neighbor, Genetic, Support Vector Machine, Decision Tree, and Long Short Term Memory algorithms in machine learning. doi: https://doi.org/10.1016/j.dajour.2022.100071.
- Basalekou, M., Tataridis, P., Georgakis, K., & Tsintonis, C. (2023). Measuring Wine Quality and Typicity. doi: https://doi.org/10.3390/beverages9020041.
- Bhardwaj, P., Tiwari, P., Olejar, K., Parr, W., & Kulasiri, D. (2022). A machine learning application in wine quality prediction. doi: https://doi.org/10.1016/j.mlwa.2022.100261.
- Butnariu, M., & Butu, A. (2020). Biotechnological Progress and Beverage Consumption.
- Cardoso, C., Schwindt, V., Coletto, M. M., D´ ıaz, M. F. & Ponzoni, I. (2022). Could qsor modelling and machine learning techniques be useful to predict wine aroma?, Food and Bioprocess Technology pp. 1–19.
- Dalianis, H. (2018). Evaluation Metrics and Evaluation. DOI: 10.1007/978-3-319-78503-5_6.
- Dong, J. (2023). Red Wine Quality Analysis based on Machine Learning Techniques.
- Gupta, Y. (2018). Selection of important features and predicting wine quality using machine learning techniques.
- Irfan, M., Nurhidayat, A.R., Wahana, A., Maylawati, D.S., & Ramdhani, M.A. (2019). Comparison of K-Nearest Neighbour and support vector machine for choosing senior high school. doi: 10.1088/1742-6596/1280/2/022026.
- Gawale, A.S. (2022). Wine Quality Prediction using Machine Learning and Hybrid Modeling.
- Gupta, Y. (2017). Selection of important features and predicting wine quality using machine learning techniques.
- Pradnya, W., Swapnil, N., Sudarshan, S., & Pravin, S. (2023). A study and analysis of wine prediction model using various machine learning techniques. DOI: https://www.doi.org/10.56726/IRJMETS38486.
- Saranya, G., Chennamsetty, S., and Rachupalli, P.K. (2024). Wine quality prediction using machine learning
In the beverage sector, wine quality is crucial because of its high demand and competitive market. Classifying wine
quality is a challenging task because the evaluation provided by human specialists is costly and time-consuming. The aim of this
research is to develop a dashboard embedded with KNN machine learning algorithm for wine quality prediction. The user opens
the GUI application, supplies the values of the wine features, the entered information serves as the dataset for the red wine
quality prediction system, which utilizes it to accurately forecast outcomes based on the specified range. The output of the KNN
algorithm has been estimated using various evaluation metrics. with respect to precision, recall, f1-score and accuracy are
21.277%, 52.632%, 30.303%, and 85.625% respectively. Kaggle red wine dataset serves as a benchmark for the research. The
essence of this research is that the adoption of a machine learning algorithm in predicting wine quality can enhance both the
efficiency and precision of wine quality evaluations before production.
Keywords :
Quality of Wine, Red Wine, KNN, Classification, Machine Learning Algorithm.