2021 3rd International Conference on Advances in Computing, Communication Control and Networking (ICAC3N) 2021
DOI: 10.1109/icac3n53548.2021.9725492
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A SVM Based Wine Superiority Estimatation Using Advanced ML Techniques

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Cited by 2 publications
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“…In contrast to this study, researchers have found that SVM method is the most suitable technique for predicting the quality of red wine from data generated over 1000 years [50], but in another study in the same field where different methods were compared, the Gradient Boosting Regressor (GBR) and its variants surpassed all other models [26,51]. Atasoy and Er [52] found that when the quality classification of red and white wine is needed, the most successful method was the random forest algorithm with a 99.5% accuracy, which is the same as Patkar and Balaganesh [53], who found more than 90% accuracy in the wine quality prediction.…”
Section: Turbidity Prediction Model With Regression Learnercontrasting
confidence: 64%
“…In contrast to this study, researchers have found that SVM method is the most suitable technique for predicting the quality of red wine from data generated over 1000 years [50], but in another study in the same field where different methods were compared, the Gradient Boosting Regressor (GBR) and its variants surpassed all other models [26,51]. Atasoy and Er [52] found that when the quality classification of red and white wine is needed, the most successful method was the random forest algorithm with a 99.5% accuracy, which is the same as Patkar and Balaganesh [53], who found more than 90% accuracy in the wine quality prediction.…”
Section: Turbidity Prediction Model With Regression Learnercontrasting
confidence: 64%