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Improving Supplier Evaluation Model using Ensemble Method-Machine Learning for Food Industry

Muhammad Asrol, Sofyan Wahyudi, Suharjito Suharjito, Christian Harito, Ditdit Nugeraha Utama, Muhammad Syafrudin

2023Procedia Computer Science12 citationsDOIOpen Access PDF

Abstract

Supplier evaluation has a crucial role in maintaining efficiency in the food industry supply chain. Machine learning approaches can be employed to formulate models aimed at analyzing and evaluating supplier performance. Previous research has successfully designed decision tree and neural network models for assessing suppliers in the food industry with accuracies of 84.2% and 92.8% separately. Recognizing the opportunity to improve the model's performance, this study aims to advancing the machine learning models accuracy for analyzing and evaluating suppliers in the food industry. Two main models are proposed to enhance model accuracy: ensemble methods and support vector machine. This research has successfully designed a supplier evaluation model and demonstrated that the ensemble method - gradient boosting model outperforms other ensemble methods and support vector machine which is achieved a accuracy of 93.6% on a cross-validation dataset. The development of a dashboard is required to implement the supplier evaluation model using machine learning, facilitating decision-makers in evaluating and controlling supplier performance.

Topics & Concepts

Computer scienceBoosting (machine learning)Machine learningGradient boostingSupport vector machineDecision treeEnsemble learningArtificial intelligenceArtificial neural networkSupply chainEnsemble forecastingRandom forestLawPolitical scienceFood Supply Chain TraceabilitySupply Chain Resilience and Risk Management