author_facet Zhang, Xinghua
Sun, Yongjie
Sun, Yongxin
Zhang, Xinghua
Sun, Yongjie
Sun, Yongxin
author Zhang, Xinghua
Sun, Yongjie
Sun, Yongxin
spellingShingle Zhang, Xinghua
Sun, Yongjie
Sun, Yongxin
Computational Intelligence and Neuroscience
Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
General Mathematics
General Medicine
General Neuroscience
General Computer Science
author_sort zhang, xinghua
spelling Zhang, Xinghua Sun, Yongjie Sun, Yongxin 1687-5273 1687-5265 Hindawi Limited General Mathematics General Medicine General Neuroscience General Computer Science http://dx.doi.org/10.1155/2022/6901184 <jats:p>Food safety is a major concern that has an impact on the national economy and people’s lives. The food industry has grown in quality and innovation in tandem with the rapid development of the economy and society. The emergence of new food technologies, as well as changes in dietary habits, has increased public concern about food safety. With the emergence of various counterfeit and substandard products, food quality and safety testing have become even more important. Traditional testing methods rely on sensory analysis and physical and chemical analysis. This approach is subjective and poorly adapted to the general public. It requires a high level of technical operation and is difficult to carry out on a large scale. To address this situation, this paper proposes an intelligent approach to food safety quality testing. The core idea is, first, to use sensors to collect data on the various components of the sample to be tested. Second, the random forest (RF) model used in this paper is trained. Third, the trained model is used to classify and identify the test samples. Based on the classification results, a conclusion is drawn as to whether the food product is a variant or a counterfeit. The advantage of this study is that the training model used is a weighted RF algorithm based on mutual information. The correlation between any two decision trees is calculated using mutual information, and for the more correlated decision trees, only the one with the highest evaluation accuracy is retained to form a new RF, and the evaluation accuracy is converted into voting weights, resulting in an RF model with less redundancy and higher evaluation accuracy. The experimental results show that the method used in this paper can successfully identify spoiled or counterfeit products and has good practicality.</jats:p> Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection Computational Intelligence and Neuroscience
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title Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_unstemmed Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_full Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_fullStr Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_full_unstemmed Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_short Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_sort application of intelligent taste analysis based on random forest algorithm in food quality inspection
topic General Mathematics
General Medicine
General Neuroscience
General Computer Science
url http://dx.doi.org/10.1155/2022/6901184
publishDate 2022
physical 1-9
description <jats:p>Food safety is a major concern that has an impact on the national economy and people’s lives. The food industry has grown in quality and innovation in tandem with the rapid development of the economy and society. The emergence of new food technologies, as well as changes in dietary habits, has increased public concern about food safety. With the emergence of various counterfeit and substandard products, food quality and safety testing have become even more important. Traditional testing methods rely on sensory analysis and physical and chemical analysis. This approach is subjective and poorly adapted to the general public. It requires a high level of technical operation and is difficult to carry out on a large scale. To address this situation, this paper proposes an intelligent approach to food safety quality testing. The core idea is, first, to use sensors to collect data on the various components of the sample to be tested. Second, the random forest (RF) model used in this paper is trained. Third, the trained model is used to classify and identify the test samples. Based on the classification results, a conclusion is drawn as to whether the food product is a variant or a counterfeit. The advantage of this study is that the training model used is a weighted RF algorithm based on mutual information. The correlation between any two decision trees is calculated using mutual information, and for the more correlated decision trees, only the one with the highest evaluation accuracy is retained to form a new RF, and the evaluation accuracy is converted into voting weights, resulting in an RF model with less redundancy and higher evaluation accuracy. The experimental results show that the method used in this paper can successfully identify spoiled or counterfeit products and has good practicality.</jats:p>
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author Zhang, Xinghua, Sun, Yongjie, Sun, Yongxin
author_facet Zhang, Xinghua, Sun, Yongjie, Sun, Yongxin, Zhang, Xinghua, Sun, Yongjie, Sun, Yongxin
author_sort zhang, xinghua
container_start_page 1
container_title Computational Intelligence and Neuroscience
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description <jats:p>Food safety is a major concern that has an impact on the national economy and people’s lives. The food industry has grown in quality and innovation in tandem with the rapid development of the economy and society. The emergence of new food technologies, as well as changes in dietary habits, has increased public concern about food safety. With the emergence of various counterfeit and substandard products, food quality and safety testing have become even more important. Traditional testing methods rely on sensory analysis and physical and chemical analysis. This approach is subjective and poorly adapted to the general public. It requires a high level of technical operation and is difficult to carry out on a large scale. To address this situation, this paper proposes an intelligent approach to food safety quality testing. The core idea is, first, to use sensors to collect data on the various components of the sample to be tested. Second, the random forest (RF) model used in this paper is trained. Third, the trained model is used to classify and identify the test samples. Based on the classification results, a conclusion is drawn as to whether the food product is a variant or a counterfeit. The advantage of this study is that the training model used is a weighted RF algorithm based on mutual information. The correlation between any two decision trees is calculated using mutual information, and for the more correlated decision trees, only the one with the highest evaluation accuracy is retained to form a new RF, and the evaluation accuracy is converted into voting weights, resulting in an RF model with less redundancy and higher evaluation accuracy. The experimental results show that the method used in this paper can successfully identify spoiled or counterfeit products and has good practicality.</jats:p>
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spelling Zhang, Xinghua Sun, Yongjie Sun, Yongxin 1687-5273 1687-5265 Hindawi Limited General Mathematics General Medicine General Neuroscience General Computer Science http://dx.doi.org/10.1155/2022/6901184 <jats:p>Food safety is a major concern that has an impact on the national economy and people’s lives. The food industry has grown in quality and innovation in tandem with the rapid development of the economy and society. The emergence of new food technologies, as well as changes in dietary habits, has increased public concern about food safety. With the emergence of various counterfeit and substandard products, food quality and safety testing have become even more important. Traditional testing methods rely on sensory analysis and physical and chemical analysis. This approach is subjective and poorly adapted to the general public. It requires a high level of technical operation and is difficult to carry out on a large scale. To address this situation, this paper proposes an intelligent approach to food safety quality testing. The core idea is, first, to use sensors to collect data on the various components of the sample to be tested. Second, the random forest (RF) model used in this paper is trained. Third, the trained model is used to classify and identify the test samples. Based on the classification results, a conclusion is drawn as to whether the food product is a variant or a counterfeit. The advantage of this study is that the training model used is a weighted RF algorithm based on mutual information. The correlation between any two decision trees is calculated using mutual information, and for the more correlated decision trees, only the one with the highest evaluation accuracy is retained to form a new RF, and the evaluation accuracy is converted into voting weights, resulting in an RF model with less redundancy and higher evaluation accuracy. The experimental results show that the method used in this paper can successfully identify spoiled or counterfeit products and has good practicality.</jats:p> Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection Computational Intelligence and Neuroscience
spellingShingle Zhang, Xinghua, Sun, Yongjie, Sun, Yongxin, Computational Intelligence and Neuroscience, Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection, General Mathematics, General Medicine, General Neuroscience, General Computer Science
title Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_full Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_fullStr Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_full_unstemmed Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_short Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
title_sort application of intelligent taste analysis based on random forest algorithm in food quality inspection
title_unstemmed Application of Intelligent Taste Analysis Based on Random Forest Algorithm in Food Quality Inspection
topic General Mathematics, General Medicine, General Neuroscience, General Computer Science
url http://dx.doi.org/10.1155/2022/6901184