Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food

The sensory evaluation of food quality using a machine learning approach provides a means of measuring the quality of food products. Thus, this type of evaluation may assist in improving the composition of foods and encouraging the development of new food products. However, human intervention has be...

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Main Authors: Nhat-Vinh Lu, Roengchai Tansuchat, Takaya Yuizono, Van-Nam Huynh
Format: Article
Language:English
Published: Atlantis Press 2020-06-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/125941259/view
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spelling doaj-b6292d9ce65542d5bf95954413a1712b2020-11-25T03:02:24ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832020-06-0113110.2991/ijcis.d.200525.001Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of FoodNhat-Vinh LuRoengchai TansuchatTakaya YuizonoVan-Nam HuynhThe sensory evaluation of food quality using a machine learning approach provides a means of measuring the quality of food products. Thus, this type of evaluation may assist in improving the composition of foods and encouraging the development of new food products. However, human intervention has been often required in order to obtain labeled data for training machine learning models used in the evaluation process, which is time-consuming and costly. This paper aims at incorporating active learning into machine learning techniques to overcome this obstacle for sensory evaluation task. In particular, three algorithms are developed for sensory evaluation of wine quality. The first algorithm called Uncertainty Model (UCM) employs an uncertainty sampling approach, while the second algorithm called Combined Model (CBM) combines support vector machine with Density-Based Spatial Clustering of Applications with Noise (DBSCAN) algorithm, and both of which are aimed at selecting the most informative samples from a large dataset for labeling during the training process so as to enhance the performance of the classification models. The third algorithm called Noisy Model (NSM) is then proposed to deal with the noisy labels during the learning process. The empirical results showed that these algorithms can achieve higher accuracies in this classification task. Furthermore, they can be applied to optimize food ingredients and the consumer acceptance in real markets.https://www.atlantis-press.com/article/125941259/viewSensory evaluation of foodActive learningMachine learning
collection DOAJ
language English
format Article
sources DOAJ
author Nhat-Vinh Lu
Roengchai Tansuchat
Takaya Yuizono
Van-Nam Huynh
spellingShingle Nhat-Vinh Lu
Roengchai Tansuchat
Takaya Yuizono
Van-Nam Huynh
Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
International Journal of Computational Intelligence Systems
Sensory evaluation of food
Active learning
Machine learning
author_facet Nhat-Vinh Lu
Roengchai Tansuchat
Takaya Yuizono
Van-Nam Huynh
author_sort Nhat-Vinh Lu
title Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
title_short Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
title_full Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
title_fullStr Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
title_full_unstemmed Incorporating Active Learning into Machine Learning Techniques for Sensory Evaluation of Food
title_sort incorporating active learning into machine learning techniques for sensory evaluation of food
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2020-06-01
description The sensory evaluation of food quality using a machine learning approach provides a means of measuring the quality of food products. Thus, this type of evaluation may assist in improving the composition of foods and encouraging the development of new food products. However, human intervention has been often required in order to obtain labeled data for training machine learning models used in the evaluation process, which is time-consuming and costly. This paper aims at incorporating active learning into machine learning techniques to overcome this obstacle for sensory evaluation task. In particular, three algorithms are developed for sensory evaluation of wine quality. The first algorithm called Uncertainty Model (UCM) employs an uncertainty sampling approach, while the second algorithm called Combined Model (CBM) combines support vector machine with Density-Based Spatial Clustering of Applications with Noise (DBSCAN) algorithm, and both of which are aimed at selecting the most informative samples from a large dataset for labeling during the training process so as to enhance the performance of the classification models. The third algorithm called Noisy Model (NSM) is then proposed to deal with the noisy labels during the learning process. The empirical results showed that these algorithms can achieve higher accuracies in this classification task. Furthermore, they can be applied to optimize food ingredients and the consumer acceptance in real markets.
topic Sensory evaluation of food
Active learning
Machine learning
url https://www.atlantis-press.com/article/125941259/view
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