CyTA - Journal of Food (Dec 2024)
Sweetener identification using transfer learning and attention mechanism
Abstract
Accurate identification of the taste of compounds has helped in the screening and development of new sweeteners. This study proposes a deep learning model for sweetener identification based on transfer learning and attention mechanism. The Squeeze-and-Excitation (SE) attention mechanism is incorporated into the pre-trained Residual Network-50 (ResNet-50) model, resulting in SE-ResNet-50. Additionally, the Convolutional Block Attention Module (CBAM) is integrated to generate the CBAM-SEResNet-50 model for sweetener identification. This study divided the taste molecule dataset into two parts: Cross-Validation (CV) dataset and Hold-out test dataset. The effectiveness of the algorithm was verified using both the 5-fold CV and the Hold-out test methods. The experimental results demonstrate that the CBAM-SEResNet-50 model achieves an accuracy of 0.956 and an Area Under the Receiver Operating Characteristic Curve (AUROC) of 0.972 on the Hold-out test dataset. In the case of the 5-fold CV, the accuracy is 0.944 and the AUROC is 0.969.
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