迁移学习的CNN集成学习方法综述

Yudha Islami Sulistya, Elsi Titasari Br Bangun, Dyah Aruming Tyas
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引用次数: 0

摘要

本研究通过重点介绍综述研究、数据集、预训练模型、迁移学习、集成学习和表现等部分,对CNN的迁移学习集成学习方法进行了综述。研究结果表明,整体学习、迁移学习、整体学习和迁移学习呈逐年增长的趋势。2022年,本研究将对35篇与该主题相关的论文进行综述。一些数据集包含从数据集名称、总数据点、数据集拆分、目标数据集可用性和类型分类开始的明显信息。ResNet-50、VGG-16、InceptionV3和VGG-19在大多数论文中被用作预训练模型和迁移学习过程。50篇(90.1%)论文使用了集成学习,5篇(9.1%)论文没有使用集成学习。综述的论文总结了几种性能测量,包括准确性、精密度、召回率、f1分数、敏感性、特异性、训练准确性、验证准确性、测试准确性、训练损失、验证损失、测试损失、训练时间以及AUC、DSC。在最后一节中,49篇论文使用所提出的模型产生了最佳的模型性能,另外6篇论文使用DenseNet、DeQueezeNet、Extended Yager模型、InceptionV3和ResNet-152。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN Ensemble Learning Method for Transfer learning: A Review
This study provides a review of CNN's ensemble learning method for transfer learning by highlighting sections such as review studies, datasets, pre-trained models, transfer learning, ensemble learning, and performance. The results indicate that the trend of ensemble learning, transfer learning ensemble, and transfer learning is growing every year. In 2022, there will be 35 papers reviewed related to this topic in this study. Some datasets contain apparent information starting from the dataset name, total data points, dataset splitting, target dataset availability, and type classification. ResNet-50, VGG-16, InceptionV3, and VGG-19 are used in most papers as pre-trained models and transfer learning processes. 50 (90.1%) papers use ensemble learning, and 5 (9.1%) do without ensemble learning. The reviewed paper summarizes several performance measurements, including accuracy, precision, recall, f1-score, sensitivity, specificity, training accuracy, validation accuracy, test accuracy, training losses, validation losses, test losses, training time, and AUC, DSC. In the last section, 49 papers produce the best model performance using the proposed model, and 6 other papers use DenseNet, DeQueezeNet, Extended Yager Model, InceptionV3, and ResNet-152.
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