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Research and Implementation of Cancer Gene Data Classification Based on Deep Learning
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作者 Yuanzhou Wei Meiyan Gao +3 位作者 Jun Xiao chixu liu Yuanhao Tian Ya He 《Journal of Software Engineering and Applications》 2023年第6期155-169,共15页
Cancer has become a cause of concern in recent years. Cancer genomics is currently a key research direction in the fields of genetic biology and biomedicine. This paper analyzes 5 different types of cancer genes, such... Cancer has become a cause of concern in recent years. Cancer genomics is currently a key research direction in the fields of genetic biology and biomedicine. This paper analyzes 5 different types of cancer genes, such as breast, kidney, colon, lung and prostate through machine learning methods, with the goal of building a robust classification model to identify each type of cancer, which will allow us to identify each type of cancer early, thereby reducing mortality. 展开更多
关键词 CANCER Healthcare SVM Random Forest Neural Network Deep Learning
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Research and Implementation of Traffic Sign Recognition Algorithm Model Based on Machine Learning
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作者 Yuanzhou Wei Meiyan Gao +3 位作者 Jun Xiao chixu liu Yuanhao Tian Ya He 《Journal of Software Engineering and Applications》 2023年第6期193-210,共18页
Traffic sign recognition is an important task in intelligent transportation systems, which can improve road safety and reduce accidents. Algorithms based on deep learning have achieved remarkable results in traffic si... Traffic sign recognition is an important task in intelligent transportation systems, which can improve road safety and reduce accidents. Algorithms based on deep learning have achieved remarkable results in traffic sign recognition in recent years. In this paper, we build traffic sign recognition algorithms based on ResNet and CNN models, respectively. We evaluate the proposed algorithm on public datasets and compare. We first use the dataset of traffic sign images from Kaggle. And then designed ResNet-based and CNN-based architectures that can effectively capture the complex features of traffic signs. Our experiments show that our ResNet-based model achieves a recognition accuracy of 99% on the test set, and our CNN-based model achieves a recognition accuracy of 98% on the test set. Our proposed approach has the potential to improve traffic safety and can be used in various intelligent transportation systems. 展开更多
关键词 CNN Traffic Sign ResNet RECOGNITION Neural Network TensorFlow
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