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癌症分类

发布时间:2026-03-17 14:32:47资源ID:2031248606353592322资源类型:免费

该数据集《Cancer classification》主要用于多分类任务,数据形态以图像为主,应用场景偏向医疗健康。 题目说明:This is a copy of UCI ML Breast Cancer Wisconsin (Diagnostic) datasets. https:// 任务类型:图像多分类。 建议流程:先检查类别分布与脏样本,再用迁移学习(如 ResNet/EfficientNet)建立基线。 评估建议:使用分层切分或交叉验证,优先关注 F1、Recall、AUC 等分类指标。 可用文件:cancer_classification.csv。 Diagnostic Wisconsin Breast Cancer Database.Dataset Characteristics Features are computed from a digitized image of a fine needle aspirate (FNA) of a breast mass. They describe characteristics of the cell nuclei present in the image. A few of the images can be found at http://www.cs.wisc.edu/~street/images/ Separating plane described above was obtained using Multisurface Method - Tree (MSM - T) [K. P. Bennett, "Decision Tree Construction Via Linear Programming." Proceedings of the 4th Midwest Artificial Intelligence and Cognitive Science Society, pp. 97 - 101, 1992], a classification method which uses linear programming to construct a decision tree. Relevant features were selected using an exhaustive search in the space of 1 - 4 features and 1 - 3 separating planes. The actual linear program used to obtain the separating plane in the 3 - dimensional space is that described in: [K. P. Bennett and O. L. Mangasarian: "Robust Linear Programming Discrimination of Two Linearly Inseparable Sets", Optimization Methods and Software 1, 1992, 23 - 34]. This database is also available through the UW CS ftp server: ftp ftp.cs.wisc.edu cd math - prog/cpo - dataset/machine - learn/WDBC/

癌症分类

摘要概览

该数据集《Cancer classification》主要用于多分类任务,数据形态以图像为主,应用场景偏向医疗健康。 题目说明:This is a copy of UCI ML Breast Cancer Wisconsin (Diagnostic) datasets. https://

任务类型:图像多分类。

建议流程:先检查类别分布与脏样本,再用迁移学习(如 ResNet/EfficientNet)建立基线。

评估建议:使用分层切分或交叉验证,优先关注 F1、Recall、AUC 等分类指标。

可用文件:cancer_classification.csv。

Diagnostic Wisconsin Breast Cancer Database.Dataset Characteristics Features are computed from a digitized image of a fine needle aspirate (FNA) of a breast mass. They describe characteristics of the cell nuclei present in the image. A few of the images can be found at http://www.cs.wisc.edu/~street/images/

Separating plane described above was obtained using Multisurface Method - Tree (MSM - T) [K. P. Bennett, "Decision Tree Construction Via Linear Programming." Proceedings of the 4th Midwest Artificial Intelligence and Cognitive Science Society, pp. 97 - 101, 1992], a classification method which uses linear programming to construct a decision tree.

Relevant features were selected using an exhaustive search in the space of 1 - 4 features and 1 - 3 separating planes.

The actual linear program used to obtain the separating plane in the 3 - dimensional space is that described in: [K. P. Bennett and O. L. Mangasarian: "Robust Linear Programming Discrimination of Two Linearly Inseparable Sets", Optimization Methods and Software 1, 1992, 23 - 34].

This database is also available through the UW CS ftp server: ftp ftp.cs.wisc.edu cd math - prog/cpo - dataset/machine - learn/WDBC/