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Cost-Sensitive Extreme Gradient Boosting for Imbalanced Classification of Breast Cancer Diagnosis

机译:成本敏感的极端梯度促进乳腺癌诊断的不平衡分类

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The clinical information can enhance the doctors for predicting and diagnosing the diseases also making the right decisions. Breast cancer is the most dangerous disease, early diagnosis can improve a chance of survival and can support clinical treatment. Detecting breast cancer takes a lot of time and it is hard to classification. However, the problem of the classification occurs when there is an unequal distribution of classes the dataset. This is caused by the low performance in the traditional machine learning models. For this reason, this work proposed the cost-sensitive XGBoost model, which is an improved version of the XGBoost model in conjunction with cost-sensitive learning. The models were applied to classify the four breast cancer datasets that contained the imbalanced data. In the experiment, this work determined the best parameters on each dataset by the hyperparameters optimization technique before configuring the models. The results indicated that the cost-sensitive XGBoost model had been skillful, and could improve classification accuracy in four datasets. In addition, this work evaluated the model performance by accuracy, ROC AUC, and k- Fold cross-validation to ensure that the new models is accurate.
机译:临床信息可以增强医生的疾病预测和诊断能力,并做出正确的决定。乳腺癌是最危险的疾病,早期诊断可以提高生存机会并可以支持临床治疗。检测乳腺癌需要很多时间,并且很难分类。但是,当数据集的类分布不均时,就会发生分类问题。这是由于传统机器学习模型的性能低下引起的。因此,这项工作提出了对成本敏感的XGBoost模型,它是对XGBoost模型的改进版本,并结合了对成本敏感的学习方法。应用该模型对包含不平衡数据的四个乳腺癌数据集进行分类。在实验中,这项工作在配置模型之前通过超参数优化技术确定了每个数据集上的最佳参数。结果表明,成本敏感的XGBoost模型具有较高的技巧,可以提高四个数据集的分类准确性。此外,这项工作还通过准确性,ROC AUC和k-Fold交叉验证对模型性能进行了评估,以确保新模型的准确性。

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