基于机器学习的个人信贷违约预测识别项目源码(可作为毕业设计和期末大作业).zip

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基于机器学习的个人信贷违约预测识别项目源码(可作为毕业设计和期末大作业)。 内附文档说明!!!非常完整的一个机器学习项目,新手也可自己动手,高分必看!!! 评测指标 经典预测任务:使用ROC曲线下面积(Area Under Curve, AUC)作为评价指标。AUC值越大,预测越准确。 描述性聚类-->软聚类 训练数据说明 训练数据train_public.csv 训练数据train_internet.csv 提交数据submission.csv 使用的三种模型 多层感知机,决策树(概率树),自定义模型(距离-概率转换方法)

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