基于机器学习GRU-CNN-KNN-SVM-RF5种实现的web攻击检测系统项目源码+数据集+模型+项目说明.7z

上传者: DeepLearning_ | 上传时间: 2022-12-13 13:26:00 | 文件大小: 21.43MB | 文件类型: 7Z
基于机器学习GRU_CNN_KNN_SVM_RF5种实现的web攻击检测系统项目源码+数据集+模型+项目说明.7z 基于聚类的XSS和SQL注入检测 基于机器学习的XSS和SQL注入检测 现了基于GRU,CNN,KNN,SVM,RF共五个检测模型 检测过程:数据加载-》数据预处理(urldecode和转小写)->向量化(预训练word2Vec模型,padding补齐)->模型训练->模型预测->模型评估

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