56.000000,0.000000,0.000000,0.089286,0.160714,0.035714,0.000000,1.000000
31.000000,0.000000,0.000000,0.032258,0.129032,0.000000,0.000000,1.000000
30.000000,0.000000,0.000000,0.066667,0.133333,0.033333,0.000000,1.000000
75.000000,0.000000,0.000000,0.026667,0.093333,0.013333,0.000000,1.000000
61.000000,0.000000,0.000000,0.065574,0.147541,0.000000,0.000000,1.000000
112.000000,0.000000,0.508929,0.008929,0.071429,0.008929,0.000000,1.000000
28.000000,0.000000,0.000000,0.000000,0.035714,0.035714,0.000000,1.000000
64.000000,0.000000,0.015625,0.031250,0.125000,0.015625,0.000000,1.000000
62.000000,0.000000,0.000000,0.112903,0.032258,0.000000,0.000000,1.000000
29.000000,0.000000,0.000000,0.000000,0.172414,0.000000,0.034483,1.000000
43.000000,0.000000,0.000000,0.023256,0.093023,0.023256,0.000000,1.000000
107.000000,0.000000,0.000000,0.018692,0.130841,0.037383,0.000000,1.000000
48.000000,0.000000,0.000000,0.083333,0.145833,0.020833,0.000000,1.000000
109.000000,0.000000,0.165138,0.045872,0.100917,0.027523,0.000000,1.000000
22.000000,0.000000,0.090909,0.090909,0.000000,0.000000,0.000000,1.000000
142.000000,0.000000,0.197183,0.119718,0.063380,0.028169,0.000000,1.000000
26.000000,0.000000,0.153846,0.000000,0.000000,0.000000,0.000000,1.000000
124.000000,0.000000,0.225806,0.120968,0.048387,0.032258,0.000000,1.000000
52.000000,0.000000,0.307692,0.038462,0.038462,0.019231,0.000000,1.000000
52.000000,0.000000,0.000000,0.000000,0.076923,0.000000,0.000000,1.000000
39.000000,0.000000,0.000000,0.051282,0.153846,0.000000,0.000000,1.000000
68.000000,0.000000,0.014706,0.029412,0.147059,0.000000,0.000000,1.000000
49.000000,0.000000,0.000000,0.081633,0.102041,0.000000,0.000000,1.000000
55.000000,0.000000,0.000000,0.000000,0.072727,0.000000,0.000000,1.000000
40.000000,0.000000,0.000000,0.075000,0.150000,0.000000,0.000000,1.000000
109.000000,0.000000,0.027523,0.055046,0.155963,0.018349,0.000000,1.000000
93.000000,0.000000,0.118280,0.032258,0.075269,0.010753,0.000000,1.000000
52.000000,0.000000,0.173077,0.019231,0.076923,0.019231,0.000000,1.000000
55.000000,0.000000,0.163636,0.036364,0.109091,0.018182,0.000000,1.000000
45.000000,0.000000,0.000000,0.000000,0.088889,0.000000,0.000000,1.000000
50.000000,0.000000,0.080000,0.000000,0.100000,0.000000,0.000000,1.000000
115.000000,0.000000,0.034783,0.000000,0.121739,0.000000,0.000000,1.000000
40.000000,0.000000,0.000000,0.000000,0.200000,0.000000,0.000000,1.000000
27.000000,0.000000,0.000000,0.148148,0.074074,0.000000,0.000000,1.000000
58.000000,0.000000,0.000000,0.000000,0.068966,0.000000,0.000000,1.000000
64.000000,0.000000,0.000000,0.015625,0.109375,0.000000,0.000000,1.000000
54.000000,0.000000,0.000000,0.000000,0.129630,0.018519,0.000000,1.000000
58.000000,0.000000,0.000000,0.000000,0.068966,0.000000,0.000000,1.000000
81.000000,0.000000,0.000000,0.012346,0.086420,0.000000,0.000000,1.000000
51.000000,0.000000,0.078431,0.000000,0.117647,0.019608,0.000000,1.000000
48.000000,0.000000,0.000000,0.000000,0.083333,0.000000,0.000000,1.000000
52.000000,0.000000,0.076923,0.000000,0.115385,0.000000,0.000000,1.000000
43.000000,0.000000,0.000000,0.069767,0.093023,0.000000,0.000000,1.000000
108.000000,0.000000,0.037037,0.083333,0.129630,0.000000,0.000000,1.000000
284.000000,0.000000,0.028169,0.042254,0.137324,0.000000,0.000000,1.000000
9.000000,0.000000,0.000000,0.333333,0.000000,0.111111,0.000000,1.000000
27.000000,0.000000,0.074074,0.222222,0.000000,0.000000,0.000000,1.000000
14.000000,0.000000,0.000000,0.142857,0.142857,0.071429,0.000000,1.000000
6.000000,0.000000,0.333333,0.333333,0.166667,0.166667,0.000000,1.000000
17.000000,0.000000,0.470588,0.235294,0.176471,0.117647,0.000000,1.000000
12.000000,0.000000,0.583333,0.083333,0.166667,0.000000,0.000000,1.000000
83.000000,0.000000,0.409639,0.240964,0.132530,0.024096,0.000000,1.000000
0.000000,0.000000,0.409639,0.240964,0.132530,0.024096,0.000000,1.000000
17.000000,0.000000,0.058824,0.823529,0.000000,0.000000,0.058824,0.000000
81.000000,0.000000,0.061728,0.493827,0.000000,0.000000,0.086420,0.000000
38.000000,0.000000,0.052632,0.605263,0.000000,0.000000,0.078947,0.000000
495.000000,0.000000,0.367677,0.202020,0.000000,0.000000,0.018182,0.000000
18.000000,0.000000,0.055556,0.833333,0.000000,0.000000,0.055556,0.000000
12.000000,0.000000,0.083333,0.750000,0.000000,0.000000,0.083333,0.000000
22.000000,0.000000,0.318182,0.590909,0.000000,0.000000,0.090909,0.000000
318.000000,0.000000,0.075472,0.415094,0.000000,0.000000,0.106918,0.000000
108.000000,0.000000,0.083333,0.583333,0.000000,0.000000,0.083333,0.000000
35.000000,0.000000,0.057143,0.657143,0.000000,0.000000,0.085714,0.000000
48.000000,0.000000,0.083333,0.375000,0.000000,0.000000,0.083333,0.000000
94.000000,0.000000,0.265957,0.563830,0.000000,0.000000,0.106383,0.000000
39.000000,0.000000,0.025641,0.230769,0.000000,0.000000,0.025641,0.000000
33.000000,0.000000,0.151515,0.515152,0.000000,0.000000,0.090909,0.000000
591.000000,0.000000,0.115059,0.407783,0.000000,0.003384,0.101523,0.000000
273.000000,0.000000,0.073260,0.479853,0.000000,0.000000,0.128205,0.000000
964.000000,0.000000,0.060166,0.409751,0.000000,0.000000,0.099585,0.000000
358.000000,0.000000,0.083799,0.550279,0.002793,0.000000,0.106145,0.000000
524.000000,0.000000,0.188931,0.356870,0.000000,0.000000,0.177481,0.000000
119.000000,0.000000,0.294118,0.218487,0.000000,0.000000,0.159664,0.000000
没有合适的资源?快使用搜索试试~ 我知道了~
温馨提示
机器学习检测SQL注入 # ML-for-SQL-Injection 机器学习检测SQL注入 本项目是使用机器学习算法来分类SQL注入语句与正常语句: 使用了SVM,Adaboost,决策树,随机森林,逻辑斯蒂回归,KNN,贝叶斯等算法分别对SQL注入语句与正常语句进行分类。 data是收集的样本数据 file中存放的是训练好的各个模型 featurepossess.py是对原始样本进行预处理,提特征。 sqlsvm.py等py文件是训练模型 testsql是对训练好的模型进行测试,用准确率来度量模型效果。
资源推荐
资源详情
资源评论
收起资源包目录
机器学习检测SQL注入.zip (36个子文件)
sqlforestrandom.py 2KB
testsql.py 2KB
file
tree.model 1KB
knn.model 869KB
forestrandom.model 10KB
svm.model 270KB
lg.model 897B
Adaboost.model 136KB
GBDT.model 164KB
bys.model 820B
README 488B
featurepossess.py 2KB
adaboost.py 2KB
data
nor_matrix.csv 359KB
all_matrix.csv 619KB
normal_test.csv 4KB
all_matrix.txt 5KB
nortest_matrix.csv 1KB
sqltest_matrix.csv 4KB
sql_matrix.csv 357KB
sqlnew.csv 729KB
alltest_matrix.csv 4KB
normal_less.csv 1007KB
sql_test.csv 3KB
代码说明.py 540B
.idea
ML_for_SQL.iml 459B
workspace.xml 43KB
misc.xml 225B
inspectionProfiles
profiles_settings.xml 228B
modules.xml 272B
sqlkNN.py 2KB
__pycache__
featurepossess.cpython-36.pyc 2KB
sqlsvm.py 2KB
sqlbys.py 2KB
sqltree.py 2KB
sqllogistic.py 2KB
共 36 条
- 1
资源评论
博士僧小星
- 粉丝: 1934
- 资源: 5894
下载权益
C知道特权
VIP文章
课程特权
开通VIP
上传资源 快速赚钱
- 我的内容管理 展开
- 我的资源 快来上传第一个资源
- 我的收益 登录查看自己的收益
- 我的积分 登录查看自己的积分
- 我的C币 登录后查看C币余额
- 我的收藏
- 我的下载
- 下载帮助
安全验证
文档复制为VIP权益,开通VIP直接复制
信息提交成功