Research Article

Differentially Private Kernel Support Vector Machines Based on the Exponential and Laplace Hybrid Mechanism

Table 3

The performance of the DPKSVMEL algorithm on dataset Breast.

kɛSimilarityAccuracyAUC
MeanStdMaxMinMeanStdMaxMin

20.10.596.710.5997.2295.460.99430.00070.99550.9930
0.696.650.5197.2295.310.99460.00030.99520.9943
0.796.880.3097.2296.340.99440.00070.99530.9926
0.897.040.3197.5196.490.99390.00110.99500.9910
0.997.260.2097.5196.780.99350.00090.99480.9923

20.50.596.790.2897.3696.340.99480.00030.99520.9943
0.696.490.4597.0795.750.99450.00040.99520.9939
0.797.100.2897.5196.630.99440.00030.99480.9938
0.897.230.2197.3696.780.99360.00070.99480.9926
0.997.310.1997.5196.930.99370.00080.99510.9923

210.596.540.5097.3695.900.99510.00030.99540.9946
0.696.530.4997.2295.900.99500.00040.99540.9944
0.797.120.2597.3696.630.99470.00040.99500.9939
0.897.420.1797.6697.220.99400.00070.99480.9926
0.997.390.1897.6697.070.99310.00080.99410.9916

30.10.596.090.6896.7895.020.99420.00070.99520.9929
0.696.540.4497.0795.750.99450.00040.99490.9937
0.796.730.7297.6695.020.99400.00070.99510.9927
0.896.840.4097.3696.190.99400.00060.99500.9931
0.997.130.1797.3696.780.99450.00080.99580.9930

30.50.596.110.5197.0795.170.99470.00080.99530.9927
0.696.400.6597.5195.610.99480.00050.99580.9936
0.797.040.3897.3696.340.99480.00040.99520.9943
0.897.260.3297.8096.930.99410.00080.99550.9924
0.997.280.1797.5197.070.99380.00100.99490.9919

310.596.560.3597.0795.900.99520.00040.99570.9944
0.696.780.1497.0796.630.99520.00030.99550.9947
0.797.310.2597.6696.780.99440.00060.99530.9932
0.897.390.2297.9597.220.99400.00110.99500.9919
0.997.440.1097.6697.360.99410.00070.99510.9930