Table 10. Classification performance for hyper-spectral image data set; the numbers between parentheses represent P-values of Welch’s t-test when comparing random forest with the other classifiers.
Accuracy | Sensitivity | Specificity | |
---|---|---|---|
Random Forest | 95.05% ± 0.34% | 94.87% ± 0.35% | 95.24% ± 0.54% |
Decision Tree | 88.59% ± 0.49% (< 2.2e-16) |
87.19% ± 0.81% (< 2.2e-16) |
89.95% ± 0.73% (< 2.2e-16) |
Naïve Bayes | 79.69% ± 0.61% (< 2.2e-16) |
78.53% ± 0.96% (< 2.2e-16) |
80.82% ± 0.95% (< 2.2e-16) |
AdaBoost | 92.79% ± 0.46% (9.35e-11) |
91.31% ± 0.77% (1.173e-10) |
94.23% ± 0.58% (0.01189) |