发布时间:2019-08-29 07:38:30编辑:auto阅读(4185)
target = [1.5, 2.1, 3.3, -4.7, -2.3, 0.75]
prediction = [0.5, 1.5, 2.1, -2.2, 0.1, -0.5]
error = []
for i in range(len(target)):
error.append(target[i] - prediction[i])
print("Errors: ", error)
print(error)
squaredError = []
absError = []
for val in error:
squaredError.append(val * val)#target-prediction之差平方
absError.append(abs(val))#误差绝对值
print("Square Error: ", squaredError)
print("Absolute Value of Error: ", absError)
print("MSE = ", sum(squaredError) / len(squaredError))#均方误差MSE
from math import sqrt
print("RMSE = ", sqrt(sum(squaredError) / len(squaredError)))#均方根误差RMSE
print("MAE = ", sum(absError) / len(absError))#平均绝对误差MAE
targetDeviation = []
targetMean = sum(target) / len(target)#target平均值
for val in target:
targetDeviation.append((val - targetMean) * (val - targetMean))
print("Target Variance = ", sum(targetDeviation) / len(targetDeviation))#方差
print("Target Standard Deviation = ", sqrt(sum(targetDeviation) / len(targetDeviation)))#标准差
上一篇: 初学者学习 python实现字符动画
下一篇: Python中set的用法
51947
51738
42038
38880
33371
30336
28980
23996
23911
22266
444°
2617°
3315°
2749°
2732°
3502°
2696°
3523°
5816°
5603°