ML之回归预测之Lasso:利用Lasso算法解决回归(实数值评分预测)问题—优化模型【增加新(组合)属性】

版权声明:本文为博主原创文章,未经博主允许不得转载。 https://blog.csdn.net/qq_41185868/article/details/85719995

ML之回归预测之Lasso:利用Lasso算法解决回归(实数值评分预测)问题—优化模型【增加新(组合)属性】

输出结果

设计思路

核心代码

names[-1] = "a^2"
names.append("a*b")


nrows = len(xList)
ncols = len(xList[0])

xMeans = []
xSD = []
for i in range(ncols):
    col = [xList[j][i] for j in range(nrows)]
    mean = sum(col)/nrows
    xMeans.append(mean)
    colDiff = [(xList[j][i] - mean) for j in range(nrows)]
    sumSq = sum([colDiff[i] * colDiff[i] for i in range(nrows)])
    stdDev = sqrt(sumSq/nrows)
    xSD.append(stdDev)


X = numpy.array(xList)             #Unnormalized X's
X = numpy.array(xNormalized)       #Normlized Xss
Y = numpy.array(labels)            #Unnormalized labels

猜你喜欢

转载自blog.csdn.net/qq_41185868/article/details/85719995