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用於多元樣條插值的 Python 庫

[英]Python Library for Multivariate Spline Interpolation

是否有用於多元插值的python庫? 現在我有三個自變量和一個因變量。 我的數據如下所示:

X1=[3,3,3.1,3.1,4.2,5.2,6.3,2.3,7.4,8.4,5.4,3.4,3.4,3.4,...]
X2=[12.1,12.7,18.5,18.3,18.4,18.6,24.2,24.4,24.3,24.5,30.9,30.7,30.3,30.4,6.1,6.2,...]
X3=[0.3,9.2,0.3,9.4,0.1,9.8,0.4,9.3,0.7,9.7,18.3,27.4,0.6,9.44,...]
Y=[-5.890,-5.894,2.888,-3.8706,2.1516,-2.7334,1.4723,-2.1049,0.9167,-1.7281,-2.091,-6.7394,0.8777,-1.7046,...]
and len(X1)=len(X2)=len(X3)=len(Y)=400

我想擬合或插入數據,以便給定任意x1, x2, x3值,函數f(x1,x2,x3)將產生估計的y值。 就像給定的x1=4.11, x2=10.34, and x3=10.78,該函數將產生-8.7567(best estimate). 我想這個函數將是多項式的。 那么也許樣條插值是這里最好的選擇?

scipy.optimize workd 中的curve_fit。 在這段代碼中,估計是線性函數,但它可能更好。

import numpy as np
import matplotlib.pyplot as plt
from scipy.optimize import curve_fit

X1=[3,3,3.1,3.1,4.2,5.2,6.3,2.3,7.4,8.4,5.4,3.4,3.4,3.4]
X2=[12.1,12.7,18.5,18.3,18.4,18.6,24.2,24.4,24.3,24.5,30.9,30.7,30.3,30.4]
X3=[0.3,9.2,0.3,9.4,0.1,9.8,0.4,9.3,0.7,9.7,18.3,27.4,0.6,9.44]
Y=[-5.890,-5.894,2.888,-3.8706,2.1516,-2.7334,1.4723,-2.1049,0.9167,-1.7281,-2.091,-6.7394,0.8777,-1.7046]

def fitFunc(x, a, b, c, d):
    return a + b*x[0] + c*x[1] + d*x[2]

fitParams, fitCovariances = curve_fit(fitFunc, [X1, X2, X3], Y)
print(' fit coefficients:\n', fitParams)
# fit coefficients:
#  [-6.11934208  0.21643939  0.26186705 -0.33794415]

然后用fitParams[0] + fitParams[1] * x1 + fitParams[2] * x2 + fitParams[3] * x3估計y。

# get single y
def estimate(x1, x2, x3):
    return fitParams[0] + fitParams[1] * x1 + fitParams[2] * x2 + fitParams[3] * x3

將結果與原始 y 進行比較。

Y_estimated = [estimate(X1[i], X2[i], X3[i]) for i in range(len(X1))]

fig, ax = plt.subplots()
ax.scatter(Y, Y_estimated)

lims = [
    np.min([ax.get_xlim(), ax.get_ylim()]),  # min of both axes
    np.max([ax.get_xlim(), ax.get_ylim()]),  # max of both axes
]

ax.set_xlabel('Y')
ax.set_ylabel('Y_estimated')
ax.plot(lims, lims, 'k-', alpha=0.75, zorder=0)
ax.set_aspect('equal')

在此處輸入圖片說明

參考scipy , stackoverflow-multifit , stackoverflow-plot xy

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