【发布时间】:2016-08-31 23:10:24
【问题描述】:
我试图在曲线拟合期间对某些参数应用边界,但在尝试这样做时收到以下错误消息:
ValueError:要解压的值太多
在我的例子中,绑定命令中的每个 2 元组是否分别对应于 sigmoidscaled 函数中的 x0、k、失效、猜测(即也对应于 p0)?
然后我尝试尝试通过将绑定命令减少到以下内容以消除“太多值”来试图弄清楚它是如何工作的:
bounds=((-np.inf,np.inf), (0,1))
然后我收到以下错误消息:
ValueError:边界和x0 之间的形状不一致。
我在这里做错了什么?
import pylab
from scipy.optimize import curve_fit
from matplotlib.pyplot import *
n = 20 #20 trials
ydata = [0/n, 9.0/n, 9.0/n, 14.0/n, 17.0/n] #Divided by n to fit to a plot of y =1
xdata = np.array([ 1.0, 2.0, 3.0, 4.0, 5.0])
#The scaled sigmoid function
def sigmoidscaled(x, x0, k, lapse, guess):
F = (1 + np.exp(-k*(x-x0)))
z = guess + (1-guess-lapse)/F
return z
p0=[1,1,0,0]
popt, pcov = curve_fit(sigmoidscaled, xdata, ydata, p0, bounds=((-np.inf,np.inf), (-np.inf,np.inf), (0,1), (0,1))
#Start and End of x-axis, in spaces of n. The higher the n, the smoother the curve.
x = np.linspace(1,5,20)
#The sigmoid values along the y-axis, generated in relation to the x values and the 50% point.
y = sigmoidscaled(x, *popt)
pylab.plot(xdata, ydata, 'o', label='Psychometric Raw', color = 'blue')
pylab.plot(x,y, label='Psychometric Fit', color = 'blue')
#y axis range.
pylab.ylim(0, 1)
#Replace x-axis numbers as labels and y-axis numbers as percentage
xticks([1., 2., 3., 4., 5.], ['C1','CN2','N3','CN4','S5'])
yticks([0.0, 0.2, 0.4, 0.6, 0.8, 1.0], ['0%','20%','40%','60%','80%','100%'])
pylab.legend(loc='best')
xlabel('Conditions')
ylabel('% perceived more sin like')
pylab.show()
【问题讨论】:
标签: python matplotlib scipy curve-fitting