如何判断Newton's-Method是否失败

问题描述 投票:1回答:3

我正在为无约束优化问题创建一个基本的牛顿方法算法,我的算法结果不是我所期望的。它是一个简单的目标函数,因此很明显算法应该收敛于(1,1)。我之前创建的梯度下降算法证实了这一点,这里:

def grad_descent(x, t, count, magnitude):
    xvalues.append(x)
    gradvalues.append(np.array([dfx1(x), dfx2(x)]))
    fvalues.append(f(x))   
    temp=x-t*dfx(x)
    x = temp
    magnitude = mag(dfx(x))    
    count+=1

    return xvalues, gradvalues, fvalues, count

我为Newton's-Method创建算法的尝试如下:

def newton(x, t, count, magnitude):
  xvalues=[]
  gradvalues=[]
  fvalues=[]
  temp=x-f(x)/dfx(x)

  while count < 10:
    xvalues.append(x)
    gradvalues.append(dfx(x))
    fvalues.append(f(x))  

    temp=x-t*f(x)/dfx(x)
    x = temp
    magnitude = mag(dfx(x))    
    count+=1
    if count > 100:
      break
  return xvalues, gradvalues, fvalues, count

这是目标函数和渐变函数:

f = lambda x: 100*np.square(x[1]-np.square(x[0])) + np.square((1-x[0]))
dfx = lambda x: np.array([-400*x[0]*x[1]+400*np.power(x[0],3)+2*x[0]-2, 200*(x[1]-np.square(x[0]))])

这是最初的条件。请注意,牛顿方法中不使用alpha和beta。

x0, t0, alpha, beta, count = np.array([-1.1, 1.1]), 1, .15, .7, 1
magnitude = mag(np.array([dfx1(x0), dfx2(x0)]))

要调用该函数:

xvalues, gradvalues, fvalues, iterations = newton(x0, t0, count, magnitude)

这产生了非常奇怪的结果。以下是xvalues的前10次迭代,梯度值和各自x输入的函数解决方案:

[array([-1.1,  1.1]), array([-0.99315589,  1.35545455]), array([-1.11651296,  1.11709035]), array([-1.01732476,  1.35478987]), array([-1.13070578,  1.13125051]), array([-1.03603697,  1.35903467]), array([-1.14368874,  1.14364506]), array([-1.05188162,  1.36561528]), array([-1.15600558,  1.15480705]), array([-1.06599492,  1.37360245])]
[array([-52.6, -22. ]), array([142.64160215,  73.81918332]), array([-62.07323963, -25.90216846]), array([126.11789251,  63.96803995]), array([-70.85773749, -29.44900758]), array([114.31050737,  57.13241151]), array([-79.48668009, -32.87577304]), array([104.93863096,  51.83206539]), array([-88.25737032, -36.308371  ]), array([97.03403558, 47.45145765])]
[5.620000000000003, 17.59584998020613, 6.156932949106968, 14.29937453260906, 6.7080172227439725, 12.305727666787176, 7.297442528545537, 10.926625703722639, 7.944104584786208, 9.89743708419569]  

这是最终输出:

final_value = print('Final set of x values: ', xvalues[-1])
final_grad = print('Final gradient values: ', gradvalues[-1])
final_f = print('Final value of the object function with optimized inputs: ', fvalues[-1])
final_grad_mag = print('Final magnitude of the gradient with optimized inputs: ', mag(np.array([dfx1(xvalues[-1]), dfx2(xvalues[-1])])))
total_iterations = print('Total iterations: ', iterations)

一个3d图显示here代码:

x = np.array([i[0] for i in xvalues])
y = np.array([i[1] for i in xvalues])
z = np.array(fvalues)
fig = plt.figure()
ax = fig.gca(projection='3d')
ax.scatter(x, y, z, label='Newton Method')
ax.legend()

这是因为初始猜测是如此接近最佳点,或者我的算法中是否存在一些我没有捕获的错误?任何建议将不胜感激。看起来解决方案甚至可能是振荡的,但很难说

python algorithm newtons-method convex-optimization
3个回答
0
投票

我想我已经找到了部分问题。我使用的是不正确的牛顿算法。在我使用之前: x {k + 1} = x {k} -f(x)/∇f(x)

正确的更新是: x {k + 1} = x {k} - [f''(x {k})] - 1f'(x {k})

当我改变这一点时,结果仍然不同,但稍微好一些。新功能在这里:

f = lambda x: 100*np.square(x[1]-np.square(x[0])) + np.square((1-x[0]))
dfx1 = lambda x: -400*x[0]*x[1]+400*np.power(x[0],3)+2*x[0]-2
dfx2 = lambda x: 200*(x[1]-np.square(x[0]))
dfx = lambda x: np.array([-400*x[0]*x[1]+400*np.power(x[0],3)+2*x[0]-2, 200*(x[1]-np.square(x[0]))])
dfx11 = lambda x: -400*(x[1])+1200*np.square(x[0])+2
dfx12 = lambda x: -400*x[0]
dfx21 = lambda x: -400*x[0]
dfx22 = lambda x: 200
hessian = lambda x: np.array(([dfx11(x0), dfx12(x0)], [dfx21(x0), dfx22(x0)]))
inv_hessian = lambda x: inv(np.array(([dfx11(x0), dfx12(x0)], [dfx21(x0), dfx22(x0)])))  

def newton(x, t, count, magnitude):
  xvalues=[]
  gradvalues=[]
  fvalues=[]
  temp = x-(inv_hessian(x).dot(dfx(x)))

  while count < 25:
    xvalues.append(x)
    gradvalues.append(dfx(x))
    fvalues.append(f(x))  

    temp = x-(inv_hessian(x).dot(dfx(x)))
    x = temp
    magnitude = mag(dfx(x))    
    count+=1
    if count > 100:
      break
  return xvalues, gradvalues, fvalues, count

离解决方案最接近的是在第一步之后,它进入(-1.05,1.1)。但是,它仍然存在分歧。我从未使用牛顿方法,所以我不确定这是否与算法的准确性有关。

enter image description here


0
投票

我现在确定python代码有问题。我决定在Matlab中实现该算法,它似乎工作正常。这是代码:

clear; clc;
x=[-1.1, 1.1]';
t=1;
count=1;

xvalues=[];

temp = x - inv([(-400*x(2)+1200*x(1)^2+2), -400*x(1); -400*x(1), 200]);
disp(x-inv([(-400*x(2)+1200*x(1)^2+2), -400*x(1); -400*x(1), 200])*[-400*x(1)*x(2)+400*x(1)^3+2*x(1)-2; 200*(x(2)-x(1)^2)])

while count<10
    xvalues(count,:)= x;
    temp = x - inv([(-400*x(2)+1200*x(1)^2+2), -400*x(1); -400*x(1), 200]) * [-400*x(1)*x(2)+400*x(1)^3+2*x(1)-2; 200*(x(2)-x(1)^2)];    
    x = temp;
    count = count+1;
end

disp(xvalues)

输出:

-1.1000    1.1000
   -1.0087    1.0091
   -0.2556   -0.5018
   -0.2446    0.0597
    0.9707   -0.5348
    0.9708    0.9425
    1.0000    0.9991
    1.0000    1.0000
    1.0000    1.0000

0
投票

所以我终于弄清楚这是怎么回事。这完全是关于Python将我的变量存储为什么数据结构。因此,我将所有值设置为'float32'并初始化正在迭代的变量。工作代码在这里:

Note: a lambda function is an anonymous function useful for single-line expressions

f = lambda x: 100*np.square(x[1]-np.square(x[0])) + np.square((1-x[0]))
dfx = lambda x: np.array([-400*x[0]*x[1]+400*np.power(x[0],3)+2*x[0]-2, 200*(x[1]-np.square(x[0]))], dtype='float32')
dfx11 = lambda x: -400*(x[1])+1200*np.square(x[0])+2
dfx12 = lambda x: -400*x[0]
dfx21 = lambda x: -400*x[0]
dfx22 = lambda x: 200
hessian = lambda x: np.array([[dfx11(x), dfx12(x)], [dfx21(x), dfx22(x)]], dtype='float32')
inv_hessian = lambda x: inv(hessian(x))
mag = lambda x: math.sqrt(sum(i**2 for i in x))

def newton(x, t, count, magnitude):
  xvalues=[]
  gradvalues=[]
  fvalues=[]
  temp = np.zeros((2,1))

  while magnitude > .000005:
    xvalues.append(x)
    gradvalues.append(dfx(x))
    fvalues.append(f(x))      

    deltaX = np.array(np.dot(-inv_hessian(x), dfx(x)))
    temp = np.array(x+t*deltaX)
    x = temp
    magnitude = mag(deltaX)    
    count+=1
  return xvalues, gradvalues, fvalues, count

x0, t0, alpha, beta, count = np.array([[-1.1], [1.1]]), 1, .15, .7, 1
xvalues, gradvalues, fvalues, iterations = newton(x0, t0, count, magnitude)

final_value = print('Final set of x values: ', xvalues[-1])
final_grad = print('Final gradient values: ', gradvalues[-1])
final_f = print('Final value of the object function with optimized inputs: ', fvalues[-1])
final_grad_mag = print('Final magnitude of the gradient with optimized inputs: ', mag(np.array([dfx1(xvalues[-1]), dfx2(xvalues[-1])])))
total_iterations = print('Total iterations: ', iterations
print(xvalues)

输出:

Final set of x values:  [[0.99999995]
 [0.99999987]]
Final gradient values:  [[ 9.1299416e-06]
 [-4.6193604e-06]]
Final value of the object function with optimized inputs:  [5.63044182e-14]
Final magnitude of the gradient with optimized inputs:  1.02320249276675e-05
Total iterations:  9
[array([[-1.1],
       [ 1.1]]), array([[-1.00869558],
       [ 1.00913081]]), array([[-0.25557778],
       [-0.50186648]]), array([[-0.24460602],
       [ 0.05971173]]), array([[ 0.97073805],
       [-0.53472879]]), array([[0.97083687],
       [0.94252417]]), array([[0.99999957],
       [0.99914868]]), array([[0.99999995],
       [0.99999987]])]
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