import matplotlib.pyplot as plt
from sklearn.datasets import load_diabetes
diabetes = load_diabetes()
diabetes.target[:3]
plt.scatter(diabetes.data[:, 2], diabetes.target)
plt.xlabel('x')
plt.xlabel('y')
plt.show()
x = diabetes.data[:, 2]
y = diabetes.target
w = 1.0
b = 1.0
y_hat = x[0] * w + b
w_inc = w + 0.1
y_hat_inc = x[0] * w_inc + b
w_rate = (y_hat_inc - y_hat) / (w_inc - w)
w_new = w + w_rate
b_inc = b + 0.1
y_hat_inc = x[0] * w + b_inc
b_rate = (y_hat_inc - y_hat) / (b_inc - b)
err = y[0] - y_hat
w_new = w + w_rate * err
b_new = b + 1 * err
y_hat = x[1] * w_new + b_new
err = y[1] - y_hat
w_rate = x[1]
w_new = w_new + w_rate * err
b_new = b_new + 1 * err
for i in range(1,100):
for x_i, y_i in zip(x, y):
y_hat = x_i * w + b
err = y_i - y_hat
w_rate = x_i
w = w + w_rate * err
b = b + 1 * err
print(w, b)
y_hat = x_i * w + b
err = y_i - y_hat
w_rate = x_i
w = w + w_rate * err
err = y_i - y_hat
b = b + 1 * err
class Neuron:
def __init__(self):
self.w =1.0
self.b =1.0
def forpass(self, x):
y_hat = x * self.w + self.b
return y_hat
def backprop(self, x, err):
w_grad = x * err
b_grad = 1 * err
return w_grad, b_grad
def fit(self, x, y, epochs = 100):
for i in range(epochs):
for x_i, y_i in zip(x, y):
y_hat = self.forpass(x_i)
err = -(y_i - y_hat)
w_grad, b_grad = self.backprop(x_i, err)
self.w -= w_grad
self.b -= b_grad
neuron = Neuron()
neuron.fit(x, y)
plt.scatter(x, y)
pt1 = (-0.1, -0.1 * neuron.w + neuron.b)
pt2 = (0.15, 0.15 * neuron.w + neuron.b)
plt.plot([pt1[0], pt2[0]], [pt1[1], pt2[1]])
plt.xlabel('x')
plt.xlabel('y')
plt.show()
Post Views:484
6 Replies to “2019.12.29(pm): Cost function and Python class”
Good post. I learn something totally new and challenging on sites I
stumbleupon everyday. It will always be helpful to read articles from other writers
and use something from their websites.
Do you mind if I quote a couple of your posts as long as I
provide credit and sources back to your blog? My blog is in the exact same niche as yours and my visitors
would genuinely benefit from a lot of the information you provide here.
Please let me know if this alright with you.
Hi! I know this is kind of off topic but I was
wondering if you knew where I could find a captcha plugin for my comment form?
I’m using the same blog platform as yours and I’m having trouble
finding one? Thanks a lot!
Hey There. I found your blog using msn. This is a very well written article.
I will be sure to bookmark it and come back to read more of your useful info.
Thanks for the post. I’ll definitely return.
I’ll right away clutch your rss feed as I can not to find your e-mail subscription hyperlink or e-newsletter service.
Do you’ve any? Kindly allow me know so that I may subscribe.
Thanks.
Good post. I learn something totally new and challenging on sites I
stumbleupon everyday. It will always be helpful to read articles from other writers
and use something from their websites.
Do you mind if I quote a couple of your posts as long as I
provide credit and sources back to your blog? My blog is in the exact same niche as yours and my visitors
would genuinely benefit from a lot of the information you provide here.
Please let me know if this alright with you.
Appreciate it!
Hi! I know this is kind of off topic but I was
wondering if you knew where I could find a captcha plugin for my comment form?
I’m using the same blog platform as yours and I’m having trouble
finding one? Thanks a lot!
Hey There. I found your blog using msn. This is a very well written article.
I will be sure to bookmark it and come back to read more of your useful info.
Thanks for the post. I’ll definitely return.
I’ll right away clutch your rss feed as I can not to find your e-mail subscription hyperlink or e-newsletter service.
Do you’ve any? Kindly allow me know so that I may subscribe.
Thanks.
supscribe on newsletter form!