X=tf.constant([-1,-2],dtype=tf.float32)
w=tf.Variable([2.,3.])
truth=[3.,3.]
Y=w*X
# cost=tf.reduce_sum(tf.reduce_sum(Y*truth)/(tf.sqrt(tf.reduce_sum(tf.square(Y)))*tf.sqrt(tf.reduce_sum(tf.square(truth)))))
cost=Y[1]*Y
optimizer = tf.train.GradientDescentOptimizer(1).minimize(cost)
with tf.Session() as sess:
sess.run(tf.global_variables_initializer())
print(sess.run(Y))
print(sess.run(w))
print(sess.run(cost))
print(sess.run(Y))
sess.run(optimizer)
print(sess.run(w))
结果如下
W由[2,3]变成[-4,-25]
过程:
f=y0*y=w0*x0*w*x=[w1*x1*w0*x0,w1*x1*w1*x1,]
f对w0求导,得w1*x0*x1+0=6 ,所以新的w0=w0-6=-4
f对w1求导,得 w0*x0*x1+2*w1*x1*x1=28,所以新的w1=w1-28=-25