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lab-06-2-softmax_zoo_classifier.py
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lab-06-2-softmax_zoo_classifier.py
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# Lab 6 Softmax Classifier
import tensorflow as tf
import numpy as np
tf.set_random_seed(777) # for reproducibility
# Predicting animal type based on various features
xy = np.loadtxt('data-04-zoo.csv', delimiter=',', dtype=np.float32)
x_data = xy[:, 0:-1]
y_data = xy[:, [-1]]
print(x_data.shape, y_data.shape)
nb_classes = 7 # 0 ~ 6
X = tf.placeholder(tf.float32, [None, 16])
Y = tf.placeholder(tf.int32, [None, 1]) # 0 ~ 6
Y_one_hot = tf.one_hot(Y, nb_classes) # one hot
print("one_hot", Y_one_hot)
Y_one_hot = tf.reshape(Y_one_hot, [-1, nb_classes])
print("reshape", Y_one_hot)
W = tf.Variable(tf.random_normal([16, nb_classes]), name='weight')
b = tf.Variable(tf.random_normal([nb_classes]), name='bias')
# tf.nn.softmax computes softmax activations
# softmax = exp(logits) / reduce_sum(exp(logits), dim)
logits = tf.matmul(X, W) + b
hypothesis = tf.nn.softmax(logits)
# Cross entropy cost/loss
cost_i = tf.nn.softmax_cross_entropy_with_logits(logits=logits,
labels=Y_one_hot)
cost = tf.reduce_mean(cost_i)
optimizer = tf.train.GradientDescentOptimizer(learning_rate=0.1).minimize(cost)
prediction = tf.argmax(hypothesis, 1)
correct_prediction = tf.equal(prediction, tf.argmax(Y_one_hot, 1))
accuracy = tf.reduce_mean(tf.cast(correct_prediction, tf.float32))
# Launch graph
with tf.Session() as sess:
sess.run(tf.global_variables_initializer())
for step in range(2000):
sess.run(optimizer, feed_dict={X: x_data, Y: y_data})
if step % 100 == 0:
loss, acc = sess.run([cost, accuracy], feed_dict={
X: x_data, Y: y_data})
print("Step: {:5}\tLoss: {:.3f}\tAcc: {:.2%}".format(
step, loss, acc))
# Let's see if we can predict
pred = sess.run(prediction, feed_dict={X: x_data})
# y_data: (N,1) = flatten => (N, ) matches pred.shape
for p, y in zip(pred, y_data.flatten()):
print("[{}] Prediction: {} True Y: {}".format(p == int(y), p, int(y)))
'''
Step: 0 Loss: 5.106 Acc: 37.62%
Step: 100 Loss: 0.800 Acc: 79.21%
Step: 200 Loss: 0.486 Acc: 88.12%
Step: 300 Loss: 0.349 Acc: 90.10%
Step: 400 Loss: 0.272 Acc: 94.06%
Step: 500 Loss: 0.222 Acc: 95.05%
Step: 600 Loss: 0.187 Acc: 97.03%
Step: 700 Loss: 0.161 Acc: 97.03%
Step: 800 Loss: 0.140 Acc: 97.03%
Step: 900 Loss: 0.124 Acc: 97.03%
Step: 1000 Loss: 0.111 Acc: 97.03%
Step: 1100 Loss: 0.101 Acc: 99.01%
Step: 1200 Loss: 0.092 Acc: 100.00%
Step: 1300 Loss: 0.084 Acc: 100.00%
...
[True] Prediction: 0 True Y: 0
[True] Prediction: 0 True Y: 0
[True] Prediction: 3 True Y: 3
[True] Prediction: 0 True Y: 0
[True] Prediction: 0 True Y: 0
[True] Prediction: 0 True Y: 0
[True] Prediction: 0 True Y: 0
[True] Prediction: 3 True Y: 3
[True] Prediction: 3 True Y: 3
[True] Prediction: 0 True Y: 0
'''