I'm trying to plot the ROC curve from a modified version of the CIFAR-10 example provided by tensorflow. It's now for 2 classes instead of 10.
The output of the network are called logits and take the form:
[[-2.57313061 2.57966399] [ 0.04221377 -0.04033273] [-1.42880082 1.43337202] [-2.7692945 2.78173304] [-2.48195744 2.49331546] [ 2.0941515 -2.10268974] [-3.51670194 3.53267646] [-2.74760485 2.75617766] ...]
First of all, what do these logits actually represent? The final layer in the network is a "softmax linear" of form WX+b.
The model is able to calculate accuracy by calling
top_k_op = tf.nn.in_top_k(logits, labels, 1)
Then once the graph has been initialized:
predictions = sess.run([top_k_op]) predictions_int = np.array(predictions).astype(int) true_count += np.sum(predictions) ... precision = true_count / total_sample_count
This works fine.
But now how can I plot a ROC curve from this?
I've been trying the "sklearn.metrics.roc_curve()" function (http://scikit-learn.org/stable/modules/generated/sklearn.metrics.roc_curve.html#sklearn.metrics.roc_curve) but I don't know what to use as my "y_score" parameter.
Any help would be appreciated!