I'm training an agent to act in a discrete environment, and I'm using a tf.distributions.Categorical
output layer which I then sample to create a softmax output to determine what action to take. I create my policy network like this:
pi_eval, _ = self._build_anet(self.state, 'pi', reuse=True)
def _build_anet(self, state_in, name, reuse=False):
w_reg = tf.contrib.layers.l2_regularizer(L2_REG)
with tf.variable_scope(name, reuse=reuse):
layer_1 = tf.layers.dense(state_in, HIDDEN_LAYER_NEURONS, tf.nn.relu, kernel_regularizer=w_reg, name="pi_l1")
layer_2 = tf.layers.dense(layer_1, HIDDEN_LAYER_NEURONS, tf.nn.relu, kernel_regularizer=w_reg, name="pi_l2")
a_logits = tf.layers.dense(layer_2, self.a_dim, kernel_regularizer=w_reg, name="pi_logits")
dist = tf.distributions.Categorical(logits=a_logits)
params = tf.get_collection(tf.GraphKeys.GLOBAL_VARIABLES, scope=name)
return dist, params
I then sample the network and build up a class distribution output to act as a softmax output, using the example from the tf.distributions.Categorical webpage:
n = 1e4
self.logits_action = tf.cast(tf.histogram_fixed_width(values=pi_eval.sample(int(n)), value_range=[0, 1], nbins=self.a_dim), dtype=tf.float32) / n
Run like this:
softmax = self.sess.run([self.logits_action], {self.state: state[np.newaxis, :]})
But the outputs only ever have two non-zero entries:
[0.44329998 0. 0. 0.5567 ]
[0.92139995 0. 0. 0.0786 ]
[0.95699996 0. 0. 0.043 ]
[0.7051 0. 0. 0.2949]
My hunch is something to do with value_range
which the documentation says:
value_range: Shape 2 Tensor of same dtype as values. values <= value_range[0] will be mapped to hist[0], values >= value_range1 will be mapped to hist[-1].
But I'm not sure what value range I should use? I wonder if anyone had any ideas?