- Asynchronous Advantage Actor-Critic Agents (A3C) is an on-policy algorithm, as we do not use a replay buffer to sample data from. However, a temporary buffer is used to collect immediate samples, which are used to train once, after which the buffer is emptied.
- The Shannon entropy term is used as a regularizer—the higher the entropy, the better the policy is.
- When too many worker threads are used, the training can slow down and can crash, as memory is limited. If, however, you have access to a large cluster of processors, then using a large number of worker threads/processes helps.
- Softmax is used in the policy network to obtain probabilities of different actions.
- An advantage function is widely used, as it decreases the variance of the policy gradient. Section 3 of the A3C paper (https://arxiv.org/pdf/1602.01783.pdf) has more regarding this.
- This is an exercise...
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