You signed in with another tab or window. Reload to refresh your session.You signed out in another tab or window. Reload to refresh your session.You switched accounts on another tab or window. Reload to refresh your session.Dismiss alert
Page 16..
AlphaGeese [2] follows an implementation of MCTS [21] [22]. The implementation of MCTS tracks the following variables.
• P(s, a, i) The prior probability agent i of taking an action a from a state
s according to the neural network. This is the softmaxed value of the
action-values inferred by the neural network.
• N(s, a, i) The number of times we explore the action a taken by agent i
from a state s when we are searching the tree.
• Q(s, a, i) The expected reward for taking the action a by agent i from
a state s. This is initialised with the state-value inferred by the neural
network. Q(s, a, i) is the average of the state-values of the explored nodes
in its subtree.
The action with the highest upper confidence bound U(s, a) is explored.
The text was updated successfully, but these errors were encountered:
It would be nice to have an implementation of the MCTS in this codebase. In case it is not clear, I am referring to the https://tonghuikang.github.io/ai-project/report.pdf.
Page 16..
AlphaGeese [2] follows an implementation of MCTS [21] [22]. The implementation of MCTS tracks the following variables.
• P(s, a, i) The prior probability agent i of taking an action a from a state
s according to the neural network. This is the softmaxed value of the
action-values inferred by the neural network.
• N(s, a, i) The number of times we explore the action a taken by agent i
from a state s when we are searching the tree.
• Q(s, a, i) The expected reward for taking the action a by agent i from
a state s. This is initialised with the state-value inferred by the neural
network. Q(s, a, i) is the average of the state-values of the explored nodes
in its subtree.
The action with the highest upper confidence bound U(s, a) is explored.
The text was updated successfully, but these errors were encountered: