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Questions tagged [monte-carlo-tree-search]

Monte-Carlo Tree Search is a best-first, rollout-based tree search algorithm. It gradually improves its evaluations of nodes in the trees using (semi-)random rollouts through those nodes, focusing a larger proportion of rollouts on the parts of the tree that are the most promising. This tag should be used for questions about implementation of this algorithm.

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28 views

How do I effectively parallelize AlphaZero on the GPU?

I'm implementing a version of AlphaZero (AlphaGo's most recent incarnation) to be applied to some other domain. The crux of the algorithm is a Monte Carlo Tree Search of the state space (CPU) ...
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ValueError: The truth value of an array… from dict key comparison

I can't figure out why I keep getting this error: if node not in self.children: return path ValueError: The truth value of an array with more than one element is ambiguous. Use a....
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ValueError: The truth value of an array … but it's just an int

I have an array self.N of ints, and I'm trying to write self.N[node] +=1, but whenever I just write self.N[node] it gives me a value error for having more than one element, which it can't. def ...
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UCB formula for monte carlo tree search when score is between 0 and n

I'm implementing an AI that plays 2048 using monte carlo tree search. According to wikipedia https://en.wikipedia.org/wiki/Monte_Carlo_tree_search and all other sources that I have checked in the ...
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19 views

Should the Monte Carlo tree in calculating the previous bestMove be used to feed the next Monte Carlo search?

I have seen some MCTS implementation online and how they are used in a game. A best move is calculated each move based on the state at that moment. If you have a sequence of moves in a game between ...
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Why would alpha zero not run out of memory

After having read through the Deep Mind's Alpha Zero paper, I understood that we are building up a tree and adding a new node to the tree every time we see a new node. For a game like GO (or even ...
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What is Monte Carlo Beam Search in neural networks?

Monte Carlo Beam Search is often referenced in neural network and reinforcement learning research. What is it and how is it different than Monte Carlo search.
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How Leela Zero (new chess engine) works?

Is there a simple explanation for dummies like me? I know that there's a source code of Leela, I've heard that it uses neural networks with MCTS (plus UCT), but there are lot of hard things remaining. ...
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48 views

How do I get the following Golang MCTS example running?

I am trying to grasp the flow of this implementation and figure out how to run this MCTS implementation: https://github.com/int8/gomcts/blob/master/README.md. Steps taken: I have followed the Readme ...
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51 views

Monte Carlo Tree Search for games with randomized card shuffling

I'm trying to look into programming an AI for the game Ticket to Ride. I'm relatively new to artificial intelligence programming so I'll need some help planning out my MCTS implementation. Unlike ...
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576 views

How to I make my AI algorithm play 9 board tic-tac-toe?

In order to make it easy for others to help me I have put all the codes here https://pastebin.com/WENzM41k it will starts as 2 agents compete each other. I'm trying to implement Monte Carlo tree ...
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Parallelizing Monte Carlo Tree Search

I have a Monte Carlo Tree Search implementation that I need to optimize. So I thought about parallelizing the rollout phase. How to do that? (Is there a code example). Are there any python modules etc ...
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Monte Carlo Tree Search agent in a game of Isolation - Debug Suggestions

TLDR MCTS agent implementation runs without errors locally, achieving win-rates of >40% against heuristic driven minimax but fails the autograder - which is a requirement before the project can ...
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Machine Learning: What is the best algorithm to select best 3 variable combinations?

I have 10 variables as like below V1=1, V2=2, V3=3, V4=4, V5=5, V6=6, V7=7, V8=8, V9=9 and V10=10 Note : Each variable can have any value Now I want to select the best 3 variables combination as ...
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How to represent repeating patterns in data

I've a homework assignment that uses MCTS (http://mcts.ai/code/python.html) to play as many games of tic tac toe as required using MCTS. The goal of the assignment is to train a decision tree ...
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Monte Carlo Tree Search (programming language recommendation)

I'm relatively new to MCTS, so I don't have much experience with the runtime. I don't want to start a debate about programming languages, but can you give me a recommendation, which language might be ...
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Is MonteCarloTreeSearch an appropriate method for this problem size (large action/state space)?

I'm doing a research on a finite horizon decision problem with t=1,...,40 periods. In every time step t, the (only) agent has to chose an action a(t) ∈ A(t), while the agent is in state s(t) &#...
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Java Heap Space Issue with my MCTS Gomoku player

When I run my program I get this error: Exception in thread "AWT-EventQueue-0" java.lang.OutOfMemoryError: Java heap space at MCTSNode.setPossibleMoves(MCTSNode.java:66) at MCTSNode....
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Tree search based Game AI: How to avoid AI 'wandering'/'procrastination' with sparse rewards?

My game AI makes use of an algorithm that searches all possible future states based on the moves I can make (minimax / monte carlo esque). It evaluates these states using a scoring system, picks the ...
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90 views

Eligibility trace algorithm, the update order

I am reading Silver et al (2012) "Temporal-Difference Search in Computer Go", and trying to understand the update order for the eligibility trace algorithm. In the Algorithm 1 and 2 of the paper, ...
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Faster python treesearch implementation

I have a treesearch implementation in Python that is just way to slow for my use. How can I run this faster? I've read there is numba but I can't get my head around how it would works and what it can ...
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Is it meaningful to give more weight to the result of monte carlo search with less turn win?

I'm programming on Connect6 with MCTS. Monte Carlo Tree Search is based on random moves. It counts up the number of wins in certain moves. (Whether it wins with 3 turns or 30 turns) Is the move with ...
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1answer
435 views

MCTS *tree* parallelization in Python - possible?

I would like to parallelize my MCTS program. There are several ways to do this: Leaf parallelization, where each leaf is expanded and simulated in parallel. Root parallelization, where each thread/...
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How does MCTS work with 'precise lines'

So I am familiar with more basic tree search algorithms like game search w/ minimax, but I've been trying to learn more about the Monte-Carlo Tree Search algorithm, and was wondering how it deals with ...
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289 views

Monte Carlo Optimization

I am trying to do Monte Carlo minimization to solve for parameters of a given equation. My equation has 4 parameters, making my iteration about 4**n when I try iteration n = 100, I saw it is not a ...
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162 views

Monte Carlo tree search - handling game ending nodes

I have implemented a MCTS for a 4 player game which is working well, but I'm not sure I understand expansion when the game ending move is in the actual Tree rather than in the rollout. At the start ...
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207 views

Is Monte Carlo Tree Search policy or value iteration (or something else)?

I am taking a Reinforcement Learning class and I didn’t understand how to combine the concepts of policy iteration/value iteration with Monte Carlo (and also TD/SARSA/Q-learning). In the table below, ...
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1answer
279 views

Transposition table in Monte Carlo Tree Search algorithm unintended effect on UCT score

So I implemented a transposition table in a Monte Carlo Tree Search algorithm using UCT. This allows for keeping a cumulative reward value for a game state, no matter where, and how many times, it is ...
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79 views

Taking into account information on opponent's likely moves in MCTS?

I'm creating a MCTS (Monte Carlo Tree Search) program for a 2 player game. For this I create nodes in the tree, from alternating perspectives (the first node is from the perspective of player 1, any ...
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2answers
43 views

JAVA - Array copy in constructor unexpectedly slow after large number of calls

I am currently trying to improve the performance of a Java code. After digging a bit to see where optimization was required I ended up with the following setup (simplified for clarity). The Board ...
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1answer
51 views

How to Share Object in multiprocesing, python

Thanks to read this. I have developed chess AI like AlphaGo Lee or AlphaGo Zero. I have used Python and tensorflow. The chess AI is consist of Montecarlo-Tree-Search, policy network and value ...
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633 views

Monte Carlo Tree Search Tic-Tac-Toe — Poor Agent

I'm trying to implement Monte Carlo tree search to play tic-tac-toe in Python. My current implementation is as follows: I have a Board class that handles alterations to the tic-tac-toe board. The ...
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377 views

How is Monte Carlo Tree Search implemented in practice

I understand, to a certain degree, how the algorithm works. What I don't fully understand is how the algorithm is actually implemented in practice. I'm interested in understanding what optimal ...
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48 views

Monte Carlo Algorithm for binary trees don't start rightly

I tried to apply the Monte Carlo algorithm to binary trees, but I have the impression that there is an error in the algorithm because it returns my default value. Here is the structure of the tree in ...
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1answer
213 views

Monte Carlo Tree Search - “most promising” move function

I tried to implement tic-tac-toe hello-world MCTS game player but I encountered a problem. While simulating the game and choosing "the most promising" (exploit/explore) node I only take total wins ...
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146 views

Monte Carlo Tree Search - intuition behind child selection function for games of two players with opposite goals

Simple question on hello world example of the MCTS for tic-tac-toe, Let's assume we are given a board and we want to make an optimal decision. As I undestand the choice of consecutive nodes while ...
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1answer
150 views

Reinforcement Learning: fine-tuning MCTS node selection and expansion stage with inaccurate values

I am implementing a Go playing program roughly according to the architecture of earlier versions of AlphaGo(AlphaGo Fan or AlphaGo Lee), e.g. using policy network, value network, and Monte Carlo tree ...
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450 views

Unity struct variable of type struct array initializing

I'm having an issue with my struct. I'm working on an implementation of the Monte Carlo Tree Search algorithm and I created a struct called Node which has specific variables. Now I need to store ...
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95 views

Monte Carlo Tree Search Alternating

Could anybody please clarify how (as I have not found any clear example anywhere) The MCTS algorithm iterates for the second player. Everything I seem just seems to look like it is playing eg P1 move ...
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1answer
361 views

Monte Carlo Tree Search Improvements

I'm trying to implement the MCTS algorithm on a game. I can only use around 0.33 seconds per move. In this time I can generate one or two games per child from the start state, which contains around ...
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604 views

How does Monte Carlo Search Tree work?

Trying to learn MCST using YouTube videos and papers like this one. http://www0.cs.ucl.ac.uk/staff/D.Silver/web/Applications_files/grand-challenge.pdf However I am not having much of a luck ...
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520 views

Number of simulation per node in Monte Carlo tree search

In the mcts algorithm described in Wikipedia, it performs exactly one playout(simulation) in each node selection. Now, I am experimenting this algorithm in a simple connect-k game. I wonder, in ...
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286 views

Which AI algorithms can be used to play probabilistic games with possibly incomplete information?

The minimax algorithm and Monte-Carlo tree search (MCTS) can be used to implement agents which play deterministic (i.e., non-probabilistic) games, like chess or tic-tac-toe, that have complete ...