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Hearthstone Battleground: An AI Assistant with Monte Carlo Tree Search

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We are in the golden age of AI. Developing AI software for computer games is one of the most exciting trends of today’s day and age. Recently games like Hearthstone Bat- tlegrounds have captivated millions of players due to it’s sophistication, with an infinite number of unique interactions that can occur in the game. In this research, a Monte-Carlo simulation was built to help players achieve higher ranks. This was achieved through a learned simulation which was trained against a top Hearthstone Battleground player’s historic win. In our experiment, we collected 3 data sets from strategic Hearthstone Bat- tleground games. Each data set includes 6 turns of battle phases, 42 minions for battle boards, and 22 minions for Bob’s tavern. The evaluation demonstrated that the AI assis- tant achieved better performance — loosing on average only 9.56% of turns vs 26.26% for the experienced Hearthstone Battleground players, and winning 56% vs 46.91%.
Title: Hearthstone Battleground: An AI Assistant with Monte Carlo Tree Search
Description:
We are in the golden age of AI.
Developing AI software for computer games is one of the most exciting trends of today’s day and age.
Recently games like Hearthstone Bat- tlegrounds have captivated millions of players due to it’s sophistication, with an infinite number of unique interactions that can occur in the game.
In this research, a Monte-Carlo simulation was built to help players achieve higher ranks.
This was achieved through a learned simulation which was trained against a top Hearthstone Battleground player’s historic win.
In our experiment, we collected 3 data sets from strategic Hearthstone Bat- tleground games.
Each data set includes 6 turns of battle phases, 42 minions for battle boards, and 22 minions for Bob’s tavern.
The evaluation demonstrated that the AI assis- tant achieved better performance — loosing on average only 9.
56% of turns vs 26.
26% for the experienced Hearthstone Battleground players, and winning 56% vs 46.
91%.

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