On Using Monte-Carlo Tree Search to Solve Puzzles

M. Kiarostami, Mohammadreza Daneshvaramoli, Saleh Khalaj Monfared, Aku Visuri, Helia Karisani, S. Hosio, Hamed Khashehchi, Ehsan Futuhi, D. Rahmati, S. Gorgin
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引用次数: 2

Abstract

Solving puzzles has become increasingly important in artificial intelligence research since the solutions could be directly applied to real-world or general problems such as pathfinding, path planning, and exploration problems. Selecting the best approach to solve puzzles has always been an essential issue. Monte-Carlo Tree Search (MCTS) has surged into popularity as a promising approach due to its low run-time and memory complexity. Thus, it is required to know how to employ this method to solve the puzzles. In this work, we study the applicability of MCTS in solving puzzles or solving a puzzle with MCTS, not comparing many MCTS approaches. We propose a general classification of puzzles based on their features. This classification consists of four primary classes that provide a mathematical formula for each and their satisfactory criteria. This classification let us know how to utilize MCTS based on the puzzle’s features. We pass each puzzle to an MCTS algorithm as a series of satisfaction functions based on this mathematical formulation. The classification can perform general pathfinding or path-planning if the outlining problem is defined within the described mathematical constraints. MCTS progressively solves a puzzle until the functions are completely satisfied in our proposed classification. We examine different puzzles for each class using our proposed methodology. Furthermore, to evaluate the proposed method’s performance, each of these puzzles is compared with their available SAT solvers using the Z3 implementation and different variations of MCTS that are generally used.
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用蒙特卡罗树搜索解谜
解决谜题在人工智能研究中变得越来越重要,因为解决方案可以直接应用于现实世界或一般问题,如寻路、路径规划和探索问题。选择解决谜题的最佳方法一直是一个重要问题。蒙特卡罗树搜索(MCTS)由于其低运行时和内存复杂性而成为一种有前途的方法。因此,需要知道如何使用这种方法来解决谜题。在这项工作中,我们研究了MCTS在解决谜题或用MCTS解决谜题中的适用性,而不是比较许多MCTS方法。我们根据谜题的特征提出了一种通用的分类方法。这种分类由四个主要类别组成,每个类别都提供了数学公式和令人满意的标准。这种分类让我们知道如何利用MCTS基于谜题的特点。我们将每个谜题作为一系列基于此数学公式的满足函数传递给MCTS算法。如果概述问题在描述的数学约束范围内定义,则分类可以执行一般的寻路或路径规划。MCTS逐步解决一个难题,直到函数完全满足我们提出的分类。我们使用我们提出的方法为每个班级检查不同的谜题。此外,为了评估所提出的方法的性能,每个谜题都与使用Z3实现和通常使用的MCTS的不同变体的可用SAT解算器进行了比较。
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