Using Genetic Algorithm to Solve Puzzle Games: A Review

Iksan Bukhori, Jason Felix, Saddam Ali
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Abstract

Puzzles have been recognized for their development as a popular form of entertainment due to their ability to intricately challenge the mind while engendering creativity in the player. The development of puzzle games has given rise to a new generation of puzzle games characterized by diverse sequences and different image variations. With the rapid development of puzzle games, we looked at solving approaches using Genetic Algorithms (GA). In this paper, we try to analyze several puzzle games such as Sliding Blocks, Sudoku, Tic-Tac-Toe, and Jigsaw that can be solved using GA. We found that 120 papers have examined the use of GA for puzzle games, and eliminated into 14 papers. We evaluated these 14 papers for each puzzle game we selected by comparing the chromosome representation, GA operator, GA parameters, and the results. Based on the discussion, the application of GA to solve puzzle games can be effectively executed with a high degree of accuracy. Puzzle games that use measurement methods such as Sliding Block, Sudoku, and Jigsaw run in a similar pattern. What is common to all of them is that the chromosomes are represented as matrices or arrays in all cases, and standard genetic operators such as selection, crossover, and mutation are used. The population size is large, often 1000 chromosomes, and parameters such as mutation rate are kept low, around 5%. On the other hand, the performance of GA for solving Tetris and Tic-Tac-Toe from each publication cannot be compared due to different measurement methods and metrics.
使用遗传算法解决益智游戏:综述
拼图游戏因其能够在激发玩家创造力的同时对其思维提出复杂的挑战而被公认为一种流行的娱乐形式。解谜游戏的发展催生了新一代的解谜游戏,其特点是序列多样、图像多变。随着解谜游戏的迅速发展,我们开始研究使用遗传算法(GA)的解谜方法。在本文中,我们试图分析几种可以使用遗传算法解谜的益智游戏,如滑动积木、数独、嘀嗒嘀和拼图。我们发现有 120 篇论文研究了如何在益智游戏中使用 GA,并从中筛选出 14 篇。我们通过比较染色体表示法、遗传算法算子、遗传算法参数和结果,对这 14 篇论文所选的每一种谜题游戏进行了评估。根据讨论结果,应用遗传算法解谜游戏可以有效地执行,并且具有很高的准确性。使用测量方法的益智游戏,如滑动方块、数独和拼图,都有类似的运行模式。所有这些游戏的共同点是,染色体在所有情况下都表示为矩阵或数组,并使用标准遗传算子,如选择、交叉和突变。群体规模较大,通常为 1000 条染色体,突变率等参数保持在较低水平,约为 5%。另一方面,由于测量方法和指标不同,无法比较每篇论文中 GA 解决俄罗斯方块和井字游戏的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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