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Capturing the Essence: Towards the Automated Generation of Transparent Behavior Models

机译:捕捉本质:迈向自动化的透明行为模型

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Hand-coded finite-state machines and behavior trees are the go-to techniques for artificial intelligence (AI) developers that want full control over their character's bearing. However, manually crafting behaviors for computer-controlled agents is a tedious and parameter dependent task. From a high-level view, the process of designing agent AI by hand usually starts with the determination of a suitable set of action sequences. Once the AI developer has identified these sequences he merges them into a complete behavior by specifying appropriate transitions between them. Automated techniques, such as learning, tree search and planning, are on the other end of the AI toolset's spectrum. They do not require the manual definition of action sequences and adapt to parameter changes automatically. Yet AI developers are reluctant to incorporate them in games because of their performance footprint and lack of immediate designer control. We propose a method that, given the symbolic definition of a problem domain, can automatically extract a transparent behavior model from Goal-Oriented Action Planning (GOAP). The method first observes the behavior exhibited by GOAP in a Monte-Carlo simulation and then evolves a suitable behavior tree using a genetic algorithm. The generated behavior trees are comprehensible, refinable and as performant as hand-crafted ones.
机译:手写的有限状态机器和行为树是人工智能(AI)开发人员想要完全控制其角色的轴承的转向技术。但是,手动制作计算机控制代理的行为是繁琐且参数依赖任务。从高级视图,手工设计的代理AI的过程通常从确定合适的动作序列的确定开始。一旦AI开发人员识别出这些序列,他通过指定它们之间的适当转换,他将它们合并为完整的行为。自动化技术,例如学习,树搜索和规划,位于AI工具集的另一端。它们不需要手动定义动作序列并自动适应参数更改。然而,由于其性能足迹和缺乏立即设计师控制,AI开发人员不愿意将它们纳入游戏中。我们提出了一种方法,鉴于问题域的符号定义,可以自动从目标导向的动作规划(GOAP)中提取透明行为模型。该方法首先观察到蒙特卡罗模拟中的山坡表现出的行为,然后使用遗传算法演变合适的行为树。生成的行为树是可理解的,可削弱的,并且作为手工制作的行为。

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