Self-organization of complex morphological patterns from local interactions is a fascinating phenomenon in many natural and artificial systems. In the artificial world, typical examples of such morphogenetic systems are cellular automata. Yet, their mechanisms are often very hard to grasp and so far scientific discoveries of novel patterns have primarily been relying on manual tuning and ad hoc exploratory search. The problem of automated diversity-driven discovery in these systems was recently introduced [26, 62], highlighting that two key ingredients are autonomous exploration and unsupervised representation learning to describe "relevant" degrees of variations in the patterns. In this paper, we motivate the need for what we call Meta-diversity search, arguing that there is not a unique ground truth interesting diversity as it strongly depends on the final observer and its motives. Using a continuous game-of-life system for experiments, we provide empirical evidences that relying on monolithic architectures for the behavioral embedding design tends to bias the final discoveries (both for hand-defined and unsupervisedly-learned features) which are unlikely to be aligned with the interest of a final end-user. To address these issues, we introduce a novel dynamic and modular architecture that enables unsupervised learning of a hierarchy of diverse representations. Combined with intrinsically motivated goal exploration algorithms, we show that this system forms a discovery assistant that can efficiently adapt its diversity search towards preferences of a user using only a very small amount of user feedback.
翻译:本地互动的复杂形态模式的自我组织是许多自然和人工系统中令人着迷的现象。在人工世界中,这种形态化系统的典型实例是蜂窝式自动成形系统。然而,它们的机制往往很难掌握,到目前为止,新模式的科学发现主要依靠人工调试和临时探索搜索。这些系统中的自动化多样性驱动发现问题最近被引入[26、62],强调两个关键要素是自主探索和未经监督的代言学习,以描述模式中的“相关”差异程度。在本文中,我们提出需要我们所谓的“元多样化搜索”的典型例子,认为不存在独特的地面真象,有趣的多样性在很大程度上取决于最终观察者及其动机。我们利用持续的生活游戏系统进行实验,我们提供了经验证据,证明这些系统依赖单一的外观结构来嵌入行为嵌入设计,往往偏向最终发现(包括手定义的和未经监督的认知特征)的“相关”程度。在本文件中,不可能与最终最终用户的利益相一致。为了解决这些问题,我们引入了一个独特的地面真象,我们引入了一种具有动机的用户动态和结构结构的多样化结构,从而能够以创新的、动态和动态的模型化的模型形式来显示我们不具有高度的多样化的系统。