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Basic emotions and adaptation. A computational and evolutionary model

机译:基本情绪和适应能力。计算和进化模型

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摘要

The core principles of the evolutionary theories of emotions declare that affective states represent crucial drives for action selection in the environment and regulated the behavior and adaptation of natural agents in ancestrally recurrent situations. While many different studies used autonomous artificial agents to simulate emotional responses and the way these patterns can affect decision-making, few are the approaches that tried to analyze the evolutionary emergence of affective behaviors directly from the specific adaptive problems posed by the ancestral environment. A model of the evolution of affective behaviors is presented using simulated artificial agents equipped with neural networks and physically inspired on the architecture of the iCub humanoid robot. We use genetic algorithms to train populations of virtual robots across generations, and investigate the spontaneous emergence of basic emotional behaviors in different experimental conditions. In particular, we focus on studying the emotion of fear, therefore the environment explored by the artificial agents can contain stimuli that are safe or dangerous to pick. The simulated task is based on classical conditioning and the agents are asked to learn a strategy to recognize whether the environment is safe or represents a threat to their lives and select the correct action to perform in absence of any visual cues. The simulated agents have special input units in their neural structure whose activation keep track of their actual “sensations” based on the outcome of past behavior. We train five different neural network architectures and then test the best ranked individuals comparing their performances and analyzing the unit activations in each individual’s life cycle. We show that the agents, regardless of the presence of recurrent connections, spontaneously evolved the ability to cope with potentially dangerous environment by collecting information about the environment and then switching their behavior to a genetically selected pattern in order to maximize the possible reward. We also prove the determinant presence of an internal time perception unit for the robots to achieve the highest performance and survivability across all conditions.
机译:情绪进化理论的核心原理表明,情感状态代表了环境中行为选择的关键驱动力,并调节了祖先复发情况下自然因素的行为和适应。尽管许多不同的研究使用自主的人工代理来模拟情绪反应以及这些模式影响决策的方式,但很少有方法直接从祖先环境所引起的特定适应性问题来分析情感行为的进化出现。使用配备了神经网络的模拟人工代理,介绍了情感行为演变的模型,并从物理上启发了iCub类人机器人的体系结构。我们使用遗传算法来训练跨代的虚拟机器人种群,并研究在不同实验条件下基本情绪行为的自发出现。特别是,我们专注于研究恐惧情绪,因此,人工制剂探索的环境可能包含安全或危险的刺激。模拟任务基于经典条件,要求代理商学习一种策略,以识别环境是否安全或对其生命构成威胁,并选择正确的行动以在没有任何视觉提示的情况下执行。模拟的特工在其神经结构中具有特殊的输入单元,其输入会根据过去行为的结果来跟踪其实际“感觉”。我们训练了五种不同的神经网络架构,然后测试排名最高的个人,比较他们的表现,并分析每个人生命周期中的单元激活情况。我们表明,无论是否存在经常性联系,这些行为者都通过收集有关环境的信息,然后将其行为切换为遗传选择的模式,以使可能的回报最大化而自发地发展了应对潜在危险环境的能力。我们还证明了内部时间感知单元的确定性存在,以便使机器人在所有条件下都具有最高的性能和生存能力。

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