首页> 外文期刊>ACM Transactions on Interactive Intelligent Systems >Expressive Cognitive Architecture for a Curious Social Robot
【24h】

Expressive Cognitive Architecture for a Curious Social Robot

机译:一个好奇的社会机器人的表现力认知架构

获取原文
获取原文并翻译 | 示例

摘要

Artificial curiosity, based on developmental psychology concepts wherein an agent attempts to maximize its learning progress, has gained much attention in recent years. Similarly, social robots are slowly integrating into our daily lives, in schools, factories, and in our homes. In this contribution, we integrate recent advances in artificial curiosity and social robots into a single expressive cognitive architecture. It is composed of artificial curiosity and social expressivity modules and their unique link, i.e., the robot verbally and non-verbally communicates its internally estimated learning progress, or learnability, to its human companion. We implemented this architecture in an interaction where a fully autonomous robot took turns with a child trying to select and solve tangram puzzles on a tablet. During the curious robot's turn, it selected its estimated most learnable tangram to play, communicated its selection to the child, and then attempted at solving it. We validated the implemented architecture and showed that the robot learned, estimated its learnability, and improved when its selection was based on its learnability estimation. Moreover, we ran a comparison study between curious and non-curious robots, and showed that the robot's curiosity-based behavior influenced the child's selections. Based on the artificial curiosity module of the robot, we have formulated an equation that estimates each child's moment-by-moment curiosity based on their selections. This analysis revealed an overall significant decrease in estimated curiosity during the interaction. However, this drop in estimated curiosity was significantly larger with the non-curious robot, compared to the curious one. These results suggest that the new architecture is a promising new approach to integrate state-of-the-art curiosity-based algorithms to the growing field of social robots.
机译:基于发育心理学概念的人工好奇,近年来,代理商试图最大化其学习进度的巨大关注。同样,社会机器人正在慢慢融入我们的日常生活,在学校,工厂和家庭中。在这一贡献中,我们将人为好奇心和社会机器人的最近进步整合到一个表达认知建筑中。它由人为好奇心和社会富有效力模块组成,以及它们独特的链接,即机器人口头和非口头地将其内部估计的学习进度或学习性传达给其人类伴侣。我们在一个完全自治机器人轮流与一个孩子在平板电脑上选择和解决Tangram Puzzles的互动中实施了这种架构。在奇怪的机器人转弯期间,它选择了它估计最可学习的葡萄牙图来玩,将其选择传达给孩子,然后尝试解决它。我们验证了实施的架构,并显示了机器人学习,估计其可读性,并在其选择基于其学习估计时得到改善。此外,我们在好奇和非好奇机器人之间运行了比较研究,并表明机器人的好奇心行为影响了孩子的选择。基于机器人的人工化妆品模块,我们制定了一种等式,估计每个孩子的逐步效果基于它们的选择。该分析显示在相互作用期间估计的好奇心的总体显着降低。然而,与非奇妙的机器人相比,这种估计好奇心的这种估计的好奇程度明显变大。这些结果表明,新的架构是一个有希望的新方法,将基于最先进的好奇心算法整合到社会机器人的越来越多的社会领域。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号