Long Summer Days: Grounded Learning of Words for the Uneven Cycles of Real World Events

Scott Heath, R. Schulz, David Ball, Janet Wiles
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引用次数: 4

Abstract

Time and space are fundamental to human language and embodied cognition. In our early work we investigated how Lingodroids, robots with the ability to build their own maps, could evolve their own geopersonal spatial language. In subsequent studies we extended the framework developed for learning spatial concepts and words to learning temporal intervals. This paper considers a new aspect of time, the naming of concepts like morning, afternoon, dawn, and dusk, which are events that are part of day-night cycles, but are not defined by specific time points on a clock. Grounding of such terms refers to events and features of the diurnal cycle, such as light levels. We studied event-based time in which robots experienced day-night cycles that varied with the seasons throughout a year. Then we used meet-at tasks to demonstrate that the words learned were grounded, where the times to meet were morning and afternoon, rather than specific clock times. The studies show how words and concepts for a novel aspect of cyclic time can be grounded through experience with events rather than by times as measured by clocks or calendars.
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漫长的夏日:现实世界事件不均匀周期的基础学习
时间和空间是人类语言和具身认知的基础。在我们早期的工作中,我们研究了Lingodroids,一种能够构建自己地图的机器人,如何进化出自己的地理空间语言。在随后的研究中,我们将空间概念和词汇的学习框架扩展到时间间隔的学习。本文考虑了时间的一个新方面,即早晨、下午、黎明和黄昏等概念的命名,这些概念是昼夜循环的一部分,但不是由时钟上的特定时间点定义的。这些术语的基础指的是昼夜周期的事件和特征,例如光照水平。我们研究了基于事件的时间,其中机器人经历了随着一年中的季节变化而变化的昼夜周期。然后,我们使用会面任务来证明所学的单词是有基础的,会面的时间是上午和下午,而不是特定的时钟时间。这些研究表明,循环时间的一个新方面的词汇和概念是如何通过对事件的经验而不是通过时钟或日历测量的时间来建立的。
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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