人类和机器的共同学习系统

Takaya Ogiso, K. Yamauchi, Norio Ishii, Yuri Suzuki
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引用次数: 1

摘要

人工智能系统经常被用来解决我们日常生活中的各种问题。然而,这些系统需要特定问题的大数据来促进他们的学习过程。不幸的是,对于未知的环境,没有先前可用的实例来学习。为了在未知环境中支持这种学习,我们提出了一种新的混合学习系统,促进人类和人工智能系统之间的协作学习。在这项研究中,我们通过使用简化的颜色设计任务验证了所提出的系统加速了人类和机器的学习。
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A co-learning system for humans and machines
Artificial intelligence systems are frequently used to solve various problems in our daily lives. However, these systems require problem-specific big data to facilitate their learning processes. Unfortunately, for unknown environments, there are no previous instances available for learning. To support such learning in unknown environments, we propose a novel hybrid learning system that facilitates collaborative learning between humans and artificial intelligence systems. In this study, we verified that the proposed system accelerated the both human and machine learning by employing a simplified color design task.
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