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Not Deep Learning but Autonomous Learning of Open Innovation for Sustainable Artificial Intelligence

机译:不是深度学习而是开放学习的自主学习以实现可持续人工智能

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What do we need for sustainable artificial intelligence that is not harmful but beneficial human life? This paper builds up the interaction model between direct and autonomous learning from the human’s cognitive learning process and firms’ open innovation process. It conceptually establishes a direct and autonomous learning interaction model. The key factor of this model is that the process to respond to entries from external environments through interactions between autonomous learning and direct learning as well as to rearrange internal knowledge is incessant. When autonomous learning happens, the units of knowledge determinations that arise from indirect learning are separated. They induce not only broad autonomous learning made through the horizontal combinations that surpass the combinations that occurred in direct learning but also in-depth autonomous learning made through vertical combinations that appear so that new knowledge is added. The core of the interaction model between direct and autonomous learning is the variability of the boundary between proven knowledge and hypothetical knowledge, limitations in knowledge accumulation, as well as complementarity and conflict between direct and autonomous learning. Therefore, these should be considered when introducing the interaction model between direct and autonomous learning into navigations, cleaning robots, search engines, etc. In addition, we should consider the relationship between direct learning and autonomous learning when building up open innovation strategies and policies.
机译:我们需要什么对人类无害却有益的可持续人工智能?本文建立了从人类认知学习过程到企业开放创新过程的直接和自主学习之间的交互模型。它在概念上建立了直接和自主的学习互动模型。该模型的关键因素在于,通过自主学习和直接学习之间的交互来响应外部环境的条目以及重新安排内部知识的过程是必要的。当自主学习发生时,间接学习产生的知识确定单元将被分离。他们不仅可以通过横向组合进行广泛的自主学习,而这种组合超越了直接学习中发生的组合,还可以通过纵向组合进行深入的自主学习,从而增加新的知识。直接和自主学习之间的交互模型的核心是,已证明的知识和假设知识之间的边界的可变性,知识积累的局限性以及直接和自主学习之间的互补性和冲突。因此,将直接和自主学习之间的交互模型引入导航,清洁机器人,搜索引擎等时,应考虑这些因素。此外,在建立开放式创新策略和政策时,应考虑直接学习和自主学习之间的关系。

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