We discuss how over the last 30 to 50 years, Artificial Intelligence (AI) systems that focused only on data have been handicapped, and how knowledge has been critical in developing smarter, intelligent, and more effective systems. In fact, the vast progress in AI can be viewed in terms of the three waves of AI as identified by DARPA. During the first wave, handcrafted knowledge has been at the center-piece, while during the second wave, the data-driven approaches supplanted knowledge. Now we see a strong role and resurgence of knowledge fueling major breakthroughs in the third wave of AI underpinning future intelligent systems as they attempt human-like decision making, and seek to become trusted assistants and companions for humans. We find a wider availability of knowledge created from diverse sources, using manual to automated means both by repurposing as well as by extraction. Using knowledge with statistical learning is becoming increasingly indispensable to help make AI systems more transparent and auditable. We will draw a parallel with the role of knowledge and experience in human intelligence based on cognitive science, and discuss emerging neuro-symbolic or hybrid AI systems in which knowledge is the critical enabler for combining capabilities of the data-intensive statistical AI systems with those of symbolic AI systems, resulting in more capable AI systems that support more human-like intelligence.
翻译:过去30至50年来,我们讨论了人工智能(AI)系统(仅注重数据的人工智能(AI)系统是如何被阻碍的,知识如何在开发智能、智能和更有效的系统方面至关重要。事实上,从DARPA所查明的三波人工智能中可以看到AI的巨大进步。在第一波中,手工制作的知识处于中心位置,而在第二波中,由数据驱动的方法取代了知识。现在我们看到知识的强大作用和死灰复燃在支持未来智能系统的第三波AI的第三波重大突破中起到了促进作用,这些系统试图作出与人类相似的决策,并寻求成为人类信任的助手和同伴。我们发现,从不同来源创造的知识的可广泛获得,使用手工和自动手段,通过再处理和提取。利用统计学知识越来越不可或缺,有助于使AI系统更加透明和可审计。我们将与人类认知科学的知识和经验的作用相平行,并讨论新出现的神经共质或混合的AI系统,在这些系统中,知识是使AI系统具有更强大、更具象征力的智能支持力的AI系统,从而能够将数据系统与那些具有较具象征力的AI的能力的AI系统合并。