Shannon Holes, Black Holes, and Knowledge: The Essential Tension for Autonomous Human–Machine Teams Facing Uncertainty

Knowledge Pub Date : 2024-07-05 DOI:10.3390/knowledge4030019
William Lawless, Ira S. Moskowitz
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Abstract

We develop a new theory of knowledge with mathematics and a broad-based series of case studies to seek a better understanding of what constitutes knowledge in the field and its value for autonomous human–machine teams facing uncertainty in the open. Like humans, as teammates, artificial intelligence (AI) machines must be able to determine what constitutes the usable knowledge that contributes to a team’s success when facing uncertainty in the field (e.g., testing “knowledge” in the field with debate; identifying new knowledge; using knowledge to innovate), its failure (e.g., troubleshooting; identifying weaknesses; discovering vulnerabilities; exploitation using deception), and feeding the results back to users and society. It matters not whether a debate is public, private, or unexpressed by an individual human or machine agent acting alone; regardless, in this exploration, we speculate that only a transparent process advances the science of autonomous human–machine teams, assists in interpretable machine learning, and allows a free people and their machines to co-evolve. The complexity of the team is taken into consideration in our search for knowledge, which can also be used as an information metric. We conclude that the structure of “knowledge”, once found, is resistant to alternatives (i.e., it is ordered); that its functional utility is generalizable; and that its useful applications are multifaceted (akin to maximum entropy production). Our novel finding is the existence of Shannon holes that are gaps in knowledge, a surprising “discovery” to only find Shannon there first.
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香农洞、黑洞和知识:面对不确定性的自主人机团队的基本张力
我们用数学和一系列基础广泛的案例研究发展了一种新的知识理论,以寻求更好地理解什么是现场知识,以及它对于在开放环境中面对不确定性的自主人机团队的价值。与人类一样,作为队友,人工智能(AI)机器必须能够确定什么是有助于团队在面对现场不确定性时取得成功的可用知识(例如,通过辩论测试现场 "知识";识别新知识;利用知识进行创新),什么是失败的可用知识(例如,排除故障;识别弱点;发现漏洞;利用欺骗进行利用),并将结果反馈给用户和社会。无论辩论是公开的、私下的,还是人类个体或机器代理单独行动时未表达出来的,这都不重要;无论如何,在这次探索中,我们推测只有透明的过程才能推进自主人机团队的科学发展,协助可解释的机器学习,并允许自由的人和他们的机器共同进化。在寻找知识的过程中,我们会考虑到团队的复杂性,这也可以作为一种信息度量标准。我们的结论是,"知识 "的结构一旦找到,就能抵御替代品的影响(即它是有序的);它的功能效用是可通用的;它的有用应用是多方面的(类似于最大熵生产)。我们的新发现是香农洞的存在,它是知识中的空白,这是一个令人惊讶的 "发现",因为只有香农洞首先存在。
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