Knowledge-Integrated Informed AI for National Security
Anu K. Myne, Kevin J. Leahy, Ryan J. Soklaski

TL;DR
This paper explores knowledge-integrated informed AI, combining data and domain knowledge, highlighting its potential to improve national security applications while addressing limitations of purely data-driven approaches.
Contribution
It reviews examples of knowledge integration in deep learning and reinforcement learning, discusses trade-offs, and proposes future research directions for national security.
Findings
Knowledge-integrated AI improves performance in security tasks.
Trade-offs exist between knowledge use and data reliance.
Potential to mitigate risks of purely data-driven AI in security contexts.
Abstract
The state of artificial intelligence technology has a rich history that dates back decades and includes two fall-outs before the explosive resurgence of today, which is credited largely to data-driven techniques. While AI technology has and continues to become increasingly mainstream with impact across domains and industries, it's not without several drawbacks, weaknesses, and potential to cause undesired effects. AI techniques are numerous with many approaches and variants, but they can be classified simply based on the degree of knowledge they capture and how much data they require; two broad categories emerge as prominent across AI to date: (1) techniques that are primarily, and often solely, data-driven while leveraging little to no knowledge and (2) techniques that primarily leverage knowledge and depend less on data. Now, a third category is starting to emerge that leverages both…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Adversarial Robustness in Machine Learning
