CYAIOct 8, 2021

Machine Learning Featurizations for AI Hacking of Political Systems

arXiv:2110.09231v2
AI Analysis

This work speculatively addresses the problem of AI-driven political destabilization, but it is incremental as it builds on existing concepts without empirical validation.

The paper explores potential machine learning featurizations for AI systems that could hack political systems, focusing on graph and sequence representations to predict legislative outcomes and attributes.

What would the inputs be to a machine whose output is the destabilization of a robust democracy, or whose emanations could disrupt the political power of nations? In the recent essay "The Coming AI Hackers," Schneier (2021) proposed a future application of artificial intelligences to discover, manipulate, and exploit vulnerabilities of social, economic, and political systems at speeds far greater than humans' ability to recognize and respond to such threats. This work advances the concept by applying to it theory from machine learning, hypothesizing some possible "featurization" (input specification and transformation) frameworks for AI hacking. Focusing on the political domain, we develop graph and sequence data representations that would enable the application of a range of deep learning models to predict attributes and outcomes of political, particularly legislative, systems. We explore possible data models, datasets, predictive tasks, and actionable applications associated with each framework. We speculate about the likely practical impact and feasibility of such models, and conclude by discussing their ethical implications.

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Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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