21 - 25 April 2024
National Harbor, Maryland, US
Conference 13058 > Paper 13058-1
Paper 13058-1

Bridging the AI/ML gap with explainable symbolic causal models using information theory

On demand | Presented live 22 April 2024

Abstract

We report favorable preliminary findings of work in progress bridging the Artificial Intelligence (AI) gap between bottom-up data-driven Machine Learning (ML) and top-down conceptually driven symbolic reasoning. Our overall goal is automatic generation, maintenance and utilization of explainable, parsimonious, plausibly causal, probably approximately correct, hybrid symbolic/numeric models of the world, the self and other agents, for prediction, what-if (counter-factual) analysis and control. Our old Evolutionary Learning with Information Theoretic Evaluation of Ensembles (ELITE2) techniques quantify strengths of arbitrary multivariate nonlinear statistical dependencies, prior to discovering forms by which observed variables may drive others. We extend these to apply Granger causality, in terms of conditional Mutual Information (MI), to distinguish causal relationships and find their directions. As MI can reflect one observable driving a second directly or via a mediator, two being driven by a common cause, etc., to untangle the causal graph we will apply Pearl causality with its back- and front-door adjustments and criteria. Initial efforts verified that our information theoretic indices detect causality in noise corrupted data despite complex relationships among hidden variables with chaotic dynamics disturbed by process noise, The next step is to apply these information theoretic filters in Genetic Programming (GP) to reduce the population of discovered statistical dependencies to plausibly causal relationships, represented symbolically for use by a reasoning engine in a cognitive architecture. Success could bring broader generalization, using not just learned patterns but learned general principles, enabling AI/ML based systems to autonomously navigate complex unknown environments and handle “black swans”.

Presenter

Critical Technologies Inc. (United States)
Stuart W. Card has done 35 years of R&D in telecom, radar, fault tolerant storage, neural nets, cable modems, airborne networks, etc. His Navy training included operating aircraft, ships and submarines. He cofounded the first commercial Internet provider in Central NY. His PhD applied information theory to evolutionary algorithm based machine learning. At Quotidian Engineering & Development Corp. (QED) he focuses on distributed ledger technologies (blockchain based cryptocurrencies and smart contracts), especially for un-/semi-attended transactions (e.g., vending machines). At Critical Technologies Inc. (CTI) he currently focuses on integration of remotely attestable, formally verifiable, open source, trustworthy systems, from hardened hardware through resilient network protocols to explainable/causal AI/ML. At AX Enterprize he currently focuses on Uncrewed Aircraft Systems. His concerns are existential threats of complex interdependent networks and autonomous cyber-physical systems.
Application tracks: AI/ML
Presenter/Author
Critical Technologies Inc. (United States)