Current cyber-related security and safety risks are unprecedented, due in no small part to information overload
and skilled cyber-analyst shortages. Advances in decision support and Situation Awareness (SA) tools are
required to support analysts in risk mitigation. Inspired by human intelligence, research in Artificial Intelligence
(AI) and Computational Intelligence (CI) have provided successful engineering solutions in complex domains
including cyber. Current AI approaches aggregate large volumes of data to infer the general from the particular,
i.e. inductive reasoning (pattern-matching) and generally cannot infer answers not previously programmed.
Whereas humans, rarely able to reason over large volumes of data, have successfully reached the top of the
food chain by inferring situations from partial or even partially incorrect information, i.e. abductive reasoning
(pattern-completion); generating a hypothetical explanation of observations. In order to achieve an engineering
advantage in computational decision support and SA we leverage recent research in human consciousness, the role
consciousness plays in decision making, modeling the units of subjective experience which generate consciousness,
qualia. This paper introduces a novel computational implementation of a Cognitive Modeling Architecture (CMA)
which incorporates concepts of consciousness. We apply our model to the malware type-classification task. The
underlying methodology and theories are generalizable to many domains.