Abstract

This work proposes a methodology to program an artificial agent that can make decisions based on a naturalistic decision-making approach called recognition-primed decision model (RPDM). The proposed methodology represents the main constructs of RPDM in the language of Belief-Desire-Intention logic. RPDM considers decision-making as a synthesis of three phenomenal abilities of the human mind. The first is one’s use of experience to recognize a situation and suggest appropriate responses. The main concern here is on situation awareness because the decision-maker needs to establish that a current situation is the same or similar to one previously experienced, and the same solution is likely to work this time too. To this end, the proposed modeling approach uses a Markov logic network to develop an Experiential-Learning and Decision-Support module. The second component of RPDM deals with the cases when a decision-maker’s experience becomes secondary because the situation has not been recognized as typical. In this case, RPDM suggests a diagnostic mechanism that involves feature-matching, and, therefore, an ontology (of the domain of interest) based reasoning approach is proposed here to deal with all such cases. The third component of RPDM is the proposal that human beings use intuition and imagination (mental stimulation) to make sure whether a course of action should work in a given situation or not. Mental simulation is modeled here as a Bayesian network that computes the probability of occurrence of an effect when a cause is more likely. The agent-based model of RPDM has been validated with real (empirical) data to compare the simulated and empirical results and develop a correspondence in terms of the value of the result, as well as the reasoning.

Highlights

  • Naturalistic decision making (NDM) is a relatively new approach to decision-making that relies on situation awareness (SA) [20] rather than having a fixed set of principles from which to choose the best or optimal solution

  • The purpose of this study is to develop a realization of recognition-primed decision model (RPDM) suitable to be implemented in an agent that is expected to show human-centered artificial intelligence (AI)

  • The presence of smoke was a visual cue that has a dominance [52] over the other cues like audio signals, we argue that P1G1 could not utilize the prepare to abandon platform alarm (PAPA) alarm and the relevant public address (PA) to come to form the intention of moving to the LIFEBOAT station

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Summary

Introduction

Naturalistic decision making (NDM) is a relatively new approach to decision-making that relies on situation awareness (SA) [20] rather than having a fixed set of principles from which to choose the best or optimal solution. One of the prominent models of NDM is Klein’s [33] recognition-primed decision model. Appendix A.2 describes background information about the simulator used in this study. Ontology Ontology is defined as, “The study of the categories of things that exist or may exist in some domain” [60], p. The result of such a study comes in the form of a catalog that contains types of things that exist in a domain D from the point of view of a person who uses a language L to talk about D. There are different Conceptual Structures (CS) that can be used to express knowledge about things, in terms of types and relations, in an ontology

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