Litcius/Paper detail

Building Human-Like Artificial Agents: A General Cognitive Algorithm for Emulating Human Decision-Making in Dynamic Environments

Cleotilde González

2023Perspectives on Psychological Science33 citationsDOI

Abstract

One of the early goals of artificial intelligence (AI) was to create algorithms that exhibited behavior indistinguishable from human behavior (i.e., human-like behavior). Today, AI has diverged, often aiming to excel in tasks inspired by human capabilities and outperform humans, rather than replicating human cogntion and action. In this paper, I explore the overarching question of whether computational algorithms have achieved this initial goal of AI. I focus on dynamic decision-making, approaching the question from the perspective of computational cognitive science. I present a general cognitive algorithm that intends to emulate human decision-making in dynamic environments, as defined in instance-based learning theory (IBLT). I use the cognitive steps proposed in IBLT to organize and discuss current evidence that supports some of the human-likeness of the decision-making mechanisms. I also highlight the significant gaps in research that are required to improve current models and to create higher fidelity in computational algorithms to represent human decision processes. I conclude with concrete steps toward advancing the construction of algorithms that exhibit human-like behavior with the ultimate goal of supporting human dynamic decision-making.

Topics & Concepts

Computer scienceFidelityDynamic decision-makingArtificial intelligenceCognitionHuman intelligencePerspective (graphical)Action (physics)Focus (optics)Machine learningCognitive sciencePsychologyTelecommunicationsQuantum mechanicsPhysicsOpticsNeuroscienceAI-based Problem Solving and PlanningComplex Systems and Decision MakingCognitive Science and Mapping
Building Human-Like Artificial Agents: A General Cognitive Algorithm for Emulating Human Decision-Making in Dynamic Environments | Litcius