Affiliation:
1. Independent Researcher, Ramat Gan 5270006, Israel
Abstract
This paper investigates the possibility of developing artificial intelligence (AI) systems capable of exhibiting limited cognitive processes analogous to aspects of human religious belief. The literature review pertains to the most essential cognitive mechanisms of belief and the most relevant models for AI with belief. Accordingly, and as a result of the theoretical review, drawing inspiration from belief cognition to endow AI with enhanced cognitive capacities, the core objective is to try to build a theoretical model that simulates cognitive processes of belief, equipping AI agents with abilities to recognize subtle divine synchronistic patterns and form provisional convictions computationally modeled on belief cognitive mechanisms. The hypothesis is that this could hopefully unlock a higher level of cognitive function and could enhance capacities for nuanced, context-sensitive reasoning and prediction for these AI models. The method is a novel “Trans-Belief” theoretical model that will be considered, integrating fuzzy and doxastic logic models to trace synchronistic divine patterns, in the results section. Finally, in the discussion, additional moral aspects and the nature of the data set of the model will be examined, and directions for future research will be proposed. While not implying AI can or should fully replicate complex human spirituality, tentative artificial belief could impart beneficial qualities like contextual awareness. However, developing belief-inspired algorithms requires grappling with profound philosophical questions regarding singularity and implementing strong ethical safeguards on any AI-granted agency over human affairs. This represents an early exploration of belief’s implications for machine learning, necessitating future research and discussion.
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