Keywords :
Artificial Intelligence; Decision Making; Layers; Machine Learning Hierarchical Information Network; Protocol; Decisions makings; Hierarchical information; Human intelligence; Human-like intelligence; Information networks; Input and outputs; Layer; Machine learning hierarchical information network; Machine-learning; Problem-solving; Computer Networks and Communications; Information Systems
Abstract :
[en] Artificial intelligence (AI) advancements allow machines to achieve human-like intelligence. Problem-solving and decision-making are two mental abilities to measure human intelligence. Building a generalized representational model for various inputs and outputs is essential to obtaining such humanlike capabilities. Many scholars tried to articulate different models from different perspectives. However, there is a gap in establishing an overall AI-oriented hierarchical framework. This study proposes a novel model known as the emerged AI protocol that consists of seven abstractive layers capable of providing a meaningful solution for a given problem. In contrast to previous hierarchies, we argue that this unique model is conceptually evident, logically consistent, theoretically compelling, and practically adaptable. We aim to create a generalized model that can be implemented by various machine learning (ML) algorithms for problem-solving and decision-making.
Funding text :
This research was funded in whole, or part, by the Luxembourg National Research Fund (FNR) grant reference
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