ARTIFICIAL INTELLIGENCE ORDERED 3D VERTEX IMPORTANCE
Abstract
Ranking nodes of multidimensional networks is crucial in many areas of research, including selecting and determining the importance of decisions. Some decisions are significantly more important than others, and so is their weight categorization. This paper defines a new method for determining the weight of decisions using a completely new method of using artificial intelligence for weight ranking of three-dimensional network nodes, improving the existing Ordered Statistics Vertex Extraction and Tracking Algorithm (OSVETA) based on modulation of quantized indices (QIM) and error correction codes. The technique we propose in this paper offers significant improvements in the efficiency of deciding on the importance of network nodes in relation to statistical OSVETA criteria, replacing heuristic methods with methods of precise prediction of modern neural networks. The new technique of using artificial intelligence enables a significantly better definition of the geometric network and a better assessment of topological characteristics. The contributions of the new method result in greater precision in defining stable decision nodes, significantly reducing the probability of deleting decision nodes.
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