In today's world, Semantic neural network has become a topic of increasing interest to people of all ages and backgrounds. Whether due to its impact on society, its historical relevance or its influence on popular culture, Semantic neural network has captured the attention of millions of people around the world. In this article, we will explore the importance of Semantic neural network in depth, analyzing its evolution over time and examining its impact on different aspects of everyday life. From its emergence to its current relevance, Semantic neural network has much to offer in terms of reflection and understanding of the world around us.
This article possibly contains original research. (September 2007) |
Semantic neural network (SNN) is based on John von Neumann's neural network and Nikolai Amosov M-Network.[1][2] There are limitations to a link topology for the von Neumann’s network but SNN accept a case without these limitations. Only logical values can be processed, but SNN accept that fuzzy values can be processed too. All neurons into the von Neumann network are synchronized by tacts. For further use of self-synchronizing circuit technique SNN accepts neurons can be self-running or synchronized.
In contrast to the von Neumann network there are no limitations for topology of neurons for semantic networks. It leads to the impossibility of relative addressing of neurons as it was done by von Neumann. In this case an absolute readdressing should be used. Every neuron should have a unique identifier that would provide a direct access to another neuron. Of course, neurons interacting by axons-dendrites should have each other's identifiers. An absolute readdressing can be modulated by using neuron specificity as it was realized for biological neural networks.
There’s no description for self-reflectiveness and self-modification abilities into the initial description of semantic networks . But in a conclusion had been drawn about the necessity of introspection and self-modification abilities in the system. For maintenance of these abilities a concept of pointer to neuron is provided. Pointers represent virtual connections between neurons. In this model, bodies and signals transferring through the neurons connections represent a physical body, and virtual connections between neurons are representing an astral body. It is proposed to create models of artificial neuron networks on the basis of virtual machine supporting the opportunity for paranormal effects.
SNN is generally used for natural language processing.