QUANTUM NEURAL PARADIGMS AND LEARNING DYNAMICS: DE - Softcover

M. V, Ishwarya; L, Prinslin L; K. E, Narayana

 
9786209841262: QUANTUM NEURAL PARADIGMS AND LEARNING DYNAMICS: DE

Inhaltsangabe

Neural networks, inspired by biological neural systems, consist of interconnected layers of artificial neurons that process and transmit information. Each neuron receives input signals, applies a transformation, and passes the result to subsequent layers. Through a process known as training, neural networks adjust their internal parameters to minimize errors and improve performance on specific tasks. This adaptability makes them highly effective for applications such as image recognition, natural language processing, and predictive analytics. The strength of neural networks lies in their ability to learn complex patterns from data, making them indispensable tools in modern artificial intelligence.The integration of quantum computing and neural networks is motivated by the limitations of classical approaches when dealing with high-dimensional data and complex optimization problems. Classical neural networks require significant computational resources for training, especially as the size of the network and the volume of data increase.

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