Neural Network
A family of machine learning models that learns patterns through layered transformations
#Neural Network#artificial neural network#ANN#deep learning model
What is a neural network?
A neural network is a model architecture inspired by interconnected neurons.
It transforms input data through multiple layers to produce predictions or classifications.
How does it learn?
During training, weights and biases are adjusted to reduce error between outputs and targets.
Backpropagation and gradient-based optimization are typically used together.
Why does it matter?
Neural networks are highly effective for unstructured data such as images, audio, and text.
They are a core technical foundation behind modern AI systems.
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