Input Layer

Why Trust Techopedia

What Does Input Layer Mean?

The input layer of a neural network is composed of artificial input neurons, and brings the initial data into the system for further processing by subsequent layers of artificial neurons. The input layer is the very beginning of the workflow for the artificial neural network.

Advertisements

Techopedia Explains Input Layer

Artificial neural networks are typically composed of input layers, hidden layers and output layers. Other components may include convolutional layers and encoding or decoding layers.

One of the distinct characteristics of the input layer is that artificial neurons in the input layer have a different role to play – experts explain this as the input layer being constituted of “passive” neurons that do not take in information from previous layers because they are the very first layer of the network. In general, artificial neurons are likely to have a set of weighted inputs and function on the basis of those weighted inputs – however, in theory, an input layer can be composed of artificial neurons that do not have weighted inputs, or where weights are calculated differently, for example, randomly, because the information is coming into the system for the first time. What is common in the neural network model is that the input layer sends the data to subsequent layers, in which the neurons do have weighted inputs.

Advertisements

Related Terms

Margaret Rouse
Technology Expert
Margaret Rouse
Technology Expert

Margaret é uma premiada redatora e professora conhecida por sua habilidade de explicar assuntos técnicos complexos para um público empresarial não técnico. Nos últimos vinte anos, suas definições de TI foram publicadas pela Que em uma enciclopédia de termos tecnológicos e citadas em artigos do New York Times, Time Magazine, USA Today, ZDNet, PC Magazine e Discovery Magazine. Ela ingressou na Techopedia em 2011. A ideia de Margaret de um dia divertido é ajudar os profissionais de TI e de negócios a aprenderem a falar os idiomas altamente especializados uns dos outros.