The Definitive Guide to Activation Functions! (Part-1)
The purpose of this article helps you to understand the last layer of neurons (activation function and loss function) used in a neural network depending on your business goal!
This article assumes the reader has a knowledge of machine learning, deep learning concepts.
Why do we use the activation function?
First, let us discuss the architecture of Perceptron. It has linear and non-linear functions.
Each perception has two-part.
Linear :
Non-Linear:
Each perception has two functions: linear and non-linear. The work of linear function is that it simply adds the input with weight and adds bias to that.
The architecture of ANN:
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Summation:
Non-Linear Function:
Working of single Perceptron:
This is a Single Perceptron, all the hidden nodes are perceptron, by use of this, the Network can learn from mistakes and reduce the loss functions.
In the next part, we will discuss what are all the activation functions and the types of activation functions.
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Name: R.Aravindan
Company: Artificial Neurons.AI
Position: Content writer