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Sigmoid activation units
The output of the sigmoid activation unit, y, as a function of its total input, x, is expressed as follows:
![](https://epubservercos.yuewen.com/759B01/19470382808830006/epubprivate/OEBPS/Images/e72ceed8-eaaa-4d3e-bc39-256e36d389e2.png?sign=1738884641-QpCQ9wTxJTSIhUQ8pIA9UyrzQ5Bjitey-0-cd661cd5f087303050d846c289c0bce5)
Since the sigmoid activation unit response is a nonlinear function, as shown in the following graph, it is used to introduce nonlinearity in the neural network:
![](https://epubservercos.yuewen.com/759B01/19470382808830006/epubprivate/OEBPS/Images/f54ce333-0cdb-400f-b9d1-22d60475291f.png?sign=1738884641-XJnFlKXIsVJjkr5q0pmMztM4jI2KE2sL-0-ae9425ea1cdc11ce9ebb116ba9828bdc)
Figure 1.6: Sigmoid activation function
Any complex process in nature is generally nonlinear in its input-output relation, and hence, we need nonlinear activation functions to model them through neural networks. The output probability of a neural network for a two-class classification is generally given by the output of a sigmoid neural unit, since it outputs values from zero to one. The output probability can be represented as follows:
![](https://epubservercos.yuewen.com/759B01/19470382808830006/epubprivate/OEBPS/Images/4e502901-d686-46cf-ba1c-e0b11d2c2707.png?sign=1738884641-PQGLKQxIWX0923t4W7SugknH4qkyyiH8-0-bb345844b4af274d40263413a1d28cb1)
Here, x represents the total input to the sigmoid unit in the output layer.