官术网_书友最值得收藏!

Activation functions

Activation functions are an integral part of any deep learning model. An activation function is a mathematical function that squashes the input values into a certain range. Suppose you feed in a neural network with real number inputs and initialize the weight matrix with random numbers and wish to use the output to classify; that is, you need the output value to be in between zero and one, but your neuron can output any value like -2.2453 or 17854.763. So, there is a need for scaling the output to a specific range. This is what an activation function does:

 

There are a lot of activation functions depending on the requirements. We will discuss some of the activation functions that are used quite often in deep learning.

主站蜘蛛池模板: 五河县| 丰顺县| 金沙县| 仁布县| 凌海市| 景洪市| 淳化县| 宁国市| 凤凰县| 错那县| 榆树市| 安乡县| 同江市| 旌德县| 黔江区| 阳山县| 高淳县| 临西县| 南部县| 禹城市| 西盟| 革吉县| 云梦县| 嘉黎县| 莱州市| 邓州市| 津南区| 古田县| 耒阳市| 通榆县| 上饶县| 思南县| 滕州市| 桃江县| 红桥区| 濮阳县| 海南省| 河南省| 泉州市| 麻江县| 凭祥市|