其他分享
首页 > 其他分享> > 深度学习基础

深度学习基础

作者:互联网

什么是深度学习:
Deep learning is a machine learning technique.
It teaches a computer to filter inputs through layers to learn how to predict and classify information.

深度学习原理:
起源于人的神经元:
在这里插入图片描述
Neurons by themselves are kind of useless. But when you have lots of them, they work together to create some serious magic.
That connection where the signal passes is called a synapse.
So the neuron (or node) gets a signal or signals (input values), which pass through the neuron. That neuron delivers the output signal. Think of the input layer as your senses: the things you, for example, see, smell, and feel. These are independent variables for one single observation. This information is broken down into numbers and the bits of binary data that a computer can use. (You will need to either standardize or normalize these variables so that they’re within the same range.)
What about synapses? Each of the synapses gets assigned weights, which are crucial to Artificial Neural Networks (ANNs). Weights are how ANNs learn. By adjusting the weights, the ANN decides to what extent signals get passed along. When you’re training your network, you’re deciding how the weights are adjusted.
https://towardsdatascience.com/simply-deep-learning-an-effortless-introduction-45591a1c4abb

标签:how,signal,neuron,基础,学习,re,weights,learning,深度
来源: https://blog.csdn.net/m0_48004969/article/details/116156414