- Deep Learning with Keras
- Antonio Gulli Sujit Pal
- 353字
- 2021-07-02 23:58:06
A practical overview of backpropagation
Multilayer perceptrons learn from training data through a process called backpropagation. The process can be described as a way of progressively correcting mistakes as soon as they are detected. Let's see how this works.
Remember that each neural network layer has an associated set of weights that determines the output values for a given set of inputs. In addition to that, remember that a neural network can have multiple hidden layers.
In the beginning, all the weights have some random assignment. Then the net is activated for each input in the training set: values are propagated forward from the input stage through the hidden stages to the output stage where a prediction is made (note that we have kept the following diagram simple by only representing a few values with green dotted lines, but in reality, all the values are propagated forward through the network):

Since we know the true observed value in the training set, it is possible to calculate the error made in prediction. The key intuition for backtracking is to propagate the error back and use an appropriate optimizer algorithm, such as a gradient descent, to adjust the neural network weights with the goal of reducing the error (again for the sake of simplicity, only a few error values are represented):

The process of forward propagation from input to output and backward propagation of errors is repeated several times until the error gets below a predefined threshold. The whole process is represented in the following diagram:

The features represent the input and the labels are here used to drive the learning process. The model is updated in such a way that the loss function is progressively minimized. In a neural network, what really matters is not the output of a single neuron but the collective weights adjusted in each layer. Therefore, the network progressively adjusts its internal weights in such a way that the prediction increases the number of labels correctly forecasted. Of course, using the right set features and having a quality labeled data is fundamental to minimizing the bias during the learning process.
- 電腦軟硬件維修大全(實例精華版)
- SDL Game Development
- Mastering Manga Studio 5
- 從零開始學51單片機C語言
- Svelte 3 Up and Running
- The Deep Learning with Keras Workshop
- OUYA Game Development by Example
- 計算機組裝與維護(第3版)
- Building 3D Models with modo 701
- 3D Printing Blueprints
- 電腦橫機使用與維修
- Istio實戰指南
- 詳解FPGA:人工智能時代的驅動引擎
- Service Mesh微服務架構設計
- Exceptional C++:47個C++工程難題、編程問題和解決方案(中文版)