官术网_书友最值得收藏!

Deep Learning Fundamentals

In the previous chapter, we created some machine learning models using neural network packages in R. This chapter will look at some of the fundamentals of neural networks and deep learning by creating a neural network using basic mathematical and matrix operations. This application sample will be useful for explaining some key parameters in deep learning algorithms and some of the optimizations that allow them to train on large datasets. We will also demonstrate how to evaluate different hyper-parameters for models to find the best set. In the previous chapter, we briefly looked at the problem of overfitting; this chapter goes into that topic in more depth and looks at how you can overcome this problem. It includes an example use case using dropout, the most common regularization technique in deep learning.

This chapter covers the following topics:

  • Building neural networks from scratch in R
  • Common parameters in deep learning
  • Some key components in deep learning algorithms
  • Using regularization to overcome overfitting
  • Use case—improving out-of-sample model performance using dropout
主站蜘蛛池模板: 扶绥县| 余江县| 商城县| 宁晋县| 盘山县| 秀山| 太仓市| 封开县| 辽阳县| 合山市| 安泽县| 冷水江市| 资溪县| 广灵县| 息烽县| 木兰县| 丽江市| 同江市| 乌兰察布市| 房山区| 偃师市| 西充县| 鄂尔多斯市| 禄丰县| 东安县| 泌阳县| 宣汉县| 房产| 肇州县| 安阳市| 滨州市| 柯坪县| 沈阳市| 北票市| 平泉县| 连山| 乌苏市| 大荔县| 新龙县| 台南县| 大厂|