- MATLAB for Machine Learning
- Giuseppe Ciaburro
- 190字
- 2021-07-02 19:37:36
Summary
In this chapter, we explored the amazing world of machine learning and took a tour of the most popular machine learning algorithms to choose the right one for our needs. To understand what is most suitable for our needs, we learned to perform a preliminary analysis. Then we analyzed how to build machine learning models step by step.
Afterwards, we discovered the machine learning capabilities in MATLAB for classification, regression, clustering, and deep learning, including apps for automated model training and code generation. We verified the MATLAB system requirements and platform availability for a correct installation.
Finally, we introduced the Statistics and Machine Learning Toolbox and Neural Network Toolbox. We learned what we can do with these tools, and what algorithms we need to use to solve our problems. We understood the role of statistics and algebra in machine learning and how MATLAB can help us.
In the next chapter, we will learn how to easily interact with the MATLAB workspace, import and organize our data in MATLAB, export data from the workspace, and organize the data in the correct format for the next phase of data analysis.
- Java逍遙游記
- 流量的秘密:Google Analytics網站分析與優化技巧(第2版)
- Java多線程編程實戰指南:設計模式篇(第2版)
- 深入實踐Spring Boot
- 基于免疫進化的算法及應用研究
- Python應用輕松入門
- 鋒利的SQL(第2版)
- Java 11 Cookbook
- 學Python也可以這么有趣
- 名師講壇:Spring實戰開發(Redis+SpringDataJPA+SpringMVC+SpringSecurity)
- RISC-V體系結構編程與實踐(第2版)
- Python 3.7從入門到精通(視頻教學版)
- JavaScript機器人編程指南
- Apache Solr PHP Integration
- Mastering SciPy