-
Evaluating Machine Learning Models [2015]下载
资源介绍
Evaluating Machine Learning Models
A Beginner's Guide to Key Concepts and Pitfalls
http://www.oreilly.com/data/free/evaluating-machine-learning-models.csp
Data science today is a lot like the Wild West: there’s endless opportunity and excitement, but also a lot of chaos and confusion. If you’re new to data science and applied machine learning, evaluating a machine-learning model can seem pretty overwhelming. Now you have help. With this O’Reilly report, machine-learning expert Alice Zheng takes you through the model evaluation basics.
In this overview, Zheng first introduces the machine-learning workflow, and then dives into evaluation metrics and model selection. The latter half of the report focuses on hyperparameter tuning and A/B testing, which may benefit more seasoned machine-learning practitioners.
With this report, you will:
Learn the stages involved when developing a machine-learning model for use in a software application
Understand the metrics used for supervised learning models, including classification, regression, and ranking
Walk through evaluation mechanisms, such as hold?out validation, cross-validation, and bootstrapping
Explore hyperparameter tuning in detail, and discover why it’s so difficult
Learn the pitfalls of A/B testing, and examine a promising alternative: multi-armed bandits
Get suggestions for further reading, as well as useful software packages
- 上一篇: Evaluating-discourse-in-NMT
- 下一篇: 系统还原卸载工具.EXE