Evaluating Machine Learning Models 在线电子书 图书标签: 机器学习 数据挖掘 MachineLearning SEA Experimentation&CausalInference Data_Science
发表于2025-01-24
Evaluating Machine Learning Models 在线电子书 pdf 下载 txt下载 epub 下载 mobi 下载 2025
实用~
评分实用~
评分实用~
评分20171115:有关模型评估的小册子,实用。1)工作流程分为原型阶段与发布阶段,原型阶段需要对模型来验证和离线评估,发布阶段需要在线评估。离线评估和在线评估用的指标不一样,当然数据集也不同。有可能存在分布漂移。2)回归指标评价。3)A/B测试。
评分实用~
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
Alice Zheng is the Director of Data Science at Dato, a Seattle-based startup that offers
powerful large-scale machine learning and graph analytics tools. A tool builder and an
expert in machine-learning algorithms, her research spans software diagnosis, computer
network security, and social network analysis.
评分
评分
评分
评分
Evaluating Machine Learning Models 在线电子书 pdf 下载 txt下载 epub 下载 mobi 下载 2025