Explainable Machine Learning with LIME and H2O in R
54 个评分

2,087 人已注册
Use LIME and H2O for automatic and interpretable machine learning
Build Classification Models with AutoML
Explain and Interpret the Model Predictions using LIME
54 个评分
2,087 人已注册
Use LIME and H2O for automatic and interpretable machine learning
Build Classification Models with AutoML
Explain and Interpret the Model Predictions using LIME
Welcome to this hands-on, guided introduction to Explainable Machine Learning with LIME and H2O in R. By the end of this project, you will be able to use the LIME and H2O packages in R for automatic and interpretable machine learning, build classification models quickly with H2O AutoML and explain and interpret model predictions using LIME. Machine learning (ML) models such as Random Forests, Gradient Boosted Machines, Neural Networks, Stacked Ensembles, etc., are often considered black boxes. However, they are more accurate for predicting non-linear phenomena due to their flexibility. Experts agree that higher accuracy often comes at the price of interpretability, which is critical to business adoption, trust, regulatory oversight (e.g., GDPR, Right to Explanation, etc.). As more industries from healthcare to banking are adopting ML models, their predictions are being used to justify the cost of healthcare and for loan approvals or denials. For regulated industries that use machine learning, interpretability is a requirement. As Finale Doshi-Velez and Been Kim put it, interpretability is "The ability to explain or to present in understandable terms to a human.". To successfully complete the project, we recommend that you have prior experience with programming in R, basic machine learning theory, and have trained ML models in R. Note: This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions.
r-programming-language
data-science
LIME
machine-learning
H2O
在与您的工作区一起在分屏中播放的视频中,您的授课教师将指导您完成每个步骤:
Introduction and Project Overview
Import Libraries and Load the IBM HR Employee Attrition Data
Preprocess Data using Recipes
Start H2O Cluster and Create Train/Test Splits
Run AutoML to Train and Tune Models
Leaderboard Exploration
Model Performance Evaluation
Local Interpretable Model-Agnostic Explanations (LIME)
Apply LIME to Interpret Model Outcomes
您的工作空间就是浏览器中的云桌面,无需下载
在分屏视频中,您的授课教师会为您提供分步指导
由 KA 提供
Aug 5, 2020A Nice choice of the contents in this course, I must say! A good guided that I should recommend everyone to take. Good luck!
由 CM 提供
Mar 5, 2022Found the exposure to h2o and lime helpful. Thank you.
由 MS 提供
Jul 15, 2020It was an interesting course, explaining hat is happening inside a machine learning algorithm.
由 HS 提供
Aug 9, 2021Great intro to machine learning and model intrepretation
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