By the end of this course, learners will be able to analyze customer data, evaluate predictive features, build and optimize classification models, and assess model performance to accurately predict card purchase behavior using R. Learners will develop practical skills in logistic regression and decision tree modeling while applying industry-relevant evaluation techniques.
This hands-on, project-based course guides learners through a complete predictive modeling workflow using a real-world card purchase use case. Starting with data import and feature assessment using Information Value, learners progress through visualization, data preparation, and model development. The course emphasizes model evaluation through lift charts, ROC analysis, and testing on unseen data, ensuring learners understand not just how to build models, but how to validate and trust them. Learners also gain experience saving and reusing trained models, a critical skill for real-world deployment.
What makes this course unique is its strong focus on practical decision-making, model interpretability, and end-to-end implementation in R. By completing this course, learners strengthen their analytical thinking and gain job-ready skills applicable to roles such as data analyst, marketing analyst, and risk analyst.
This module introduces learners to the end-to-end process of preparing data for card purchase prediction using R, including dataset import, feature evaluation with Information Value, exploratory visualization, data splitting, and building an optimized logistic regression model for binary classification.
涵盖的内容
6个视频4个作业
显示有关单元内容的信息
6个视频•总计54分钟
Introduction and Importing Dataset•9分钟
IV Calculation•9分钟
Plotting Variables•7分钟
Splitting•9分钟
Building Logistic Model•8分钟
Making Oprimal Model•12分钟
4个作业•总计60分钟
Graded-Building the Foundation for Purchase Prediction•30分钟
Getting the Data Ready for Modeling•10分钟
Exploring and Preparing Predictive Features•10分钟
Developing the Logistic Regression Model•10分钟
Model Evaluation, Deployment, and Tree-Based Learning
第 2 单元•小时 后完成
单元详情
This module focuses on evaluating and validating predictive models using lift charts and performance metrics, testing models on unseen data, saving trained models in R, and implementing decision tree models to compare and enhance card purchase prediction results.
涵盖的内容
7个视频4个作业
显示有关单元内容的信息
7个视频•总计61分钟
Making Lift Chart for Training Set•12分钟
Checking Model Performance•10分钟
Model Performance in Test Set•9分钟
Saving Model in R•11分钟
Fitting Decision Tree Model•8分钟
Fitting Decision Tree Model Continue•6分钟
Prediction of Decision Tree and Model Performance•4分钟
4个作业•总计60分钟
Graded-Model Evaluation, Deployment, and Tree-Based Learning•30分钟
Evaluating Model Performance•10分钟
Testing, Validation, and Model Saving•10分钟
Decision Tree Modeling for Purchase Prediction•10分钟
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