By the end of this course, learners will be able to analyze transactional datasets, calculate and adjust support thresholds, generate and interpret association rules, clean real-world grocery data, and apply advanced algorithms such as Eclat to uncover meaningful purchasing patterns using R.
This hands-on project-based course guides learners step by step through the complete Market Basket Analysis workflow. Starting with loading and understanding transactional data, learners progress to calculating minimum support, training association rule models, visualizing rules, and optimizing results through parameter tuning. The course then shifts to practical data preparation using a real grocery dataset, emphasizing duplicate removal, co-purchase analysis, and efficient frequent itemset mining.
What makes this course unique is its strong focus on applied learning using authentic datasets and industry-relevant techniques. Rather than emphasizing theory alone, learners gain practical experience implementing Market Basket Analysis end to end in R, mirroring real analytical tasks performed in retail analytics, recommendation systems, and customer behavior analysis.
By completing this course, learners build job-ready skills in association rule mining, data preprocessing, and exploratory analysis—capabilities directly applicable to data analytics, data science, and business intelligence roles.
This module introduces the fundamentals of Market Basket Analysis using R, guiding learners through loading and understanding transactional data, calculating minimum support, training association rule models, and optimizing results through support tuning and rule visualization.
涵盖的内容
6个视频3个作业
显示有关单元内容的信息
6个视频•总计55分钟
Introduction and Loading Dataset•7分钟
Understanding Data•11分钟
Calculating Minimum Support•14分钟
Training Final Model•7分钟
Visualising Rules•10分钟
Changing Support•6分钟
3个作业•总计50分钟
Graded-Market Basket Analysis Foundations & Model Training•30分钟
Data Introduction and Support Calculation•10分钟
Model Training and Rule Optimization•10分钟
Dataset Preparation & Advanced Association
第 2 单元•小时 后完成
单元详情
This module focuses on preparing real-world transactional data for analysis, including cleaning the groceries dataset, removing duplicates, exploring product co-purchase behavior, and implementing the Eclat algorithm for efficient frequent itemset mining.
涵盖的内容
5个视频3个作业
显示有关单元内容的信息
5个视频•总计36分钟
Groceries Dattaset•9分钟
Removing Duplicates•8分钟
Removing Duplicates Continue•6分钟
Which Other Products Bought•7分钟
Eclat Algorithm Implementation•6分钟
3个作业•总计50分钟
Graded-Dataset Preparation & Advanced Association Analysis•30分钟
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