University of Colorado Boulder - Association Rules Analysis
- Offered byCoursera
Association Rules Analysis at Coursera Overview
Duration | 22 hours |
Start from | Start Now |
Total fee | Free |
Mode of learning | Online |
Official Website | Explore Free Course |
Credential | Certificate |
Association Rules Analysis at Coursera Highlights
- Earn a certificate from University of Colorado Boulder
- Add to your LinkedIn profile
- August 2023
- 4 quizzes, 1 assignment
Association Rules Analysis at Coursera Course details
- What you'll learn
- Understand the principles and significance of unsupervised learning methods, specifically association rules and outlier detection
- Grasp the concepts and applications of frequent patterns and association rules in discovering interesting relationships between items.
- Apply various outlier detection methods, including statistical and distance-based approaches, to identify anomalous data points.
- The "Association Rules and Outliers Analysis" course introduces students to fundamental concepts of unsupervised learning methods, focusing on association rules and outlier detection. Participants will delve into frequent patterns and association rules, gaining insights into Apriori algorithms and constraint-based association rule mining. Additionally, students will explore outlier detection methods, with a deep understanding of contextual outliers. Through interactive tutorials and practical case studies, students will gain hands-on experience in applying association rules and outlier detection techniques to diverse datasets.
- Course Learning Objectives:
- By the end of this course, students will be able to:
- 1. Understand the principles and significance of unsupervised learning methods, specifically association rules and outlier detection.
- 2. Grasp the concepts and applications of frequent patterns and association rules in discovering interesting relationships between items.
- 3. Explore Apriori algorithms to mine frequent itemsets efficiently and generate association rules.
- 4. Implement and interpret support, confidence, and lift metrics in association rule mining.
- 5. Comprehend the concept of constraint-based association rule mining and its role in capturing specific association patterns.
- 6. Analyze the significance of outlier detection in data analysis and real-world applications.
- 7. Apply various outlier detection methods, including statistical and distance-based approaches, to identify anomalous data points.
- 8. Understand contextual outliers and contextual outlier detection techniques for capturing outliers in specific contexts.
- 9. Apply association rules and outlier detection techniques in real-world case studies to derive meaningful insights.
- Throughout the course, students will actively engage in tutorials and case studies, strengthening their association rule mining and outlier detection skills and gaining practical experience in applying these techniques to diverse datasets. By achieving the learning objectives, participants will be well-equipped to excel in unsupervised learning tasks and make informed decisions using association rules and outlier detection techniques.
Association Rules Analysis at Coursera Curriculum
Frequent Itemsets
Introduction to Frequent Pattern Analysis
Frequent Itemsets and Association Rules
Assessment Strategy
Activity Strategy
Frequent Itemsets Demo
Association Rules Demo
Frequent Itemsets and Association Rules Quiz
Association Rule Mining
Association Rule Mining
Association Rule Mining Quiz
Apriori and FP Growth Algorithm
Apriori Algorithm
Constraint-based Association Rule Mining
Apriori Algorithm Demo
FP Growth Algorithm Demo
Apriori Algorithm Case Study Online Retail
Apriori Algorithm Case Study
Apriori Algorithm Quiz
Apriori Algorithm Exploration Exercise
Outliers
Outliers
Outliers Demo
Outliers Case Study - CC Fraud Detection
Outliers Quiz
Outliers Exploration Exercise
Case Study