- The Association Rule Recommendation approach outperforms random recommendations by leveraging frequent itemsets and association rules to provide more relevant and personalized course suggestions.
- The effectiveness of the Association Rule Recommendation method relies on having a sufficient number of frequent antecedents and consequents in the data that meet the minimum confidence threshold. For users with less common course histories, recommendations can be generated directly from the frequent itemset mining (FIM) results.
- To address the cold start problem for new users with no prior data, the proposed solution is to recommend beginner and intermediate-level course bundles or pathways identified through FIM, separately for technical and non-technical courses. This approach provides a structured learning foundation tailored to new users' potential needs and experience levels.
-
Notifications
You must be signed in to change notification settings - Fork 0
Using frequent itemset mining to create learning pathways in Coursera
License
paumartinez1/fim-learning-pathways
Folders and files
Name | Name | Last commit message | Last commit date | |
---|---|---|---|---|
Repository files navigation
About
Using frequent itemset mining to create learning pathways in Coursera
Resources
License
Stars
Watchers
Forks
Releases
No releases published
Packages 0
No packages published