skip to content
EECS4412
User Tools
Log In
Site Tools
Search
Tools
Show pagesource
Old revisions
Backlinks
Recent Changes
Media Manager
Sitemap
Log In
>
Recent Changes
Media Manager
Sitemap
You are here:
Your Course
»
lectures
Trace:
•
lectures
Sidebar
What's New
Course Outline
Important Dates
Calendar
Grades
Assignments
Presentations
Forums
Contact
Policies
Resources
Lectures
Handouts
Projects
Related Material
FAQs
Academic Dishonesty
lectures
* class lectures
|Lecture 1 - Introduction to Data Mining
|Lecture 2 - Continue with Introduction, data mining concepts
Lecture 2 example- Visualization
Lecture 3 - Introduction to Preprocessing
Lecture 4 - Introduction to Data Warehouses and Data Cubes, DBLEARN
Lecture 5 - Introduction to Rough Sets
Lecture 5+ - Approximating Answers - Guest Graham Toppin
Lecture 6 - Association Rule Mining - Guest Aijun An
Lecture 7 - Classification & Prediction
Lecture 7a - Introduction to ELEM2
Lecture 7b - 6 slides
Lecture 8 - Introduction to Neural Networks
Lecture 8a - More on Neural Networks
Lecture 8b - Andrew Moore on Neural Networks
Lecture 9 - Introduction to WEKA
Lecture 10 - Clustering
Lecture 11 - K NN
Lecture 12 - Rule-Based Classification (Maisha Fariha)
Lecture 13 - Support Vector Machines from you tube - Andrew Ng & Pat Winston
Lecture 14 - Prediction and Classification with k-Nearest Neighbors (Yuping Lin)
Lecture 15 - Clustering, EM algorithm (Bon Ryu)
Lecture 15a - k-Means Clustering, Outliers and anomaly detection, EM algorithm
Lecture 16 - Recommendation Systems: Collaborative Filtering
Lecture 16 other - Recommendation Systems videos
Lecture 17 Graph Mining, Social Network Analysis (Vincent Chu & Darren Rolfe)
Lecture 18a Spatial/Spatio-temporal Data Mining
Lecture 18b Tutorial on Geographical and Spatial Data Mining
Lecture 18c Geoinformatics across disciplines
Lecture 18d What's so Special about Spatial Data Mining
Lecture 19 Text Classification (William Cohen)
textclassify.pdf
|Lecture 19a Text Classification (Aijun An)}}
Lecture 19b Text Classification short videos
Lecture 20 Text Mining, Mining the World Wide Web (Van Le)
Lecture 21 Bagging, Boosting and Stacking (Mingbin Xu)
Lecture 22 n-gram (Bahareh Sarrafzadeh)
Lecture 22 (Vlado Keselj)
ngrams
data mining videos
The Tugboat
Driving in Bolivia
Potter's wheel - Raman et al.
Cluster analysis example
lectures.txt
· Last modified: 2014/11/27 17:40 by
nick
Page Tools
Show pagesource
Old revisions
Backlinks
Back to top