CS 247: Advanced Data Mining
Instructor: Yizhou Sun
- Office hours: Wednesdays 9:30am-11:30am @ 3531E BH
TA: Zeyu Li (zyli@cs.ucla.edu)
- Office hours: Mondays 11-1pm @ 3551 BH
Lecture times: T/Th 10am-11:50am
Lecture location: 2760 BH
Instructor: Yizhou Sun
TA: Zeyu Li (zyli@cs.ucla.edu)
Lecture times: T/Th 10am-11:50am
Lecture location: 2760 BH
[April 19] Project proposal, which should be related to Graph mining, text mining, and recommender systems, will due 11:59 pm April 25.
[April 19] Homework 2 released on Piazza! Due 11:59 p.m., April 26.
[April 10] Team sign-up sheet is available here. Please team-up ASAP. Due 11:59 p.m., April 11.
[April 9] Homework 1 released on Piazza! Due 11:59 p.m., April 16.
This course introduces concepts, algorithms, and techniques of data mining on different types of datasets, which covers basic data mining algorithms, as well as advanced topics on text mining, graph/network mining, and recommender systems. A team-based course project involving hands-on practice of mining useful knowledge from large data sets is required, in addition to regular assignments. The course is a graduate-level computer science course, which is also a good option for senior undergraduate students who are interested in the field, as well as students from other disciplines who need to understand, develop, and use data mining systems to analyze large amounts of data.
*All the deadlines are 11:59PM (midnight) of the due dates.
*Late submission policy: you will get a discount as above, if you are t hours late.
*No copying or sharing of homework!
We will be using Piazza for class discussion. The system is highly catered to getting you help fast and efficiently from classmates, the TA, and myself. Rather than emailing questions to the teaching staff, I encourage you to post your questions on Piazza.
Tips: Answering other students' questions will increase your participation score.
Find our class page at: piazza.com/ucla/spring2019/cs247
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