CS 480/697 Applied Machine Learning
Course Syllabus
Spring 2013
| 
 | 
 | 
| Instructor: | 
Dr. Wei Ding | 
| Office: | 
 S-3-167, Science Building , 3rd floor | 
| Email: | 
 ding@cs.umb.edu | 
| 
URL: | 
http://www.cs.umb.edu/~ding/classes/480_697/ | 
| Class Schedule: | TTH 4:00 - 5:15 PM,  Science Building the 3rd floor S-3028  | 
| 
Pre-requisites:
 | 
Math129 or 
Math130 or appropriate scores on the 
Math placement exam | 
| 
Office Hours:
 | 
Monday 6:00 PM - 7:00 PM 
Wednesday 6:00 PM - 7:00 PM
 | 
|   | 
| TA: 
 | 
Mr. Yang Mu 
E-mail: yangmu AT cs.umb.edu  
Office Hours: KDLab Lab S-3-158A  
Schedule an appointment with your TA by email.
 | 
TEXT BOOK
COURSE GOALS
- To learn practical side of machine learning for applications
 
- To learn the process of applying meachine learning to a variety of problems
 
- To learn classification
 
- To learn clustering
 
- To learn association rules
 
METHODOLOGY
Lecture and interactive problem solving.
APPRAISAL
Participation: 5% of 
the total
Programming Assignments: 60% of the 
total
Examination (2 exams): 35% of the 
total
 
GRADING
91+ = A; 89+ = 
A-;
87+ = B+; 83+ = 
B; 80+ = B-;
77+ = C+; 73+ = 
C; 70+ = C-;
67+ = D+; 63+ = 
D; 60+ = D-;
0+ = F;
READING
We will read from the recommended text book, various sources on the 
web, and slides that will be made available on the web site. The schedule 
for the readings are given on the schedule web page.
OTHER POLICIES
- Homework: 
	- All homework must be typed not hand-written and must be submitted with the given 
	cover page (Download the cover pages from the 
	Assignments page).
 
- 
	Homework is due exactly at the prescribed time.
	No late homework is accepted.
 
- Turn in the paper copy of a homework assignment in class and submit the 
softcopy of the assignment to your Unix account (detailed instructions will be 
given with each homework assignment).
 
- 
	Any questions or complaints regarding the grading of an assignment or test must be raised
	within one week
	after the score or the graded assignment is made available (not when you pick it up).
 
 
- 
Providing answers for any examination when not specifically authorized by the instructor to do so, 
or, informing any person or persons of the contents of any examination prior to the 
time the examination is given is considered cheating. 
 
- 
	Penalty for cheating will be extremely severe. Use your best judgment. If you are not sure about certain activities, 
consult the instructor. Standard academic honesty procedure will be followed for cheating and active cheating 
automatically results F in the final grade. 
Please check 
		University Policy on Academic Standards and Cheating
	for additional information.
 
- 
You are expected to come fully prepared to every class.
 
- 
No incomplete grade under nearly all situations.
 
- 
There is no formal attendance policy. However, you are responsible for everything 
discussed in class. You may receive a zero for lack of participation.
 
- 
	Pay very careful attention to your email correspondence. 
	It reflects on your communication skills. Avoid using non-standard English such as "how 
	r u?" in your email message. In addition, I recommend you put the class number
    480/697 and a brief summary of your question in your email subject. For example, 
	
	
	Subject: CS 480/697 A question on clustering
	
 
- 
I immediately discard anonymous emails.
 
- 
	The ringing, beeping, buzzing of cell phones, watches, and/or pagers during 
	class time is extremely rude and disruptive to your fellow students and to 
	the class flow. Please turn off all cell phones, watches, and pagers prior to the start of class.
 
			
			
			
				© Wei Ding, 2013, all rights reserved. This document is 
				made available for use by the students of CS 480/697 at the 
				University of Massachusetts Boston. Copying, distribution or other 
				use of this document without express permission of the author is 
				forbidden. You may create links to pages in this web site, but 
				may not copy all or part of the text without permission of the 
				author. 
			
			