CSCI 374
Machine Learning Fall 2016
Division III Quantitative/Formal Reasoning
This is not the current course catalog

Class Details

This tutorial examines the design, implementation, and analysis of machine learning algorithms. Machine Learning is a branch of Artificial Intelligence that aims to develop algorithms that will improve a system’s performance. Improvement might involve acquiring new factual knowledge from data, learning to perform a new task, or learning to perform an old task more efficiently or effectively. This tutorial will cover examples of supervised learning algorithms (including decision tree learning, support vector machines, and neural networks), unsupervised learning algorithms (including k-means and expectation maximization), and possibly reinforcement learning algorithms (such as Q learning and temporal difference learning). It will also introduce methods for the evaluation of learning algorithms, as well as topics in computational learning theory.
The Class: Format: tutorial
Limit: 10
Expected: 10
Class#: 1664
Grading: no pass/fail option, no fifth course option
Requirements/Evaluation: evaluation will be based on presentations, problem sets, programming exercises, empirical analyses of algorithms, critical analysis of current literature
Extra Info: may not be taken on a pass/fail basis; not available for the fifth course option
Prerequisites: CSCI 136 and CSCI 256 or permission of instructor
Enrollment Preferences: Computer Science majors
Distributions: Division III Quantitative/Formal Reasoning
Attributes: COGS Interdepartmental Electives

Class Grid

Course Catalog Archive Search

TERM/YEAR
TEACHING MODE
SUBJECT
DIVISION



DISTRIBUTION



ENROLLMENT LIMIT
COURSE TYPE
Start Time
End Time
Day(s)