Courses | STAT359

STAT359: Data Analysis

Published course information, generated as a static page and SVG graph.

Course Graph

Prerequisite flow into the course, and dependencies flow out from it.

Co-requisites are treated as prerequisite links, and equivalent or cross-listed courses are merged into shared course nodes. The simplified view shows one prerequisite level above the course and one dependency level downstream.

Open SVG
Graph key and legend Expand for department colours, choice nodes, and merged-course labels used in the course map. STAT3591 of Merged
StatisticsECONGeographyPSYCSOCI
EOS311

Focus course

The course page you are viewing.

CHEM102

Connected course

A prerequisite or downstream course included in the current view.

2 of

Choice point

A shared requirement such as choose 1 of, 2 of, or 3 of.

 

Grouping junction

A small circular join keeps shared requirement branches tidy.

BIOL311 / EOS311

Merged course node

Equivalent or cross-listed courses are collapsed into one shared node.

Find

Search highlights matching branches.

Overlays

View

STAT359 course__GEOG226 GEOG226 choice_STAT359_0 1 of course__GEOG226->choice_STAT359_0 course__STAT254 Intro statistics course__STAT254->choice_STAT359_0 course__STAT359 STAT359 Data Analysis choice_STAT359_0->course__STAT359

Additional course requirements

  • or permission of the department

Statistics

Subject area

300-level

Course level

2

Programs that name this course

8

Published prerequisite links

Description

Catalog description

An introductory data analysis course for students who have had an introduction to descriptive statistics, probability distributions, estimation, hypothesis testing and confidence intervals. Emphasis is placed on proper use of computer software, interpretation of output and assumptions required for use of each statistical method. Topics may include: linear and nonlinear regression, time series analysis, analysis of variance, design of experiments, generalized linear models, repeated measures analysis, survival analysis, methods for multivariate data, and nonparametric methods.