Course Description: EXST 7037, Comparison of multivariate techniques and analyses; emphasis on discriminant analysis, factor analysis and principal component analysis, canonical correlation, cluster analysis, and multivariate analysis of variance and repeated measures.
Course Prerequisites: Statistical Methods II (EXST 7013, 7014, 7015) or equivalent (must check with Instructor); and knowledge of matrix algebra at a basic level.
Course Objectives: General objectives include the following:
Instructor: Dr. E. Barry Moser, Professor and Head, Dept. Experimental Statistics
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Office: |
149A Ag. Administration Bldg. |
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Phone: |
225-578-8376 |
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Email: |
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Web: |
http://www.stat.lsu.edu/faculty/moser/exst7037/ |
Office Hours: Tu 1:30p-2:30p, Th 10:35a-11:30a, or by appointment
Text: Johnson, R. A. and D. W. Wichern.
2002. A
Assignments and Grading: Grades will be based upon 3 monthly exams, 1 group poster project, and a final examination (equal weight to each of the 5 items). Exams must be taken at the assigned times unless prior approval from Dr. Moser is obtained. Note, taking the final exam early is not permitted. Unauthorized/unexcused missed exams will count as 0 points. You are to do your own work on all exams. Project work is to be solely a product of the group team. Issues of academic misconduct will be referred to the Dean of Students.
Grading Scale and Event Dates: Letter grade assignments will be made
according to the scale below. Exam and
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Score |
Minimum |
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Event |
Date |
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90-100 |
A |
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Exam I |
Sep 23 |
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80-89.9 |
B |
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Exam II |
Oct 21 |
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70-79.9 |
C |
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Exam III |
Nov 18 |
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60-69.9 |
D |
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Poster |
Nov 30 |
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0-59.9 |
F |
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Final |
Dec 9 |
CONTENT OUTLINE
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Class |
Topic |
Readings2 |
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1 |
Introduction,
Objectives, Multivariate Data, Matrix Algebra and Vector Spaces |
1-30, |
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2 |
Statistical
Distance, Expected Values, Variances and Covariances of Linear
Combinations, Sample Geometry |
30-37 |
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3-4 |
Multivariate
Normal Distribution |
149-209 |
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5-6 |
Principal
Components Analysis, Biplots |
426-458,
719-723 |
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7-8 |
Cluster
Analysis (Hierarchical and Non-Hierarchical) |
668-700 |
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9 |
Exam
I |
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10 |
Multidimensional
Scaling, Principal Coordinates Analysis |
700-708 |
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11-12 |
Inferences
about a Mean Vector, Hotelling's T2 |
210-219 |
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13 |
Confidence
Regions and Simultaneous Comparisons, Missing Data |
220-238,
252-256 |
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14 |
Two-sample
T2 |
272-293 |
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15 |
Introduction
to MANOVA |
293-305,
395 |
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16 |
Exam
II |
|
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17-18 |
MANOVA
and Linear Models, Compositional Data Analysis3 |
305-323,
327-332, |
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19-20 |
Profile
and Repeated Measures Analysis |
272-282,
318-327 |
|
21-23 |
Discrimination
and Classification, Canonical Discriminant Analysis, Data Mining |
581-628,
641-646, |
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24 |
Exam
III |
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25-26 |
Factor
Analysis and the Factor Model, Factor Rotation, Scores, Strategy |
477-524 |
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27 |
Path
and Structural Equation Models |
524-529 |
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28 |
Correspondence
Analysis3, Procrustes Analysis3,
Canonical Correlation Analysis3 |
709-719,
723-730, |
1Class periods are
approximate. Exam dates are subject to change.
2Johnson, R. A. and D. W. Wichern. 2002. Applied Multivariate Statistical
Analysis, Fifth Edition. Prentice Hall,
3Time permitting, otherwise covered within other topics.