EMSE 4765/
EMSE 6765
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DATA
ANALYSIS FOR ENGINEERS AND SCIENTISTS:
Course Description:
Probability and Statistical review is provided in the first three
to three lectures. Statistical Inference topics that will be discussed
include estimation, confidence intervals, hypothesis testing and goodness-of-fit
testing. These methods perform statistical inference in a single dimension
(also known as univariate data analysis). Discussions of multivariate
data analysis utilize matrices and vectors. One class will review rules
of matrix-vector algebra and provides some intuitive geographical interpretations
of these operations. Multivariate data analysis will be introduced by
first discussing the classical Hotelling T2 hypothesis test, which is
a natural extension of the univariate T test. Next, we introduce regression
nalysis (in matrix-vector format) and principal component analysis. The
introduction of these topics will be cursory and their application will
be facilitated by the use of the MINITAB software program. Discussion
of these multivariate techniques will concentrate on intuition, not a
rigorous derivation of their methodologies.
Required Textbooks:
- Probability
and Statistics for Engineers and Scientists, 9th Edition, with MyLabs
subscription, Walpole, Myers, Myers and Ye, Pearson Publishing, 2017.
Registration
Instructions to Pearson:
Student_Registration_Handout
Required Software:
MINITAB,
MicroSoft
Excel. Student are encouraged to learn R and run the R-scripts
made available on the left.
Recommended
Text Books: Neither
textbooks below are required. However, electronic lecture notes used throughout
this course are developed from these course texts. Reading accompanying
chapter from these texts may further enhance understanding.
- "A
Modern Introduction to Probability and Statistics, Understanding Why
and How" by F.M. Dekking, C. Kraaikamp, H.P. Lopuhaä and
L.E. Meester, Springer-Verlag, 2005.
- "Analyzing
Multivariate Data” by Lattin, Carroll and Green.
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