Guidelines and Policies
for the Ph.D. with a Major in Business
Administration,
Concentration in Statistics
Department of Statistics
331 Stokely Management Center
The University of Tennessee, Knoxville
Knoxville, Tennessee 37996-0532
General Phone: (865) 974-2556
Fax: (865) 974-2490
Email:
beckywalker@utk.edu
The University of Tennessee,
Knoxville does not discriminate on the basis of
race, sex, color, religion, national origin, age,
handicap, or veteran status in provision of
educational opportunities, reemployment
opportunities and benefits.
UTK does not discriminate on the
basis of sex or handicap in the education programs
and activities which it operates pursuant to
requirements of Title IX of the Educational
Amendments of 1972, Public Law 92-318; and Section
504 of the Rehabilitation Act of 1973, Public Law
93-112, respectively. This policy extends to both
employment by and admission to the University.
Inquiries concerning Title IX and
Section 504 should be directed to the Office of the
Director of Affirmative Action; 403-5 Andy Holt
Tower; The University of Tennessee, Knoxville;
Knoxville, Tennessee 37996 - 0144; (615) 974-2498.
Charges of violation of the above policy should also
be directed to the office of the Director of
Affirmative Action.
This is a publication of the
Department of Statistics, The University of
Tennessee, Knoxville.
Ph.D. Program in Business
Administration
with a concentration in Statistics
The explosion of data in the
business world has made the field of Statistics
increasingly valuable. Simple tools applied to small
data applications no longer suffice. Rather, the
norm is massive and complex databases with
difference structures. The size and complexity of
such data presents both a challenge and opportunity
to Statistics. As has always been the case, new
applications drive the development of new and novel
statistical techniques.
The Statistics, Operations, and Management Science
Department at the University of Tennessee is pleased
to offer a Statistics concentration Ph.D. in
Business Administration to develop researchers who
are well-equipped to make a vital contribution in
such environments. Our department’s expertise
includes data mining and multivariate modeling, time
series analysis, process mining and improvement, and
design of experiments. Students interested in these
areas would find have the opportunity to study with
world-renowned researchers.
Persons entering the Ph.D. program at UT will need
to have a grounding in the basic business
disciplines and prior, advanced education in
Statistics. (In some instances, deficiencies in
these areas can be removed by additional coursework
at UT) The required Ph.D. courses at UT are:
-
Computational methods in statistics
-
Theory for developing new tools (two
courses)
-
Doctoral courses in two or more of the
following areas: data mining, statistical
process control, design of experiments, and
multivariate modeling
-
Graduate seminar in the chosen research
field
- Complimentary course
work in one chosen discipline outside
statistics, such as Management Science,
Marketing, Finance, Economics, and
Engineering Sciences. (The area of this
coursework should support either the
dissertation or the long-term work interests
of the student.)
The dissertation must be
applications-driven research. Internship is also
required of those who have little prior work
experience.
The PhD program in Statistics at
the University of Tennessee recruits enthusiastic,
capable students, pursuing careers that involve
research in Statistics and Probability, both the
theory and applications.
The Department of Statistics, Operation and
Management Sciences currently (2004-2005) has twenty
four faculty members and twenty graduate students.
Additionally, a continuous flow of visiting graduate
students and postdoctoral fellows contributes
greatly to the academic environment.
By means of joint faculty appointments and joint
research projects we maintain active academic
contact with the departments of; Computer Science,
Mathematics, Psychology, Sociology, Agriculture, the
Center for Quantitative Science in Forestry and
Woods, the College of Engineering, the School of
Business Administration, the Physics Laboratory, the
Applied Computational Biology Division of the Oak
Ridge National Laboratory.
Our View
Statistical thinking is important
in all disciplines engaged in empirical inquiry. The
purpose of Statistical Science is to develop methods
for designing and analyzing such inquiries, and to
disseminate this methodology through teaching and
scholarly communication.
Development of useful statistical methodology cannot
take place in a vacuum. To be scientifically
relevant this development should be problem-driven,
motivated and guided by applications of scientific
importance. Identifying and understanding important
applications in all disciplines particularly in
Industry and Business which what the department
excels in. This requires interaction with other
disciplines that acquire and analyze data.
Collaborative research is therefore essential to the
viability and growth of Statistics.
Computers have tremendously expanded the theoretical
statistical thinking in practice. The Bootstrap,
parametric and nonparametric clustering, prediction
methods like CART and Neural Networks, the Cox model
for survival analysis and reliability, data
visualization, Bayesian inferences and Markov Chain
Monte Carlo, design of experiments would have been
unthinkable without the advances in computing.
Demand is rapidly increasing for new data analytic
tools, and for individuals trained to invent,
evaluate, and apply them. There is a new emerging
field called: Data mining, which attracts employers
and students. The increasing importance of computers
in both data collection and data analysis has made
expertise in computing an important prerequisite for
creating and applying new and innovative data
analysis tools.
At the time of the establishment of the Department
of Statistics at the University of Tennessee in
1972, the department had already strong and thriving
programs in Industrial statistics. The Statistics
Department dedicated itself to further strengthening
these areas while developing new expertise within
the college of Business and emerging and important
area of model selection, Data mining and statistical
methodology. Cross-disciplinary research was also
emphasized and continues to be a distinguishing
feature of the academic program. The recently merger
with the Operation and management sciences, provide
exciting new research opportunities for both faculty
and graduate students.
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