STAT356 STATISTICAL DATA ANALYSIS

Course Code:2460356
METU Credit (Theoretical-Laboratory hours/week):4 (3.00 - 2.00)
ECTS Credit:9.0
Department:Statistics
Language of Instruction:English
Level of Study:Undergraduate
Course Coordinator:Prof.Dr. CEYLAN YOZGATLIGİL
Offered Semester:Spring Semesters.

Course Objectives

This is an applied course — applications of statistics in many different fields will be covered. The objectives of this course are to enable the students to understand how to think about data, and to be able to handle graphical and methodological ways to highlight what is going on in data, summarize relationships in data using statistical models, and demonstrate the ability to highlight structure in data by doing so. Students will see many analyses of real data, and will spend lots of time doing their own statistical analyses of real data using the computer and learning to interpret the results of those analyses.


Course Content

Types of data. Graphical and tabular represantation of data. Approaches to finding the unexpected in data. Exploratory data analysis for large and high-dimensional data. Analysis of categorical data. Elements of robust estimation. Handling missing data. Smoothing methods. Data mining.
Prerequisites: STAT 156, STAT 291


Course Learning Outcomes

  • To develop quantitative reasoning
  • To develop statistical reasoning and methodology provide the tools to become numerate.
  • How to think about randomness, and about data
  • Explain the role of data and models in the decision making process and how they support (rather than determine) decisions
  • Decide what tools are appropriate in di?erent data and decision making settings
  • Decide how to structure model so that the essential elements are included and that the model can be analyzed in a timely fashion
  • Translate the results of the model into a statement about the data relationships and of the actions that could be taken with the new understanding.

Program Outcomes Matrix

Level of Contribution
#Program Outcomes0123
1Applying the knowledge of statistics, mathematics and computer to statistical problems and developing analytical solutions.
2Defining, modeling and solving real life problems that involve uncertainty, and interpreting results.
3To decide on the data collection technique, and apply it through experiment, observation, questionnaire or simulation.
4Analysing small and big volumes of data and interpreting results.
5Utilizing up-to-date techniques, computer hardware and software required for statistical applications; developing software programs and numerical solutions for specific problems when necessary.
6Taking part in intradisciplinary and interdisciplinary teamwork, using time efficiently, taking leadership responsibilities and being entrepreneurial.
7Taking responsibility in individual work and offering authentic solutions.
8Following contemporary developments and publications in statistical science, conducting research, being open to novelty and thinking critically.
9Efficiently communicating in Turkish and English to define and analyze statistical problems and to interpret the results.
10Having a professional and ethical sense of responsibility.
11Developing computational solutions to statistical problems that cannot be solved analytically.
12Having theoretical background and developing new theories in statistics, building relations between theoretical and practical knowledge.
13Serving the society with the expertise in the field.

0: No Contribution 1: Little Contribution 2: Partial Contribution 3: Full Contribution