30401 - MATHEMATICS AND STATISTICS - MODULE 2 (STATISTICS)
Department of Decision Sciences
ELENA POLI
Prerequisites
Mission & Content Summary
MISSION
CONTENT SUMMARY
The course focuses on the following main points:
- Introduction to probability: basic definitions and properties.
- Random variables: discrete and continuous models and their properties.
- Data collection and description through frequency distributions, graphical representation methods, and measures of location and spread.
- Inferential statistics, population, sampling, sampling variability and sample statistics.
- Point and interval estimation.
- Parametric hypothesis testing for the population mean and the proportion of successes.
- Nonparametric hypothesis testing for two-way tables.
- Introduction to ANOVA (Analysis of Variance) methods.
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
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Understand basic concepts of probability required for the use and interpretation of statistical methods.
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Describe a dataset through adequate graphs, tables and statistics.
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Identify if the structure of the data allows the application of basic statistical inferential methods.
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Do inference on the mean of a population (point estimation/ prediction, interval estimation, hypothesis testing).
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Understand the fundamental logic of estimation and hypothesis testing.
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Do inference regarding the difference (or not) between the means of more than one population.
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Do basic nonparametric tests for two-way tables.
APPLYING KNOWLEDGE AND UNDERSTANDING
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Understand the challenges derived from the presence of uncertainty in real-life situation.
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Choose and apply adequate (basic) statistical tools to aid in the decision-making process by learning from available data.
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Interpret charts, graphs and statistics and identify possible misrepresentations of data.
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Question statements based on data, by analysing the statistical elements and the validity of the assumptions made.
Teaching methods
- Face-to-face lectures
- Exercises (exercises, database, software etc.)
DETAILS
Exercises (Exercises, database, software etc.):
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Special sessions (delivered by a second lecturer) for the application of theoretical concepts to solving exercises. Emphasis is given to the use of statistical software R for application to real-life and simulated datasets.
Assessment methods
Continuous assessment | Partial exams | General exam | |
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x | x |
ATTENDING AND NOT ATTENDING STUDENTS
The exam can be taken in two alternative ways:
- Two partial written exams (one in the middle and one at the end of the course), with exercises and questions about theory. Access to the second partial exam is limited to students who have passed the first (obtaining at least 18 points on each). For students taking both partial exams, the final grade is the average of the two partial marks.
- A written general exam with exercises and questions about theory.
Both formats may require the use of the computer (R statistical software) for the exercise questions. Exam rules and program are the same for attending and non-attending students. Further information and detailed syllabus for the course are published on the Bocconi University website.
Teaching materials
ATTENDING AND NOT ATTENDING STUDENTS
- M. W. TROSSET, An Introduction to Statistical Inference and Its Applications with R, Chapman and Hall/CRC, 2009.
- Additional resources (lecture notes, exercises with solutions, past exams with solutions) may be available at the discretion of the lecturers.