Public University of Navarre



Academic year: 2020/2021 | Previous academic years:  2019/2020  |  2018/2019 
International Bachelor's degree in Management and Business Administration
Course code: 174303 Subject title: STATISTICS II
Credits: 6 Type of subject: Mandatory Year: 2 Period: 1º S
Department: Estadística, Informática y Matemáticas
Lecturers:
PANIELLO ALASTRUEY, IRENE (Resp)   [Mentoring ]

Partes de este texto:

 

Module/Subject matter

Module: Statistics. Subject matter: Statistics II.

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Contents

The aim of this subject is that students learn:

- to consider an economic problem in statistical terms,

- to solve manually and by means of the statistical program R-Commander,

- to correctly interpret the results,

- to elaborate study reports.

This course is devoted to study:

- The main distributions of probability

- Statistical inference.

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General proficiencies

  • BP2: Students know how to apply their knowledge to their work or vocation in a professional manner and possess skills which are usually demonstrated by developing and defending arguments and resolving problems in their area of study.
  • BP3: Students are able to compile and interpret relevant information (normally within their area of study) in order to voice opinions which include reflection on relevant themes of a social, scientific or ethical nature.
  • BP4: Students are able to transmit information, ideas, problems and solutions to both specialist and non-specialist audiences.
  • GP01: A capacity for analysis and synthesis.
  • GP02: A capacity for organisation and planning.
  • GP03: Oral and written communication in their mother tongue.
  • GP05: Computer skills relevant to the field of study.
  • GP07: The capacity to solve problems.
  • GP14: Critical and self-critical skills.
  • GP17: A capacity for self-reliant learning.

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Specific proficiencies

  • SP03: To discern information and data relevant to their particular enterprise which a non-professional would be unable to recognise.
  • SP04: To analyse business management problems, applying professional criteria based on the use of technical instruments.

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Learning outcomes

At the end of the semester students must be able to:

  • Know the possibilities Statistics offer to obtain high-quality information and be able to recognize those situations when statistical analyses are possible and necessary. Differentiate between opinions that can be empirically contrasted and those that cannot.
  • Understand statistical terminology.
  • Know how to set out an economic problem using statistical terminology. Evaluate properly the difficulties to be overcome in each situation, recognize their limitations and resources.
  • Apply Inferential Statistics to problems arising from an economic environment.
  • Interpret outcomes and provide conclusions drawn from analyses relating them to the environment data come from.
  • Interpret and be able to question reports.
  • Develop attitudes favoring the understanding of new statistical procedures that can be useful in other subjects or along the professional career.

More precisely:

Learning outcomes Contents Formative activities Evaluation activities
Understand the most usual random variables and probability distributions, their properties and those assumptions that make possible to approximate them to the Normal distribution. Chapters 1 and 2 Lectures and Practice sessions In-term tests with and without using computer
Understand the differences between population and sample. Understand the main sampling distributions and their applications. Chapter 3 Lectures and Practice sessions In-term tests
Understand those notions arising in Inferential Statistics. Determine the needed sample size to reach required error objectives. Obtain and interpret a confidence interval. Apply the appropriate test for a given problem. Evaluate the quality of the survey reports published by the media. Interpret outcomes provided by statistical software. Chapters 4, 5 and 6 Lectures and Practice sessions In-term tests with and without using computer

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Methodology

Learning Activities:

Lectures A-1

Practice sessions A-2

Individual or teamwork projects or problem-solving A-3

Individual or small group tutorials A-4

Individual work A-5

Exam A-6

Self-evaluation  A-7

Lectures will be devoted to introducing the subject basic contents that will be illustrated with practical activities to help students to develop individual-study habits. Lectures and practice sessions will be alternated for all chapters.

Practice sessions will have two different approaches. Either they will consist of in-class problem-solving sessions of some proposed exercises by the professor or the students or they will consist of practice sessions with computers so that students will be required to use some statistical software as a tool to solve problems and practical cases.  Lesson notes, as well as any other teaching material, will be available in MiAulario.

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Evaluation

Learning outcomes Evaluation Weight (%) Recoverable
Understand the most usual random variables and probability distributions, their properties, and those assumptions that make it possible to approximate them to the Normal distribution. Understand the differences between population and sample, the main sampling distributions and their applications, and those notions arising in Inferential Statistics. Obtain and interpret a confidence interval. Determine the needed sample size to reach the required error objectives. Apply the appropriate test for a given problem. Evaluate the quality of survey reports published by the media. In-term tests 30 % No
Apply the appropriate test for a given problem. Interpret the outcomes provided by statistical software. All the previous learning outcomes Exercises and individual work 30%  Yes
 All the previous learning outcomes. Final exam 40% Yes

 The evaluation method may include activities such as practice sessions, in-terms tests made with or without a computer, problem-solving based on computer-obtained outputs, and attendance to office hours. Exercises and individual work may be presential and non-presential.

The final exam will be a written exam about the different theoretical and practical contents of the subject. The final exam may include problem-solving, theoretical test-type or essay-type questions, or designing how to solve an economic problem using statistical tools.

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Agenda

CHAPTER 0. Basic notions of Probability.

CHAPTER 1. Discrete random variables and probability distributions

- Discrete random variables

- Probability distributions for discrete random variables: probability and distributions functions.

- Characteristics of discrete random variables: expectancy and variance

- Binary and Binomial distributions

- Poisson Probability distribution

- Other distributions

CHAPTER 2. Continuous random variables and probability distributions

- Continuous random variables

- Probability distributions for continuous random variables: density and distribution functions.

- Characteristics of continuous random variables: expectancy and variance

- Normal distribution

- Normal distribution approximation for Binomial and Poisson distributions

- Other distributions

CHAPTER 3. Introduction to Statistical inference and Sampling

- Statistical inference as a tool of decision making

- Concepts of sampling

- Sampling with replacement and sampling in finite populations

- Main sampling distributions: sample mean and sample proportion

CHAPTER 4. Estimation

- Point estimation

- Desirable properties of an estimator

- Estimation methods

- Confidence interval estimation: confidence level and error margin

- Confidence interval estimation for single population parameters

- Confidence interval estimation for comparing two populations' parameters

- Sample size determination

- Estimation using a statistical software

CHAPTER 5. Hypothesis testing.

- Concepts of hypothesis testing

- Parametric tests for single population parameters

- Parametric tests for comparing two populations' parameters

- Analysis of variance

- Hypothesis testing using statistical software

CHAPTER 6. Nonparametric statistics.

- Introduction to nonparametric methods

- Goodness-of-fit tests

- Independence test

- Tests for comparing two populations

- Nonparametric hypothesis testing using statistical software

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Bibliography

Access the bibliography that your professor has requested from the Library.


Basic text

Newbold, P, Carlson, W.L. y Thorne, B. (2007). Statistics for Business and Economics. 6th Edition. Editorial Prentice Hall.

Newbold, P, Carlson, W.L. y Thorne, B. (2008). Estadística para Administración y Economía. Editorial Prentice Hall.

Mi Aulario will be the course web page provides also a communication channel between instructor and students. There students will find the necessary material for both theoretical and computer lab sessions, together with data files and any other additional material.

Additional bibliography:

Levin, Rubin, Balderas, Del Valle y Gómez (2004) Estadística para la administración y la economía. Editorial Prentice Hall.

Lind D. A., Marchal W. G. y Wathen S. A. (2008) Estadística Aplicada a los negocios y a la Economía. Editorial McGraw " Hill

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Languages

English.

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Location

Campus de Arrosadía.

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