Curs 2009-2010

Data Analysis (2116)

(Versió en català)

(Versión en castellano)


Teaching guide

Activities schedule

Teaching guide

Course description

Academic course

2009-2010

Name of the course

Data analysis

Code

21116

Course type

Compulsory

Degree

International Business Economics

Credits

 

       ECTS

4,5

       Work load for students

107 hours

       Year

First

       Type

Quarter

       Period

First quarter

Coordination

Walter García-Fontes

Department

Economics and Business

Teaching staff

Walter García-Fontes

 

Luca Di Gennaro

 

Ana Isabel Guerra

 

Eva Ventura

 

Teaching assistants

Grups

Business Administration and

 

              Management (2)

 

Economics (2)

 

Business Administration (2)

 

International Business Economics (1)

Languages

Catalan, English and Spanish

Schedule

 

       Lectures

Wednesday

       Seminars

Monday through Frida

Introduction to the course

Data Analysis is a course centred in the collection, organization and descriptive analysis of statistical data.

This course is also often called Descriptive Statistics. This is the most basic course in Statistics, but establishes the basis for all the statistical knowledge, and therefore it is a very important course. The acquired competences, though, apart from being useful for the future, are also instrumental for everyday use in all courses. Furthermore statistics is used in a lot of other contexts, such as the media or the administration, and probably every person knows statistics without having taken a specific statistics course.

This is a practical course where statistics is approached from an intuitive point of view, without the use of mathematical tools.

The course not only introduces the concepts and techniques related to descriptive statistics, but also practices the use of the computer for data analysis.

In short, this is a course where the basic concepts of descriptive statistics are learnt and where these concepts are worked out through practical cases and applied to the analysis of various datasets with the help of the computer.

Requirements for the learning process

The course contains all the elements to be followed, and does not presuppose any previous knowledge in statistics.

No previous mathematical knowledge are required either, except for basic mathematics needed with the most elemental algebraic operations, as well as known formulae manipulation, especially with the inclusion of summations.

The course uses the computer intensively as a tool to support the analysis and interpretation of statistical data. It is supposed that students have previous experience in computing environments, despite the fact that its use for data organization and analysis will be practiced and therefore there are no previous requirements in computing.

Value added for students

This is a basic course to get the necessary competences to support decision taking with the use of facts and data about the economic environment. It is part, therefore, of the sequence of courses that work out the instrumental competences of statistical analysis of real phenomena.

Data Analysis is the first course in statistics. This is complemented later with courses that provide the mathematical fundamentals of statistics, as well as other courses specific to business management and economics.

Course Competences

These are the competences that are worked out in the course:

Competence type

Evaluation weight

General/Transversal

1. Oral and written communication

2%       

competences

 

2. Analysis and synthesis abilities

1%

3. Team work abilities

1%

4. Learning by using and

1%       

experience

 

5. Application of theoretical knowledge and

1%       

analysis tools to real situations

 

6. Abilities to work autonomously

1%

Specific

7. Knowledge about numerical and

 

graphical descriptive and data

10%       

analysis techniques

 

8. Application of numerical and

 

graphical descriptive and data

10%       

analysis techniques

 

9. Use of basic computing techniques

7%

10. Abilities to use the computer to

 

apply the basic numerical

9%         

and graphical techniques

 

11. Abilities to apply statistical

 

techniques for problem

40%         

solving

 

12. Abilities for searching appropriate

 

sources and data selection

1%         

for the course project

 

13. Abilities to communicate to

 

non-expert people professional

1%         

reports with the use of

 

statistical data

 

Evaluation

The highest marks possible is 100, to be obtained according to various continuously evaluated activities and a final evaluation. Both the continuous and final evaluation will test the competences acquired during the course.

Evaluation Type

Continuous evaluation  

Weekly tests:

Both in class and in seminars short tests and quizzes will be handed to test autonomous work progress during the course. These tests account for 25 points of the final grade, with a minimum requirement of 10 points.

Team project:

This is part of the continuous evaluation. A team project has to be developed and 20 points can be earned. The team project consists of the analysis of a consumption product chosen by the team and the use of statistical information to introduce an alternative product into the same market.

Weekly completion of tasks:

Each week an independent work guide is assigned and is used to practice some of the concepts introduced in class. 5 points can be earned by the successful completion of these tasks.

Final Evaluation  

A final exam is written at the end of the quarter where 50 points can earned. The final exam is compulsory and a minimum of 20 points have to be earned.

The exam is composed by 8 practical questions, to be answered during two hours. The first four questions are in a multiple choice format, while the last four questions are open questions.

Criteria to earn the course credits

To earn the credits in the course a minimum of 50 points have to be obtained, while also complying with a minimum of 10 points in the weekly tests and 20 points in the final exam.

This is a summary table of the evaluation criteria:

Activity evaluation

Final evaluation

Final exam

50 points of the final grade

 

(at the end

(a minimum of 20 points

 

of the quarter)

are needed)

Continuous

Weekly

25 points of the final grade

Evaluation

evaluation

(a minimum of 15 points

 

tests

are needed)

 

Team

20 points of the final grade

 

project

 

 

Weekly task

5 points of the final gradel

 

assignments

 

Total points to be earned

100 punts

 

(A minimum of 50 points

 

are needed and the minimum

 

requirements for the final

 

exam and for the weekly

 

tests have to be met)

Methodology

Course organization

These are the different activities during the course:

1.     10 sessions in large lecture group for the introduction of concepts and its basic applications.

2.     8 sessions in seminar group to practice interactively the different statistical concepts introduced in the course.

3.     10 sessions of autonomous individual work.

4.     Autonomous team work and team members interaction.

5.     Final exam preparation.

6.     Final exam writing

The work load of these different activities is the following:

1.     Lectures (2 hours a week during 10 weeks).

2.     Seminars (1 hour a week, starting the third week, for 8 weeks)

3.     Independent work (suggested time: 4 hours a week)

4.     Team work (suggested time: 3 hours a week)

5.     Final exam preparation (suggested time: 15 hours before the final exam)

6.     Final exam (2 hours)

The following table shows the time that students will dedicate to this course (in average):

 

 

 

Lecture

Seminar

Individual

Team

Exam

Exam

Weekly

 

Group

Group

Work

Work

Study

load

 

Week 1

2

 

3

 

 

 

5

Week 2

2

 

3

 

 

 

5

Week 3

2

1

4

3

 

 

10

Week 4

2

1

4

3

 

 

10

Week 5

2

1

4

3

 

 

10

Week 6

2

1

4

3

 

 

10

Week 7

2

1

4

3

 

 

10

Week 8

2

1

4

3

 

 

10

Week 9

2

1

4

3

 

 

10

Week 10

2

1

4

3

 

 

10

Exam

 

 

 

 

15

 

15

Preparation

 

 

 

 

 

 

 

Final Exam

 

 

 

 

 

2

2

Total Hours

 

 

 

 

 

 

 

(107)

20

8

38

24

15

2

 

 

 

 

 

 

 

 

Activities schedule

Course calendar

Week

Activity

Resources

 

 

 

Continued from the previous page

 

 

Week

Activity

Resources

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

Week 1

 

 

Lecture

Course

Moore initial section

 

introduction;

 

 

What is

 

 

statistics?

 

Week 2

 

 

Lecture

Descriptive analysis

Moore pag. 6-20

 

of data

 

Week 3

 

 

Lecture

Test 1: Week 1 i 2

 

 

Numerical description

Moore pag. 30-51

 

of one quantitative variable

 

Seminar

Test: OpenOffice Calc;

 

 

Practice case 1:

 

n

one numerical variable

 

Week 4

 

 

Lecture

Data tranformation;

Dossier pag. 1-8

 

transformation;

 

 

Numerical summaries

 

 

of grouped data

 

Seminar

Test: ODStatistics basics;

 

 

Practice case 2: boxplot

 

Week 5

 

 

Lecture

Test 2: One numerical

 

 

variable analysis

 

 

Computations with

Moore pag. 51-75

 

the normal distribution

 

Seminar

First team project

 

 

presentation

 

Week 6

 

 

Lecture

Analysis with two

Moore pag. 97-173

 

numerical variables

 

Seminar

Test: normal distribution

 

 

computations;

 

 

Practical case: use of the

 

 

normal distribution

 

 

in management

 

Week 7

 

 

Lecture

Test 3: Normal distribution

 

 

Two categorical variables

Moore page. 173-203

Seminar

Test: two numerical variables;

 

 

Practical case: use of

 

 

regression for management

 

Week 8

 

 

Lecture

Time series

Dossier pag. 42-69

Seminar

Second team project

 

 

Presentation

 

Week 9

 

 

Lecture

Test 4: Two categorical

 

 

variables and combinations

 

 

Inequality

Dossier pag. 9-14

Seminar

Test: two categorical

 

 

variables;

 

 

Practical case: false

 

 

categorical relations

 

Week 10

 

 

Lecture

Index number

Dossier pag. 22-41

Seminar

Third team project

 

 

presentation

 

 

 

 

Main events

Each week autonomous guided assignments have to be completed.

Week

Event

1

Seminar formation

2

Team formation and project election

3

Test 1 in lecture, Test 1 in seminar

4

Test 2 in seminar

5

Test 2 in lecture, First team presentation

6

Test 3 in seminar

7

Test 3 in lecture, Test 4 in seminar

8

Second team presentation

9

Test 4 in class, Test 5 in seminar

10

Third team presentation

Teaching resources

1.     Textbook: The Basic practice of statistics, David S. Moore 2nd ed. , W.H. Freeman, 2000.

2.     Data analysis software: ODStatistics, available to download and in all computer rooms at UPF (running under OpenOffice).

3.     Theory dossier prepared by the instructors.