Degree | Type | Year |
---|---|---|
2504216 Contemporary History, Politics and Economics | FB | 1 |
You can view this information at the end of this document.
Although no formal requirements exist, it will be assumed that the student has achieved a basic knowledge of mathematics at secondary/high school level.
Most of the subjects are taught in English. A B2 level of English of the Common European Framework of Reference for Languages is required, although no specific test of English proficiency level is held to access the degree.
The main objective of this course is that students understand and are able to use data analysis and the basic probabilistic tools that are necessary to address the study of statistical inference. In this sense, the subject is clearly linked, in terms of its immediate application, to the course Statistics.
However, the skills in data analysis and probabilistic tools that the student has acquired in this course are also useful in other subjects and disciplines in which data analysis and random phenomena play an important role.
Unit 1 Data Analysis. Collecting data: Sampling and properties.Types of variables and frequency distribution tables. Measures of position, dispersion, shape, and relationship between variables. Graphical representations. Index numbers.
Unit 2 Probability theory. Random events and sample spaces.Probability computation and its properties. Conditional probability and Bayes formula.
Unit 3 Discrete random variables. Definition of random variable. Probability function, expectation and variance of a discrete random variable. Classical discrete distributions: Bernoulli, Binomial, Poisson and Geometric. Multidimensional random variables.
Unit 4 Continuous random variables. Density function, expectation and variance of a discrete random variable. Classical continuous distributions: Uniform, Exponential and Normal. Normal approximation to the Binomial and Poison distributions.
Title | Hours | ECTS | Learning Outcomes |
---|---|---|---|
Type: Directed | |||
Practice Lectures (Exercises and Computer Sessions) | 17 | 0.68 | 7, 8, 9, 10, 11 |
Theory Lectures | 33 | 1.32 | 1, 2, 3, 4, 5, 6, 8, 9, 10 |
Type: Supervised | |||
Tutoring and monitoring work progress | 16.5 | 0.66 | 2, 3, 8, 9 |
Type: Autonomous | |||
Individual study and completion of activities | 80 | 3.2 | 1, 2, 3, 4, 7, 8, 9, 10, 11 |
The activities that will allow the students to learn the basic concepts included in this course are:
1. Theory lectures
The goal of this activity is to introduce in the classroom the basic notions of the subject and guide the student learning.
2. Problem sets
A problem set for the students to solve individually will be included in every unit. The goal of this activity is twofold. On one hand students will work with the theoretical concepts explained in the classroom, and on the other hand through this practice they will develop the necessary skills for problem solving.
3. Practice lectures to work on problem sets
The aim of this activity is to comment on and solve any possible question that students may have had solving the problem assignment. This way they will be able to understand and correct any errors they may have had during this process.
4. Computer sessions
In this activity the students will learn how to use computational tools for the analysis of data.
5. Tutoring hours
Students will have some individual tutor hours in which the subject instructor will help them solve any doubts they may have.
Annotation: Within the schedule set by the centre or degree programme, 15 minutes of one class will be reserved for students to evaluate their lecturers and their courses or modules through questionnaires.
Title | Weighting | Hours | ECTS | Learning Outcomes |
---|---|---|---|---|
Final Exam | 50% | 2 | 0.08 | 1, 2, 3, 4, 5, 6 |
Midterm Exam | 25% | 1 | 0.04 | 1, 2, 3, 4, 5, 6 |
Submission of exercises and essays | 25% | 0.5 | 0.02 | 2, 7, 8, 9, 10, 11 |
--- COMPREHENSIVE ASSESSMENT ---
This subject provides for the comprehensive assessment option. The request for a comprehensive evaluation implies the waiver of the continuous evaluation. The comprehensive assessment must be requested within the deadline and according to the procedure established by the Faculty.
Students who opt for this option must be aware that learning RStudio is an important part of the contents of this subject and, consequently, one of the skills to be assessed. In this sense, students will be responsible for having this software installed on their laptop, in good working condition, so that it can be used on the date of the evaluation.
The comprehensive assessment consists of the following activities:
Evaluation Evidence |
Weight |
Duration |
Classroom activity (in-person) |
Final Exam |
50% |
2 hours |
YES |
Rstudio LABTEST |
25% |
1 hour |
YES |
Delivery of exercises and/or assignments |
25% |
- |
NO |
The procedures for the revision of the qualifications and the retake process, as well as the regulations on irregularities in the evaluation acts are the same as for the continuous evaluation, as described in the corresponding sections below.
--- CONTINUOUS ASSESMENT ---
The evaluation of the students will be carried out according to the following activities:
1. A midterm exam
Written evidence in which the student will not be allowed to consult any kind of teaching or support material.
2. A final exam
Written evidence in which the student will not be allowed to consult any kind of teaching or support material, and will include all the contents of the course.
The exam is designed so that the student performs a last learning effort that is considered necessary to consolidate the previously acquired knowledge.
3. Submission of problem sets and/or essays
Students will submit, at the request of the teaching staff and following their instructions, exercises and/or essays to be solved individually and/or in groups.
4. Evaluation criteria
The grade of the midterm exam will weight a 25% of the average grade of the subject.
The grade of the final exam will weight a 50% of the average grade of the subject.
The average grade of the submission of exercises and/or essays will weight a 25% of the average grade of the subject.
Therefore, the average grade of the subject is computed as:
average grade of the subject = 30% (grade of the midterm exam) +
+ 50% (grade of the final exam) +
+ 20% (grade exercises/essays)
The subject will be considered "passed" if the average grade of the subject is equal to or greater than 5.
A student that, according to the criteria above, has not passed the subjet might qualify for the retake exam according to what is established in the section "Retake Process" below.
A student who has not participated in any of the assessment activities will be considered "Not evaluable"
Calendar of evaluation activities
The dates of the evaluation activities (exercises in the classroom, assignments, ...) will be announced well in advance during the semester though Campus Virutal
"The dates of evaluation activities cannot be modified, unless there is an exceptional and duly justified reason why an evaluation activitycannot be carried out. In this case, the degree coordinator will contact both the teaching staff and the affectedstudent, and a new date will be scheduled within the same academic period to make up for the missed evaluation activity." Section 1 of Article 115. Calendar of evaluation activities (Academic Regulations UAB).
Students who, in accordance with the previous paragraph, need to change an evaluation activity date must file a request through the degree coordinator.
Grade revision process
On carrying out each evaluation activity, students will be informed (via Moodle) of the date and method in which the grades will be published. Moreover, lecturers will also inform students (via Moodle) of the procedure, place, date and time for reviewing the grades awarded.
Retake Process
"To be eligible to participate in the retake process, it is required for students to have been previously evaluated in a set of activities that represents a minimum of three quarters of the total grade for the subject or module" Section 3 of Article 112nd. The retake process (UAB Academic Regulations).
Additionally, it is required that the student has obtained an average grade of the subject between 3.5 and 4.8.
The date of the retake exam will be posted in the calendar of evaluation activities of the Faculty. Students who take this exam and pass will get a grade of 5 for the subject. If the student does not pass the retake, the grade will remain unchanged.
Irregularities in evaluation activities
Notwithstanding other disciplinary measures deemed appropriate, and in accordance with current academic regulations, "in the case that the student makes any irregularity that could lead to a significant variation in the grade of an evaluation activity, it will be graded with a 0, regardless of the disciplinary process that can be instructed. In case of various irregularities occur in the evaluation of the same subject, the final grade of this subject will be 0". Section 10 of Article 116. Results of the evaluation. (UAB Academic Regulations).
Teaching materials that will cover all the course contents will be provided.
Additional recommended resources are:
R and RStudio
R is a powerful programming language for doing statistics. It can be used for simple tasks, such as computing the average of a list of numbers, or for more advanced techniques such as linear and nonlinear models, statistical tests, time series analysis, classification, clustering, etc. As a matter of fact, R is considered to be one of the most widely used statistical analysis software in both industry and academia.
R is a very versatile and easy to expand open source project, which means that it is freely distributed and that there is a community of thousands of users and programmers who constantly contribute to the maintenance, improvement and expansion of R. One can discover everything R can do by visiting its website: “The Comprehensive R Archive Network” at CRAN.
On the other hand, R Studio is a powerful IDE (Integrated Development Environment) to work with R, and is the tool that we will use during the course.
Name | Group | Language | Semester | Turn |
---|---|---|---|---|
(PAUL) Classroom practices | 50 | English | first semester | morning-mixed |
(TE) Theory | 50 | English | first semester | afternoon |