Degree | Type | Year | Semester |
---|---|---|---|
2503710 Geography, Environmental Management and Spatial Planning | OB | 2 | 1 |
There are no prerequisites
Quantitative Methods and Statistics is taught the Second Course of the Degree in Geography, Environment and Planning.
The objective is to introduce students to the use of statistical methods for the design and analysis of data related to Geography. The orientation is eminently practical applying the statistical procedures through the software MS Excel.
The specific objectives are:
1. To introduce students to the basic concepts of descriptive and inferential statistics
2. To decide what the appropriate statistical method is based on the data and the research objectives.
3. To apply basic and multivariate statistics tests
4. To argue the results obtained from the graphic representation, exploration and analysis of the information to describe and characterize territories.
Block 1. Data sources and variables in Geography
1.1 Data sources in Geography: typologies and characteristics
1.2 Data and types of variables
Block 2. Univariate statistics
2.1 Statistics of central tendency and dispersion
2.1 Transformations of variables
Block 3 Bivariate statistics
3.1 Relationship between variables:correlation and linear regression
3.2 Relationship between variables: analysis of contingency tables.
Block 4. Quantitative methods
4.1 Indices of location and inequality
4.2 Time series
Block 5. Introduction to statistical inference
5.1 Basic concepts in inference
5.2 Confidence intervals
5.3 Contrast hypothesis
5.4 Inference for regression
5.5 Inference for contingency tables.
The course is structured from directed, supervised and autonomous activities where the student will learn to develop the contents of the subject with the teacher's face-to-face support at different levels.
- Guided activities: theoretical classes and face-to-face practices. If they are not feasible, teaching will be implemented through Teams platfform
- Supervised activities: face-to-face monitoring of practices. If they are not feasible , teaching will be implemented through Teams platform
- Autonomous activities: study of the theoretical contents and complementary readings and completion of the practices.
The professor will spend approximately 15 minutes of a class to allow students to respond to teacher activity assessment and subject assessment surveys
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 | Hours | ECTS | Learning Outcomes |
---|---|---|---|
Type: Directed | |||
Master classes and carrying out of directed practices in the computer lab | 45 | 1.8 | 7, 1, 6, 2, 4, 3 |
Type: Supervised | |||
Completion of practices in the computer lab | 22 | 0.88 | 7, 1, 6, 2, 4, 3 |
Tutorials | 3 | 0.12 | 7, 1, 6, 2, 4, 3 |
Type: Autonomous | |||
Completion of the course practices | 60 | 2.4 | 7, 1, 6, 2, 4, 3 |
Personal study, preparation tests | 15 | 0.6 | 7, 1, 6, 2, 4, 3 |
Assessed activities:
- A written exam in two parts. Weighting factor: 50 percent of the final grade. Each part would represent 25 percent of the final grade.
- Assignment (4) Weighting factor: 40 percent of the final grade. Each assignment would represent 10 percent of the final grade
- Problem set resolution at computer room. Students would delivery half of all problems solved. Weighting factor: 10 percent of the final mark.
Assesment criteria:
- Final grade will be the weighted average of all activities submitted to assesment.
- The final grade of the written exam will be the average of the two parts.
- Students who have only completed 1/3 of the assessed activities will be classified as "Not evaluable".
- The activities not delivered or performed on the indicated date will be classified as "Not Submitted".
-In the event of a student committing any irregularity that may lead to a significant variation in the grade awarded to an assessment activity, the student will be given a zero for this activity, regardless of any disciplinary process that may take place. In the event of several irregularities in assessment activities of the same subject, the student will be given a zero as the final grade for this subject.
Students interested in reviewing grades from assessed activities would sent a message to the professor through the Moodle room. Students will be informed of the date for reviewing grades after assessing learning activities.In this message students will justify their request.
Resit eximanation:
The resit eximanation will be done through a written test. Students who have completed 2/3 of the assessed activities and have achieved a final grade between 3 and 5 points would be allowed to attend the resit examination. The grade form this examination will replace all previous grades. The finalgrade can not be higher than 5.
Gender issues: Data analysis in assignments and problem set resolution will be taking into account social and gender differences.
In the event that tests or exams cannot be taken onsite, they will be adapted to an online format made available through the UAB’s virtual tools (original weighting will be maintained). Homework, activities and class participation will be carried out through forums, wikis and/or discussion on Teams, etc. Lecturers will ensure that students are able to access these virtual tools, or will offer them feasible alternatives.
Title | Weighting | Hours | ECTS | Learning Outcomes |
---|---|---|---|---|
Assignment | 40 percent | 2 | 0.08 | 7, 1, 6, 2, 4, 3 |
Problems set at computer room | 10 percent | 0.5 | 0.02 | 1, 2, 5, 4 |
Written exam | 50 percent | 2.5 | 0.1 | 7, 1, 6, 2, 4, 3 |
BARDINA, Xavier; FARRÉ, Mercè; LÓPEZ ROLDAN, Pedro. (2005). Estadística: un curs introductori per a estudiants de ciències socials i humanes. Volum 2 descriptiva exploratòria bivariant. Introducció a la inferència. Bellaterra: Servei de Publicacions Universitat Autònoma de Barcelona, Col·lecció Materials 166.(*)
BURT, James E; BERBER, Gerald. (1996). Elementary Statistics for Geographers. Guilford press. London. (Capítulos: 3, 5, 7,8, 9).
CALBERG, Conrad. (2011). Análisis Estadistico con Excel. Editorial Anaya. Madrid
EBDON, David. (1982). Estadística para geógrafos. Barcelona: Oikos Tau. pp 18-23, 28-33, 51-68, 129-142, 168-175, 182-212, 240-249.
FARRÉ, Mercè. (2005). Estadística: un curs introductori per a estudiants de ciències socials i humanes. Volum 1 descriptiva i exploratòria univariant. Bellaterra: Servei de Publicacions Universitat Autònoma de Barcelona, Col·lecció Materials 162.(*)
FREEDMAN, David; PISANI, Robert; PURVES,Roger; ADHIKARI, Ani. (1993). Estadística. Segunda edición. Antoni Bosch editor. Barcelona. (Partes: II, III , VI ( cap. 23, pp. 459-480) y VIII. (cap. 26, pp. 519-550)).(*)
HAMMOND, Robert; McCullagh, patrick.s. (1980). Técnicas cuantitativas en Geografia Editorial Saltes Madrid.(Capitulos 3, 6 (pp. 173-196) 7 (pp. 239-256) y 8).
López-Roldán, Pedro.; Fachelli, Sandra. (2015). Metodología de la Investigación Social Cuantitativa. Bellaterra (Cerdanyola del Vallès): Dipòsit Digital de Documents, Universitat Autònoma de Barcelona. 1ª edición. Edición digital: http://ddd.uab.cat/record/129382. (Parte II, Cap. 1; Parte III cap 3; Parte III cap 6, pp. 1-23; Parte III cap 4).(*)
MARQUÉS, Felicidad. (2009). Estadística descriptiva a través de EXCEL. México D.F.: Alfaomega grupo editor S.A..
MARSH, Catherine (1990). Exploring Data.An Introduction to Data Analysis for Social Scientists. Polity Press. Oxford. Cap 1 y 2 y Parte II.
PEÑA SANCHEZ DE RIVERA, David; ROMO URROZ, Juan José. (1997). Introducción a la estadística para las ciencias sociales. McGraw-Hill Interamericana de España. Madrid
RASO, José Maria; MARTÍN VIDE, J.I.; CLAVERO, Pedro. (1987). Estadística bàsica para Ciencias Sociales. Barcelona. Ariel. Capítulos: 4 (pp. 77-92 ) y 6.
ROGERSON, Peter A. (2014). Statistical Methods for Geography. Sage. London. (Cap 2.5.7 y 8).
(*) Main references
Gender issues have been taken into account in the list of references.
Desirable software SPSS (not available with licence in the UAB).
Software employed in the course will be EXCEL (specific Menu: Analysis of data. Menu to install through the option of Complements in the spreadsheet).
Software optional (if not available in EXCEL) R Studio