Study programme competencies |
Code
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Study programme competences
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A13 |
Conocer el impacto de la tecnología en los distintos procesos de la industria textil. |
A19 |
Capacidad para la recogida, selección y análisis de flujos de información, integración de los mismos en los sistemas y procesos de gestión de la información de la empresa, y aplicación a la toma de decisiones estratégicas y operativas, siempre desde una perspectiva ética. |
B1 |
Que los estudiantes hayan demostrado poseer y comprender conocimientos en un área de estudio que parte de la base de la educación secundaria general, y se suele encontrar a un nivel que, si bien se apoya en libros de texto avanzados, incluye también algunos aspectos que implican conocimientos procedentes de la vanguardia de su campo de estudio |
B2 |
Que los estudiantes sepan aplicar sus conocimientos a su trabajo o vocación de una forma profesional y posean las competencias que suelen demostrarse por medio de la elaboración y defensa de argumentos y la resolución de problemas dentro de su área de estudio |
B3 |
Que los estudiantes tengan la capacidad de reunir e interpretar datos relevantes (normalmente dentro de su área de estudio) para emitir juicios que incluyan una reflexión sobre temas relevantes de índole social, científica o ética |
B4 |
Que los estudiantes puedan transmitir información, ideas, problemas y soluciones a un público tanto especializado como no especializado |
B5 |
Que los estudiantes hayan desarrollado aquellas habilidades de aprendizaje necesarias para emprender estudios posteriores con un alto grado de autonomía |
B8 |
Capacidad de planificación, organización y gestión de recursos y operaciones |
B9 |
Capacidad de análisis, diagnóstico y toma de decisiones |
C3 |
Utilizar las herramientas básicas de las tecnologías de la información y las comunicaciones (TIC) necesarias para el ejercicio de su profesión y para el aprendizaje a lo largo de su vida |
C7 |
Desarrollar la capacidad de trabajar en equipos interdisciplinares o transdisciplinares, para ofrecer propuestas que contribuyan a un desarrollo sostenible ambiental, económico, político y social |
C8 |
Valorar la importancia que tiene la investigación, la innovación y el desarrollo tecnológico en el avance socioeconómico y cultural de la sociedad |
Learning aims |
Learning outcomes |
Study programme competences |
Acquisition of skills for the statistical analysis of data as support in decision making in the company, industry and research. |
A13 A19
|
B1 B2 B3 B9
|
C3
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Knowledge of the basic concepts of statistics, as well as those more specific related to the industry, management and business analytics, that allow the correct definition of real problems, the adequate collection of data and the application of the appropriate techniques. |
|
B1 B4 B5 B8 B9
|
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Acquisition of skills for data analysis and decision making using statistical software, as well as for group work in multidisciplinary projects. |
A19
|
B2 B3 B4 B9
|
C3 C7 C8
|
Contents |
Topic |
Sub-topic |
Descriptive statistics of a variable and introduction to the use statistical software. |
Basic concepts of descriptive statistics.
Characteristics measures of position, dispersion and shape.
Graphics.
Introduction to R statistical software. |
Descriptive statistics of more than one variable.
|
Measures of association and correlation.
Graphics for two or more variables.
Linear regression.
Unsupervised classification (cluster). |
Probability
|
Experiments and events.
Probability definition and properties.
Conditioned robability.
Total probability and Bayes theorem. |
Random variables.
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Discrete random variables.
Continuous random variables. |
Main probability distributions.
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Binomial distribution.
Negative binomial distribution.
Hypergeometric distribution.
Poisson distribution.
Uniform distribution
Normal distribution.
Exponential distribution
Distributions associated with the normal. |
Statistical inference.
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Point estimates.
Confidence intervals.
Hypothesis testing.
Inference in linear regression models. |
Basic techniques of statistical quality control.
|
Basic concepts.
Six Sigma Methodology
Ishikawa's diagram.
Pareto chart.
Control charts
Process capacity analysis. |
Time series.
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Definition.
Components
Estimation and prediction.
|
Planning |
Methodologies / tests |
Competencies |
Ordinary class hours |
Student’s personal work hours |
Total hours |
Guest lecture / keynote speech |
B1 B3 B4 B5 B9 C8 |
67 |
0 |
67 |
Problem solving |
B1 B2 B3 B4 B5 B8 B9 |
16.5 |
16.5 |
33 |
ICT practicals |
A19 B2 B3 B4 B9 C3 |
21.5 |
21.5 |
43 |
Multiple-choice questions |
B1 B2 B3 B4 B9 |
2 |
0 |
2 |
Supervised projects |
A13 A19 B2 B3 B8 B9 C3 C7 C8 |
1 |
0 |
1 |
Events academic / information |
A13 B1 C8 |
4 |
0 |
4 |
|
Personalized attention |
|
0 |
|
0 |
|
(*)The information in the planning table is for guidance only and does not take into account the heterogeneity of the students. |
Methodologies |
Methodologies |
Description |
Guest lecture / keynote speech |
Keynote speech will be given in which the teacher will explain, with the help of appropriate audiovisual media, the main contents of the subject. |
Problem solving |
Seminars consisting of problem solving will be held in small groups, in order to set the concepts shown in the lectures and provide information about the methodologies for the practical resolution of problems through statistics. |
ICT practicals |
In the practical classes the student will be introduced to the handling of the statistical software R. Computational tools for the resolution of problems will be shown and applied through the statistical analysis of data, either from simulated or real data. |
Multiple-choice questions |
At the end of the course, there will be a test of 15 to 20 questions, both practical and theoretical. |
Supervised projects |
Students will be proposed to develop a group work (2 to 4 people) consisting of the application of statistical and computational tools shown in class to a particular case study, described by real or simulated data. You can also perform a work consisting of the description of a case study in the industry and the management, in which the resolution of a real problem is carried out based on the application of statistical techniques. Another alternative will be the use of statistical tools and data analysis, its usefulness and its application in industry and business management, in particular, those related to the fashion sector. |
Events academic / information |
Presentations, lectures, small courses or seminars from professionals in the fashion sector and/or data analysis will be presented to complement the teaching and providing a global perspective on the importance and usefulness of data analysis in this industry. |
Personalized attention |
Methodologies
|
Guest lecture / keynote speech |
|
Description |
There will be keynote lectures in which the teacher will explain, with the help of appropriate audiovisual media, the main contents of the subject, promoting the debate in class. In the particular case of students with academic dispensation, you can perform face-to-face and virtual tutorials (email, video conference), which allow the student to satisfactorily follow the subject. |
|
Assessment |
Methodologies
|
Competencies |
Description
|
Qualification
|
Multiple-choice questions |
B1 B2 B3 B4 B9 |
Constará de 15 a 20 preguntas tipo test con tres respostas posibles |
60 |
Supervised projects |
A13 A19 B2 B3 B8 B9 C3 C7 C8 |
Traballos a realizar en grupos de 2 a 4 persoas, de aplicación da estatística a datos reais ou simulados, de revisión dun tema da estatística ou análise de datos en xeral determinado ou mesmo referente a unha aplicación específica da estatística en xestión e industria. |
20 |
Problem solving |
B1 B2 B3 B4 B5 B8 B9 |
Avaliarase a asistencia e desempeño do alumno nas clases de problemas. |
10 |
ICT practicals |
A19 B2 B3 B4 B9 C3 |
Avaliarase a asistencia e desempeño do alumno nas clases de prácticas, do mesmo xeito que a entrega de traballos relacionados coa aplicación do software estatístico R. |
10 |
|
Assessment comments |
Evaluation at the first opportunity The multiple-choice test score will be weighted with the grade corresponding to the delivery of practical work related to the practices carried out with the statistical software R, with assistance to practical classes (ICT practices and exercises) and systematic observation of the performance of the student and with the delivery of supervised works. Second chance evaluation The evaluation will be done following the same procedure as in the first opportunity. In the case of students with recognition of part-time dedication and academic exemption of attendance that decides not to attend classes, thet will be evaluated in the two opportunities as the rest of the students who are in a similar situation.
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Sources of information |
Basic
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Umesh R Hodeghatta, Umesha Nayak (2016). Business Analytics Using R - A Practical Approach. Springer
Cao R., Franciso M, Naya S., Presedo M., Vázquez M., Vilar J.A. y Vilar J.M. (2005). Introducción a la Estadística y sus aplicaciones. Pirámide
María Dolores Ugarte, Ana F. Militino, and Alan T. Arnholt (2015). Probability and Statistics with R. CRC Press
Robert H. Shumway, David S. Stoffer (2011). Time Series Analysis and its Applications. Springer |
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Complementary
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Recommendations |
Subjects that it is recommended to have taken before |
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Subjects that are recommended to be taken simultaneously |
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Subjects that continue the syllabus |
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