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Ekonomia-Ikasgai Aurreratuak

Gaiari buruzko datu orokorrak

Modalitatea
Ikasgelakoa
Hizkuntza
Ingelesa

Irakasgaiaren azalpena eta testuingurua

Students will learn to apply different methodologies learned in other subjects of the master using Python or R while working in an integrated development environment (JupyterLab and RStudio).

This course will also place special emphasis on interactive output and data visualization techniques such as R Shiny or Python Dash that will allow students to learn how to better communicate their results.

It will use a project-based learning approach that draws from methodologies already taught in other subjects, which will allow students to focus on their applications with modern tools.

Irakasleak

IzenaErakundeaKategoriaDoktoreaIrakaskuntza-profilaArloaHelbide elektronikoa
VEGA BAYO, AINHOAEuskal Herriko UnibertsitateaIrakaslego AgregatuaDoktoreaElebidunaEkonomia Analisiaren Oinarriakainhoa.vega@ehu.eus

Gaitasunak

IzenaPisua
Comprender los principios económicos que rigen el funcionamiento del área de estudio50.0 %
Determinar cuestiones relevantes y modelos de decisión individual en relación con el área de estudio que se plasmen en modelos teóricos o empíricos 50.0 %

Irakaskuntza motak

MotaIkasgelako orduakIkasgelaz kanpoko orduakOrduak guztira
Magistrala243660
Ordenagailuko p.162440

Irakaskuntza motak

IzenaOrduakIkasgelako orduen ehunekoa
Ariketak8.0100 %
Azalpenezko eskolak16.0100 %
Irakurketa eta analisi praktikoak60.00 %
Tutoretzak16.0100 %

Ebaluazio-sistemak

IzenaGutxieneko ponderazioaGehieneko ponderazioa
Idatzizko azterketa60.0 % 80.0 %
Lan praktikoak20.0 % 40.0 %

Irakasgaia ikastean lortuko diren emaitzak

-  Use the basic libraries for data analysis in Python or R 


-  Work from an IDE such as JupyterLab or RStudio 


-  Apply modeling techniques such as logistic regression from a machine learning 
perspective 


-  Build an interactive dashboard using Shiny 
or similar

Irakasgai-zerrenda

1. The Data Scientist’s Toolkit.

2. Empirical Applications.

Classification models. Logistic regression. Feature selection and splitting data. Model development and prediction. Model evaluation. Causal impact case study. Examples.

3. Interactive Outputs and Data Visualization.

Introduction to dashboards and other interactive outputs. Basic dashboard creation and interactive graphs with Shiny. Data visualization with Plotly. Informative reports and reproducible research with Markdown.

Bibliografia

Oinarrizko bibliografia

Python

Official Python tutorial: https://docs.python.org/3/tutorial/index.html

A great introductory book: Downey, A. (2012). Think Python. " O'Reilly Media, Inc.". Jupyterlab documentation: https://jupyterlab.readthedocs.io/en/latest/

An introduction to machine learning with scikit-learn: https://scikit- learn.org/stable/tutorial/basic/tutorial.html

R

Official R tutorial: Venables, W. N., & Smith, D. M. (2008). An introduction to R: notes on R, a programming environment for data analysis and graphics. https://cran.r- project.org/doc/manuals/r-release/R-intro.pdf Version 4.1.0 (2021-05-18).

A superb introductory book that uses the tidyverse collection of packages: Wickham, H., & Grolemund, G. (2016). R for data science: import, tidy, transform, visualize, and model data. " O'Reilly Media, Inc.". It is also available to read online, completely for free, at https://r4ds.had.co.nz

RStudio documentation: https://docs.rstudio.com

Machine learning with the mlr package: https://mlr.mlr-org.com

Introduction to Shiny: https://shiny.rstudio.com/tutorial/

Mastering Shiny: Wickham, H. (2021). Mastering shiny. " O'Reilly Media, Inc.". It is also available to read online completely for free at https://mastering-shiny.org

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