610 € – 976 €

R live class - Machine Learning with R

Informazioni sull'evento

Condividi questo evento

Data e ora

Località

Località

Milano Lima

Via Vitruvio, 1

20124 Milano

Italy

Visualizza Mappa

Politica di rimborso

Politica di rimborso

Rimborsi fino a 30 giorni prima dell'evento

Amici che parteciperanno
Descrizione evento

Descrizione

If you want to find the structure hidden behind your data, this is the right class for you: you will learn how to group similar observations using Clustering; how to “naturally” aggregate your variables using Dimensionality Reduction; how to predict values using Regression and Classification techniques; how to find patterns on your data using Neural Networks. In other words, you will get a full-immersion in the Data Mining and the Machine Learning world, using R.


Course organization

The first day is dedicated to an introduction to the main machine learning issues, followed by a review of regression methods for predictions and of techniques for variables selection, collinearity reduction, and best prediction for regression model. After classification tecniques are presented, we'll go first through the most popular supervised learning techniques such as classification trees and random forests and then we will present unsupervised techniques such as nearest neighbours and support vector machines.
During the second day we will show a review of methods to search for "natural subgroups" (Hierachical/non hierarchical Cluster Analysis) within data. As dimensionality reduction is often an issue, we will provide you with the most popular techniques for data/dimensionality reduction; such techniques (Multidimensional Scaling, Principal Components Analysis, Correspondence Analysis) allow the analyst to "extract" the most relevant information from data, reducing the amount of analyzed variables.
Last Neural Networks are presented as a powerful tool for extracting patterns and detect trends that are too complex to be noticed by other computer techniques.


Outline

- Introduction
- Regression tecniques
- Classification tecniques (LDA, CLASS, KNN)
- Clustering (HC, NHC)
- Dimensionality reduction (MDS, PCA, CA)
- Neural networks


Cost

The cost of a 2 day course is euro 800 + VAT per person. For academic and private attendees the cost is euro 500 + VAT.


FAQ

Should I take this course?

This course is for anyone who is already using R and wants to get an overview of machine learning techniques with R. Some background in theoretical statistics, probability, linear and logistic regression is required.

What does the cost include?

The cost includes lunch, comprehensive course materials + 1 hour of individual online post course support for each student within 30 days from course date.

Is there a maximum number of attendees?

This course is structured to have a maximum of 6 attendees.

Can I have access to a discount?

We offer an academic discount for those engaged in full time studies or research and for private attendees: for them the cost is euro 500 + VAT. We also offer special discounts to members of the MilanoR community.

What should I bring?

A laptop with the latest version of R and R-Studio.

Who will I learn from?

Enrico Pegoraro works in R training and consulting activities, with a special focus on Six Sigma, industrial statistical analysis and corporate training courses. Enrico graduated in Statistics from the University of Padua.
He has taught statistical models and R for hundreds of hours during specialized and applied courses, in universities, masters and companies.

What language is the course taught?

This course is taught in italian. Course material is in English language.

How can I reach your place?

The course location is 550 mt. (7 minutes on walk) from Milan central station and just 77 mt. (1 minute on walk) from Lima subway station.

How can I contact you if I have further questions?

You can visit the official page or contact us at training@quantide.com

Condividi con gli amici

Data e ora

Località

Milano Lima

Via Vitruvio, 1

20124 Milano

Italy

Visualizza Mappa

Politica di rimborso

Rimborsi fino a 30 giorni prima dell'evento

Salva questo evento

Evento salvato