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Advanced analysis of outliers in R and Matlab
Learn robust data analysis with R and Matlab, the key in Data Mining, Statistics, and Machine Learning.

This Course Includes
udemy
4.5 (26 reviews )
9h 13m
english
Online - Self Paced
professional certificate
Udemy
About Advanced analysis of outliers in R and Matlab
Robust data analysis
and
outlier detection
are crucial in Statistics, Data Analysis, Data Mining, Machine Learning, Artificial Intelligence, Pattern Recognition, Classification, Principal Components, Regression, Big Data, and any field related to the data. With the course you will obtain the
FREE BOOK ABOUT OUTLIERS
with specific tips and tricks, and the summary of all the robust methods to detect them that will help you obtain accurate results and awsome data analysis. Researchers, students, data analysts, and mostly anyone dealing with real data, should be aware of the problem with outliers (and outliers) and should know how to deal with this problem and what robust methods should be used. . The vast majority of Machine Learning algorithms are capable of detecting characteristics common to the majority of data, but many times they are confused or even ignore those atypical data, which should not be ignored in conditions where the
security
of people, such as the analysis of
medical data
, the world of the
Internet of Things IoT
, or
risks and security
in companies.
What would happen if a virus spread throughout the world because we ignored anomalous data? We would have a pandemic, like that of
COVID19
, which if the outlier signals detected by neural networks had not been ignored, we could have acted upon beforehand.
What would happen if we ignored any signal from a
Smart City system
? We could miss a gas leak.
What would happen if by ignoring an alarm, we miss a
meteorite
coming towards the earth? We would have to call Bruce Willis, to save us from Armageddon. With this course you will be
an expert in robust data analysis
, in the detection and treatment of atypical data, both learning the theoretical concepts, and having at your disposal the algorithms implemented in a practical way with two different languages so that you can choose the one that best suits you:
R-Studio and Matlab
. You will also have
access to a community for questions
, where all the students are and you can ask what you want about the analysis of outliers. The example implementation codes are available to you in the
open Github repository
for you to download and use. In addition, we have
two sections of basic concepts
that will help you to remember some notions necessary to understand atypical detection methods. With this course you will be able to understand and know how to deal with
one of the most important topics
of today both academically, in the industry and in data analysis or machine learning. The examples will help you to visualize the importance of the analysis of outliers as well as a
guide to carry out these analyzes yourself
.
What You Will Learn?
- ✍ All concepts related to Outliers and Robust Statistics .
- 💻 Practical examples in R and Matlab, step by step .
- 📚 The Free Book of Outliers with tips and tricks .
- 🤓 What methods you should use in practice .
- 🌎 Real dataset examples .
- 🧧 Valid official certificate .
- 🙌 The course is updated every month .
- 🎁 Gift when finished.