This course is designed for those interested to learn the basics of data preprocessing using MATLAB and be able to figure out how to further improve the performance of machine learning algorithms. Read more.
Access all courses in our library for only $9/month with All Access Pass
Get Started with All Access PassBuy Only This CourseAbout This Course
Who this course is for:
- This course is for you if you want to fully equip yourself with the art of applied machine learning using MATLAB and if you want to apply the most commonly used data preprocessing techniques without having to learn all the complicated math.
- This course is also for you if you have had previous hours and hours of machine learning implementation but could never figure out how to further improve the performance of machine learning algorithms.Â
What you’ll learn:Â
- How to effectively preprocess data before analysis.
- How to implement different preprocessing methods using MATLAB
- Take away code templates for quickly preprocessing your data
- Decide which method choose for your dataset
Requirements:Â
- No prior MATLAB knowledge is required to take this course
By the end of this course, you will have at your fingertips, a vast variety of most commonly used data preprocessing techniques that you can use instantly to maximize your insight into your data set.
The approach in this course is very practical and we will start everything from scratch. We will immediately start coding after a couple of introductory tutorials and we try to keep the theory to bare minimal. All the coding will be done in MATLAB which is one of the fundamental programming languages for engineering and science students and is frequently used by top data science research groups worldwide.
Below is a brief outline of this course:
Segment 1: Introduction To Course And MATLAB
Segment 2: Handling Missing Values
Segment 3: Dealing With Categorical Variables
Segment 4: Outlier Detection
Segment 5: Feature Scaling And Data Discretization
Segment 6: Project: Selecting Techniques For Your Dataset
Our Promise to You
By the end of this course, you will have learned about data preprocessing using MATLAB.
10 Day Money Back Guarantee. If you are unsatisfied for any reason, simply contact us and we’ll give you a full refund. No questions asked.
Get started today and learn more about data preprocessing.
Course Curriculum
Section 1 - Introduction To Course And MATLAB | |||
Downloadable Materials | 00:00:00 | ||
Introduction To Course | 00:00:00 | ||
Introduction To MATLAB | 00:00:00 | ||
Importing Dataset Into MATLAB | 00:00:00 | ||
Section 2 - Handling Missing Values | |||
Deletion Strategies | 00:00:00 | ||
Using Mean And Mode | 00:00:00 | ||
Considering As A Special Value | 00:00:00 | ||
Class Specific Mean And Mode | 00:00:00 | ||
Random Value Imputation | 00:00:00 | ||
Section 3 - Dealing With Categorical Variables | |||
Categorical Data With No Order | 00:00:00 | ||
Categorical Data With Order | 00:00:00 | ||
Frequency Based Encoding | 00:00:00 | ||
Target Based Encoding | 00:00:00 | ||
Section 4 - Outlier Detection | |||
3 Sigma Rule With Deletion Strategy | 00:00:00 | ||
3 Sigma Rule With Filling Strategy | 00:00:00 | ||
Box Plots And Iterquartile Rule | 00:00:00 | ||
Class Specific Box Plots | 00:00:00 | ||
Histograms For Outliers | 00:00:00 | ||
Local Outlier Factor – Part 1 | 00:00:00 | ||
Local Outlier Factor – Part 2 | 00:00:00 | ||
Outliers In Categorical Variables | 00:00:00 | ||
Section 5 - Feature Scaling And Data Discretization | |||
Feature Scalling | 00:00:00 | ||
Discretization Using Equal Width Binning | 00:00:00 | ||
Discretization Using Equal Frequency Binning | 00:00:00 | ||
Section 6 - Project: Selecting The Right Method For Your Data | |||
Selecting the right method – Part 1 | 00:00:00 | ||
Selecting the right method – Part 2 | 00:00:00 |
About This Course
Who this course is for:
- This course is for you if you want to fully equip yourself with the art of applied machine learning using MATLAB and if you want to apply the most commonly used data preprocessing techniques without having to learn all the complicated math.
- This course is also for you if you have had previous hours and hours of machine learning implementation but could never figure out how to further improve the performance of machine learning algorithms.Â
What you’ll learn:Â
- How to effectively preprocess data before analysis.
- How to implement different preprocessing methods using MATLAB
- Take away code templates for quickly preprocessing your data
- Decide which method choose for your dataset
Requirements:Â
- No prior MATLAB knowledge is required to take this course
By the end of this course, you will have at your fingertips, a vast variety of most commonly used data preprocessing techniques that you can use instantly to maximize your insight into your data set.
The approach in this course is very practical and we will start everything from scratch. We will immediately start coding after a couple of introductory tutorials and we try to keep the theory to bare minimal. All the coding will be done in MATLAB which is one of the fundamental programming languages for engineering and science students and is frequently used by top data science research groups worldwide.
Below is a brief outline of this course:
Segment 1: Introduction To Course And MATLAB
Segment 2: Handling Missing Values
Segment 3: Dealing With Categorical Variables
Segment 4: Outlier Detection
Segment 5: Feature Scaling And Data Discretization
Segment 6: Project: Selecting Techniques For Your Dataset
Our Promise to You
By the end of this course, you will have learned about data preprocessing using MATLAB.
10 Day Money Back Guarantee. If you are unsatisfied for any reason, simply contact us and we’ll give you a full refund. No questions asked.
Get started today and learn more about data preprocessing.
Course Curriculum
Section 1 - Introduction To Course And MATLAB | |||
Downloadable Materials | 00:00:00 | ||
Introduction To Course | 00:00:00 | ||
Introduction To MATLAB | 00:00:00 | ||
Importing Dataset Into MATLAB | 00:00:00 | ||
Section 2 - Handling Missing Values | |||
Deletion Strategies | 00:00:00 | ||
Using Mean And Mode | 00:00:00 | ||
Considering As A Special Value | 00:00:00 | ||
Class Specific Mean And Mode | 00:00:00 | ||
Random Value Imputation | 00:00:00 | ||
Section 3 - Dealing With Categorical Variables | |||
Categorical Data With No Order | 00:00:00 | ||
Categorical Data With Order | 00:00:00 | ||
Frequency Based Encoding | 00:00:00 | ||
Target Based Encoding | 00:00:00 | ||
Section 4 - Outlier Detection | |||
3 Sigma Rule With Deletion Strategy | 00:00:00 | ||
3 Sigma Rule With Filling Strategy | 00:00:00 | ||
Box Plots And Iterquartile Rule | 00:00:00 | ||
Class Specific Box Plots | 00:00:00 | ||
Histograms For Outliers | 00:00:00 | ||
Local Outlier Factor – Part 1 | 00:00:00 | ||
Local Outlier Factor – Part 2 | 00:00:00 | ||
Outliers In Categorical Variables | 00:00:00 | ||
Section 5 - Feature Scaling And Data Discretization | |||
Feature Scalling | 00:00:00 | ||
Discretization Using Equal Width Binning | 00:00:00 | ||
Discretization Using Equal Frequency Binning | 00:00:00 | ||
Section 6 - Project: Selecting The Right Method For Your Data | |||
Selecting the right method – Part 1 | 00:00:00 | ||
Selecting the right method – Part 2 | 00:00:00 |