What you will learn
☑ Learn how to solve real life problem using the Machine learning techniques
☑ Machine Learning models such as Linear Regression, Logistic Regression, KNN etc.
☑ Advanced Machine Learning models such as Decision trees, XGBoost, Random Forest, SVM etc.
☑ Understanding of basics of statistics and concepts of Machine Learning
☑ How to do basic statistical operations and run ML models in R
☑ Indepth knowledge of data collection and data preprocessing for Machine Learning problem
☑ How to convert business problem into a Machine learning problem
Description
You’re looking for a complete Machine Learning course that can help you launch a flourishing career in the field of Data Science, Machine Learning, R and Predictive Modeling, right?
You’ve found the right Machine Learning course!
After completing this course, you will be able to:
· Confidently build predictive Machine Learning models using R to solve business problems and create business strategy
· Answer Machine Learning related interview questions
· Participate and perform in online Data Analytics competitions such as Kaggle competitions
Check out the table of contents below to see what all Machine Learning models you are going to learn.
How will this course help you?
A Verifiable Certificate of Completion is presented to all students who undertake this Machine learning basics course.
If you are a business manager or an executive, or a student who wants to learn and apply machine learning, R and predictive modelling in Real world problems of business, this course will give you a solid base for that by teaching you the most popular techniques of machine learning, R and predictive modelling.
Why should you choose this course?
This course covers all the steps that one should take while solving a business problem through linear regression. This course will give you an in-depth understanding of machine learning and predictive modelling techniques using R.
Most courses only focus on teaching how to run the analysis but we believe that what happens before and after running analysis is even more important i.e. before running analysis it is very important that you have the right data and do some pre-processing on it. And after running analysis, you should be able to judge how good your model is and interpret the results to actually be able to help your business.
What makes us qualified to teach you?
The course is taught by Abhishek and Pukhraj. As managers in Global Analytics Consulting firm, we have helped businesses solve their business problem using machine learning techniques using R, Python, and we have used our experience to include the practical aspects of data analysis in this course.
We are also the creators of some of the most popular online courses – with over 150,000 enrollments and thousands of 5-star reviews like these ones:
This is very good, i love the fact the all explanation given can be understood by a layman – Joshua
Thank you Author for this wonderful course. You are the best and this course is worth any price. – Daisy
Our Promise
Teaching our students is our job and we are committed to it. If you have any questions about the course content, machine learning, R, predictive modelling, practice sheet or anything related to any topic, you can always post a question in the course or send us a direct message.
Download Practice files, take Quizzes, and complete Assignments
With each lecture, there are class notes attached for you to follow along. You can also take quizzes to check your understanding of concepts of machine learning, R and predictive modelling. Each section contains a practice assignment for you to practically implement your learning on machine learning, R and predictive modelling.
Below is a list of popular FAQs of students who want to start their Machine learning journey-
What is Machine Learning?
Machine Learning is a field of computer science which gives the computer the ability to learn without being explicitly programmed. It is a branch of artificial intelligence based on the idea that systems can learn from data, identify patterns, and make decisions with minimal human intervention.
What are the steps I should follow to be able to build a Machine Learning model?
You can divide your learning process into 3 parts:
Statistics and Probability – Implementing Machine learning techniques require basic knowledge of Statistics and probability concepts. Second section of the course covers this part.
Understanding of Machine learning – Fourth section helps you understand the terms and concepts associated with Machine learning and gives you the steps to be followed to build a machine learning model
Programming Experience – A significant part of machine learning is programming. Python and R clearly stand out to be the leaders in the recent days. Third section will help you set up the Python environment and teach you some basic operations. In later sections there is a video on how to implement each concept taught in theory lecture in Python
Understanding of models – Fifth and sixth section cover Classification models and with each theory lecture comes a corresponding practical lecture where we actually run each query with you.
Why use R for Machine Learning?
Understanding R is one of the valuable skills needed for a career in Machine Learning. Below are some reasons why you should learn Machine learning in R
1. It’s a popular language for Machine Learning at top tech firms. Almost all of them hire data scientists who use R. Facebook, for example, uses R to do behavioral analysis with user post data. Google uses R to assess ad effectiveness and make economic forecasts. And by the way, it’s not just tech firms: R is in use at analysis and consulting firms, banks and other financial institutions, academic institutions and research labs, and pretty much everywhere else data needs analyzing and visualizing.
2. Learning the data science basics is arguably easier in R than Python. R has a big advantage: it was designed specifically with data manipulation and analysis in mind.
3. Amazing packages that make your life easier. As compared to Python, R was designed with statistical analysis in mind, it has a fantastic ecosystem of packages and other resources that are great for data science.
4. Robust, growing community of data scientists and statisticians. As the field of data science has exploded, usage of R and Python has exploded with it, becoming one of the fastest-growing languages in the world (as measured by StackOverflow). That means it’s easy to find answers to questions and community guidance as you work your way through projects in R.
5. Put another tool in your toolkit. No one language is going to be the right tool for every job. Like Python, adding R to your repertoire will make some projects easier – and of course, it’ll also make you a more flexible and marketable employee when you’re looking for jobs in data science.
What are the major advantages of using R over Python?
As compared to Python, R has a higher user base and the biggest number of statistical packages and libraries available. Although, Python has almost all features that analysts need, R triumphs over Python.
R is a function-based language, whereas Python is object-oriented. If you are coming from a purely statistical background and are not looking to take over major software engineering tasks when productizing your models, R is an easier option, than Python.
R has more data analysis functionality built-in than Python, whereas Python relies on Packages
Python has main packages for data analysis tasks, R has a larger ecosystem of small packages
Graphics capabilities are generally considered better in R than in Python
R has more statistical support in general than Python
What is the difference between Data Mining, Machine Learning, and Deep Learning?
Put simply, machine learning and data mining use the same algorithms and techniques as data mining, except the kinds of predictions vary. While data mining discovers previously unknown patterns and knowledge, machine learning reproduces known patterns and knowledge—and further automatically applies that information to data, decision-making, and actions.
Deep learning, on the other hand, uses advanced computing power and special types of neural networks and applies them to large amounts of data to learn, understand, and identify complicated patterns. Automatic language translation and medical diagnoses are examples of deep learning.
English
Language
Content
Welcome to the course
Introduction
Course resources: Notes and Datasets (Part 1)
Setting up R Studio and R crash course
Installing R and R studio
Basics of R and R studio
Packages in R
Inputting data part 1: Inbuilt datasets of R
Inputting data part 2: Manual data entry
Inputting data part 3: Importing from CSV or Text files
Creating Barplots in R
Creating Histograms in R
Basics of Statistics
Types of Data
Types of Statistics
Describing the data graphically
Measures of Centers
Measures of Dispersion
Intorduction to Machine Learning
Introduction to Machine Learning
Building a Machine Learning Model
Quiz: Introduction to Machine Learning
Data Preprocessing for Regression Analysis
Gathering Business Knowledge
Data Exploration
The Data and the Data Dictionary
Importing the dataset into R
Univariate Analysis and EDD
EDD in R
Outlier Treatment
Outlier Treatment in R
Missing Value imputation
Missing Value imputation in R
Seasonality in Data
Bi-variate Analysis and Variable Transformation
Variable transformation in R
Non Usable Variables
Dummy variable creation: Handling qualitative data
Dummy variable creation in R
Correlation Matrix and cause-effect relationship
Correlation Matrix in R
Linear Regression Model
The problem statement
Basic equations and Ordinary Least Squared (OLS) method
Assessing Accuracy of predicted coefficients
Assessing Model Accuracy – RSE and R squared
Simple Linear Regression in R
Multiple Linear Regression
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The F – statistic
Interpreting result for categorical Variable
Multiple Linear Regression in R
Quiz
Test-Train split
Bias Variance trade-off
Test-Train Split in R
Regression models other than OLS
Linear models other than OLS
Subset Selection techniques
Subset selection in R
Shrinkage methods – Ridge Regression and The Lasso
Ridge regression and Lasso in R
Classification Models: Data Preparation
The Data and the Data Dictionary
Course resources: Notes and Datasets
Importing the dataset into R
EDD in R
Outlier Treatment in R
Missing Value imputation in R
Variable transformation in R
Dummy variable creation in R
The Three classification models
Three Classifiers and the problem statement
Why can’t we use Linear Regression?
Logistic Regression
Logistic Regression
Training a Simple Logistic model in R
Results of Simple Logistic Regression
Logistic with multiple predictors
Training multiple predictor Logistic model in R
Confusion Matrix
Evaluating Model performance
Predicting probabilities, assigning classes and making Confusion Matrix
Linear Discriminant Analysis
Linear Discriminant Analysis
Linear Discriminant Analysis in R
K-Nearest Neighbors
Test-Train Split
Test-Train Split in R
K-Nearest Neighbors classifier
K-Nearest Neighbors in R
Comparing results from 3 models
Understanding the results of classification models
Summary of the three models
Simple Decision Trees
Basics of Decision Trees
Understanding a Regression Tree
The stopping criteria for controlling tree growth
The Data set for this part
Course resources: Notes and Datasets
Importing the Data set into R
Splitting Data into Test and Train Set in R
Building a Regression Tree in R
Pruning a tree
Pruning a Tree in R
Simple Classification Tree
Classification Trees
The Data set for Classification problem
Building a classification Tree in R
Advantages and Disadvantages of Decision Trees
Ensemble technique 1 – Bagging
Bagging
Bagging in R
Ensemble technique 2 – Random Forest
Random Forest technique
Random Forest in R
Ensemble technique 3 – GBM, AdaBoost and XGBoost
Boosting techniques
Gradient Boosting in R
AdaBoosting in R
XGBoosting in R
Maximum Margin Classifier
Content flow
The Concept of a Hyperplane
Maximum Margin Classifier
Limitations of Maximum Margin Classifier
Support Vector Classifier
Support Vector classifiers
Limitations of Support Vector Classifiers
Support Vector Machines
Kernel Based Support Vector Machines
Creating Support Vector Machine Model in R
The Data set for the Classification problem
Course resources: Notes and Datasets
Importing Data into R
Test-Train Split
Classification SVM model using Linear Kernel
Hyperparameter Tuning for Linear Kernel
Polynomial Kernel with Hyperparameter Tuning
Radial Kernel with Hyperparameter Tuning
The Data set for the Regression problem
SVM based Regression Model in R
Conclusion
Course Conclusion
Bonus Lecture
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