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Il y a 4 modules dans ce cours
By the end of this course, learners will be able to identify machine learning foundations, apply statistical concepts, evaluate probability distributions, and implement core algorithms in R. Participants will gain practical skills in data manipulation, regression, classification, decision trees, and ensemble learning, building a comprehensive understanding of both theory and application.
This course is designed for students, data enthusiasts, and professionals seeking to master machine learning using R. Learners will benefit from hands-on practice with R programming, exposure to statistical modeling, and guidance on avoiding common mistakes in data analysis. Through real-world examples and structured quizzes, participants will strengthen their ability to clean, analyze, and interpret data with confidence.
What makes this course unique is its integration of R programming with machine learning foundations, offering a step-by-step approach from statistical basics to advanced algorithms like random forests and boosting. Unlike generic courses, it emphasizes both conceptual clarity and practical implementation, ensuring learners can directly apply techniques to solve real-world problems effectively.
This module introduces the foundations of Machine Learning and the R programming environment. Learners will explore the key concepts of supervised and unsupervised learning, regression versus classification, and the practical steps to apply machine learning to real-world problems. In addition, the module covers essential R programming skills for data manipulation, vector operations, and dataset preparation, ensuring a strong foundation for statistical and machine learning tasks.
Inclus
10 vidéos3 devoirs
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10 vidéos•Total 88 minutes
Introduction to Machine Learning•10 minutes
How do Machine Learn•9 minutes
Steps to Apply Machine Learning•7 minutes
Regression and Classification Problems•8 minutes
Basic Data Manipulation in R•9 minutes
More on Data Manipulation in R•7 minutes
Basic Data Manipulation in R - Practical•9 minutes
Create a Vector•9 minutes
2.7 Problem and Solution•8 minutes
2.10 Problem and Solution•9 minutes
3 devoirs•Total 50 minutes
Introduction to Machine Learning•10 minutes
Data Manipulation in R•10 minutes
Getting Started with R and Machine Learning•30 minutes
Fundamentals of Statistics in R
Module 2•3 heures à terminer
Détails du module
This module covers statistical concepts essential for building and interpreting machine learning models. Learners will review core measures such as variance, correlation, R-squared, and standard error while identifying common statistical mistakes. The module also extends to advanced topics including linear regression, statistical assumptions, and interpretation of outputs, equipping learners with the ability to analyze data with confidence.
Inclus
12 vidéos3 devoirs
Afficher les informations sur le contenu du module
12 vidéos•Total 103 minutes
Exponentiation Right to Left•7 minutes
2.13 Avoiding Some Common Mistakes•7 minutes
Simple Linear Regression•11 minutes
Simple Linear Regression Continues•7 minutes
What is Rsquare•11 minutes
Standard Error•9 minutes
General Statistics•6 minutes
General Statistics Continues•7 minutes
Simple Linear Regression and More of Statistics•11 minutes
Open the Studio•7 minutes
What is R Square•11 minutes
What is STD Error•9 minutes
3 devoirs•Total 50 minutes
Statistical Basics and Common Mistakes•10 minutes
Advanced Statistical Concepts•10 minutes
Fundamentals of Statistics in R•30 minutes
Probability Distributions and Hypothesis Testing
Module 3•3 heures à terminer
Détails du module
This module focuses on probability distributions and hypothesis testing, both critical to statistical inference. Learners will examine discrete and continuous probability distributions, variance-covariance structures, and hypothesis rejection criteria. The module also introduces classical distributions such as t, chi-square, and Poisson, along with visualization techniques for testing data assumptions and interpreting results.
Inclus
12 vidéos3 devoirs
Afficher les informations sur le contenu du module
12 vidéos•Total 109 minutes
Reject Null Hypothesis•10 minutes
Variance Covariance and Correlation•11 minutes
Root names and Types of Distribution Function•11 minutes
Generating Random Numbers and Combination Function•8 minutes
Probabilities for Discrete Distribution Function•10 minutes
Quantile Function and Poison Distribution•10 minutes
Students T Distribution, Hypothesis and Example•10 minutes
Chai-Square Distribution•5 minutes
Data Visualization•9 minutes
More on Data Visualization•8 minutes
Multiple Linear Regression•9 minutes
Multiple Linear Regression Continues•7 minutes
3 devoirs•Total 50 minutes
Hypothesis and Distribution Functions•10 minutes
Classical Statistical Distributions•10 minutes
Probability Distributions and Hypothesis Testing•30 minutes
Core Machine Learning Algorithms
Module 4•4 heures à terminer
Détails du module
This module introduces core machine learning algorithms, focusing on regression, classification, decision trees, and ensemble methods. Learners will explore K-Nearest Neighbors (KNN), generalized regression models, decision tree classifiers, and the use of pruning to improve performance. The module concludes with ensemble learning techniques, including random forests and boosting, for building powerful predictive models.
Inclus
17 vidéos4 devoirs
Afficher les informations sur le contenu du module
17 vidéos•Total 153 minutes
Regression Variables•9 minutes
Generalized Linear Model•12 minutes
Generalized Least Square•9 minutes
KNN- Various Methods of Distance Measurements•8 minutes
Overview of KNN- (Steps involved)•9 minutes
Data normalization and prediction on Test Data•8 minutes
Improvement of Model Performance and ROC•10 minutes
Decision Tree Classifier•9 minutes
More on Decision Tree Classifier•9 minutes
Pruning of Decision Trees•9 minutes
Decision Tree Remaining•7 minutes
Decision Tree Remaining Continues•6 minutes
General concept of Random Forest•11 minutes
Ada Boosting and Ensemble Learning•11 minutes
Data Visualization and Preparation•11 minutes
Tuning Random Forest Model•8 minutes
Evaluation of Random Forest Model Performance•7 minutes
4 devoirs•Total 60 minutes
Regression and Classification Models•10 minutes
Decision Trees and Random Forests•10 minutes
Ensemble Learning with Random Forests•10 minutes
Core Machine Learning Algorithms•30 minutes
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Avis des étudiants
4.6
16 avis
5 stars
62,50 %
4 stars
31,25 %
3 stars
6,25 %
2 stars
0 %
1 star
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Affichage de 3 sur 16
A
AV
5·
Révisé le 30 déc. 2025
This course delivers a clear understanding of machine learning algorithms and their practical implementation using R, boosting analytical and predictive confidence.
S
SC
5·
Révisé le 26 déc. 2025
A highly professional course that focuses on real-world data analysis and predictive modeling using machine learning techniques in R.
P
PS
4·
Révisé le 5 janv. 2026
I was genuinely impressed by the depth and polish of this course. Modern R ecosystem coverage, thoughtful model comparison, and excellent business-oriented explanations.
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