• No products in the cart.

Course Curriculum

  • 00:00:00
  • Part 1: Introduction to R Programming
    Session 1 - Introduction to R
    Handout – Introduction to R 00:00:00
    1.1 Getting Started in R FREE 00:00:00
    1.2 R Environment FREE 00:00:00
    1.3 R Packages 00:00:00
    1.4 R Data Types Vectors 00:00:00
    1.5 R Dataframes 00:00:00
    1.6 List in R 00:00:00
    1.7 Factor and Matrices 00:00:00
    1.8 R History and Scripts 00:00:00
    1.9 R Functions 00:00:00
    1.10 Errors in R 00:00:00
    R quiz unit 1 Unlimited
    Session 2 - Data Handling in R
    Handout – Data Handling in R 00:00:00
    2.1 Data handling introduction FREE 00:00:00
    2.2 Importing the Datasets FREE 00:00:00
    2.3 Checklist 00:00:00
    2.4 Subsetting the Data 00:00:00
    2.5 Subsetting Variable Condition 00:00:00
    2.6 Calculated Fields _ ifelse 00:00:00
    2.7 Sorting and Duplicates 00:00:00
    2.8 Joining and Merging 00:00:00
    2.9 Exporting the Data 00:00:00
    R Quiz Unit 2 Unlimited
    Session 3 - Basic Descriptive Statistics & Reporting
    Handout – Basic Statistics, Plots and Reporting in R 00:00:00
    3.1 Introduction and Sampling FREE 00:00:00
    3.2 Descriptive Statistics FREE 00:00:00
    3.3 Percentiles and Quartiles 00:00:00
    3.4 Box Plots 00:00:00
    3.5 Creating Graphs and Conclusion 00:00:00
    R Quiz Unit 3 Unlimited
    Session 4 - Data Cleaning and Treatement
    Handout – Data Cleaning and Treatment in R 00:00:00
    4.1 Data Cleaning Intro and Model Building Cycle FREE 00:00:00
    4.2 Model Building Cycle FREE 00:00:00
    4.3 Data Cleaning Case Study 00:00:00
    4.4 CS lab Step1 Basic Content of Dataset 00:00:00
    4.5 Variable Level Exploration Catagorical 00:00:00
    4.6 Reading Data Dictionary 00:00:00
    4.7 Step2 lab Catagorical Variable Exploration 00:00:00
    4.8 Step3 lab Variable level Exploration – Continuous 00:00:00
    4.9 Data Cleaning and Treatments 00:00:00
    4.10 Step 4 Treatment – Scenario1 00:00:00
    4.11 Step 4 Treatment – Scenario 2 00:00:00
    4.12 Data Cleaning – Scenario 3 00:00:00
    4.13 Some Other Variables 00:00:00
    4.14 Conclusion 00:00:00
    R Quiz Unit 4 Unlimited
    Part 2: Machine Learning using R
    Session 1 - Regression Analysis
    Handout – Regression Analysis 00:00:00
    1.1 Introduction and Corelation FREE 00:00:00
    1.2 LAB Corelation Calculation in R FREE 00:00:00
    1.3 Beyond Pearson Corelation 00:00:00
    1.4 From Corelation to Regression 00:00:00
    1.5 Regression Line Fitting in R 00:00:00
    1.6 R Squared 00:00:00
    1.7 Multiple Regression 00:00:00
    1.8 Adjusted R Squared 00:00:00
    1.9 Issue with Multiple Regression 00:00:00
    1.10 Multicollinearity 00:00:00
    1.11 Regression Conclusion 00:00:00
    Regression Quiz Unlimited
    Session 2 - Logistic Regression
    Handout – Logistic Regression in R 00:00:00
    2.1 Need of Non-Linear Regression FREE 00:00:00
    2.2 Logistic Function and Line FREE 00:00:00
    2.3 Multiple Logistic Regression 00:00:00
    2.4 Goodness of Fit for a Logistic Regression 00:00:00
    2.5 Multicollinearity in Logistic Regression in R 00:00:00
    2.6 Individual Impact of Variables in R 00:00:00
    2.7 Model Selection in R 00:00:00
    2.8 Logistic Regression Conclusion 00:00:00
    Logistic Regression Quiz Unlimited
    Session 3 - Decision Tree
    Handout – Decision Tree in R 00:00:00
    3.1 Introduction to Decision Tree & Segmentation FREE 00:00:00
    3.2 The Decision Tree Philosophy & The Decision Tree Approach FREE 00:00:00
    3.3 The Splitting criterion &Entropy Calculation 00:00:00
    3.4 Information Gain & Calculation 00:00:00
    3.5 The Decision tree Algorithm 00:00:00
    3.6 Split for Variable & The Decision tree-lab(Part 1) 00:00:00
    3.7 The Decision tree-lab(Part 2) & Validation 00:00:00
    3.8 The Decision tree -lab (Part3) & Overfitting 00:00:00
    3.9 Pruning & Complexity Parameters 00:00:00
    3.10 Choosing Cp & Cross Validation Error 00:00:00
    3.11 Two types of Pruning 00:00:00
    3.12 Tree Building & Model Selection-Lab 00:00:00
    3.13 Conclusion 00:00:00
    Decision Trees Quiz Unlimited
    Session 4 - Model Selection and Cross Validation
    Model Selection and Cross Validation in R 00:00:00
    4.1 Introduction to Model Selection FREE 00:00:00
    4.2 Sensitivity Specificity FREE 00:00:00
    4.3 Sensitivity Specificity Continued 00:00:00
    4.4 ROC AUC 00:00:00
    4.5 The Best Model 00:00:00
    4.6 Errors 00:00:00
    4.7 Overfitting Underfitting 00:00:00
    4.8 Bias_Variance Treadoff 00:00:00
    4.9 Holdout Data Validation 00:00:00
    4.10 Ten Fold CV 00:00:00
    4.11 Kfold CV 00:00:00
    4.12 Conclusion 00:00:00
    Session 5 - Neural Network
    Handout – Neural Networks in R 00:00:00
    5.1 Introduction and LogReg Recap FREE 00:00:00
    5.2 Decision Boundary FREE 00:00:00
    5.3 Non Linear Decision Boundary NN 00:00:00
    5.4 Non Linear Decision Boundary and Solution 00:00:00
    5.5 Neural Network Intution 00:00:00
    5.6 Neural Networks Algorithm 00:00:00
    5.7 Neural Network Algorithm Demo 00:00:00
    5.8 Building a Neural Network 00:00:00
    5.9 Local vs Global Min 00:00:00
    5.10 Lab Digit Recognizer 00:00:00
    5.10.1 Digit Recognizer Second Attempt Part 1 00:00:00
    5.10.2 Digit Recognizer Second Attempt Part 2 00:00:00
    5.11 Conclusion 00:00:00
    Neural Networks Quiz Unlimited
    Session 6 - Support Vector Machine - SVM
    Handout – Support Vector Machine 00:00:00
    6.1 Introduction To SVM FREE 00:00:00
    6.2 The Classifier and Decision Boundary FREE 00:00:00
    6.3 SVM – The Large Margin Classifier 00:00:00
    6.4 The SVM Algorithms and Results 00:00:00
    6.5 SVM on R 00:00:00
    6.6 Non Linear Boundary 00:00:00
    6.7 Kernal Trick 00:00:00
    6.8 Kernal Trick on R 00:00:00
    6.9 Soft Margin and Validataion 00:00:00
    6.10 SVM Advantages, Disadvantages and Applications 00:00:00
    6.11 Lab Digit recognize 00:00:00
    6.12 SVM Conclusion 00:00:00
    SVM Quiz Unlimited
    Session 7 - Random Forest and Boosting
    Random Forest and Boosting in R 00:00:00
    7.1 Introduction to Bagging RF Boosting FREE 00:00:00
    7.2 Wisdom of Crowd FREE 00:00:00
    7.3 Ensemble Learning 00:00:00
    7.4 Ensemble Models 00:00:00
    7.5 Bagging 00:00:00
    7.6 Bagging Models LAB 00:00:00
    7.7 Random Forest 00:00:00
    7.8 Random Forest LAB 00:00:00
    7.9 Boosting 00:00:00
    7.10 Boosting Illustration 00:00:00
    7.11 Boosting LAB 00:00:00
    7.12 Conclusion 00:00:00
    RF and Boosting Quiz Unlimited
    Session 8 - Cluster Analysis
    Handout – Cluster Analysis 00:00:00
    8.1 Introduction to Clustering via Segmentation FREE 00:00:00
    8.2 Types of Clusters FREE 00:00:00
    8.3 Similarities and Dissimilarity 00:00:00
    8.4 Calculating the Distance 00:00:00
    8.5 Calculating Distance in R 00:00:00
    8.6 Clustering Algorithms – Kmeans 00:00:00
    8.7 Kmeans Clustring on R 00:00:00
    8.8 More on Kmeans 00:00:00
    8.9 Data Stanndardisation and Non-numeric Data 00:00:00
    8.10 Conclusion 00:00:00
    Cluster Analysis Unlimited
    Part 3 – Machine Learning Projects using R
    Consumer Loan Default Prediction 00:00:00
    Bank Tele Marketing 00:00:00
    Automobile Pricing Strategy 00:00:00
    Census Income 00:00:00
    Direct Mail Marketing 00:00:00
    Credit Card Ratings 00:00:00
    • 5,999
    • UNLIMITED ACCESS
    477 STUDENTS ENROLLED

    Statinfer

    Statinfer derived from Statistical inference. We provide training in various Data Analytics and Data Science courses and assist candidates in securing placements.

    Contact Us

    info@statinfer.com

    +91- 9676098897

    +91- 9494762485

     

    Our Social Links

    top
    © 2020. All Rights Reserved.