Machine Learning Machine Learning with R

Machine Learning with R

Catalog: Machine Learning
Short name: ML With R - 2023
Course start date: 2024-07-02
Paystack

Description

Machine learning is a scientific discipline that explores the construction and study of algorithms that can learn from data. Such algorithms operate by building a model from example inputs and using that to make predictions or decisions, rather than following strictly static program instructions. Machine learning is closely related to and often overlaps with computational statistics; a discipline that also specializes in prediction-making.


This training is an introduction to the concept of machine learning and its application using R tool.


The training will include the following:


Introducing Machine Learning

a. The origins of machine learning

b. Uses and abuses of machine learningEthical considerations

How do machines learn?

Steps to apply machine learning to your data

Choosing a machine learning algorithm

Using R for machine learning

Forecasting Numeric Data – Regression Methods

Understanding regression

Example – predicting medical expenses using linear regression

a. collecting data

b. exploring and preparing the data

c. training a model on the data

d. evaluating model performance

e. improving model performance

Course Duration:- 20h 21m

Sections

General
0 activities

Introduction to Machine Learning
How do Machine Learn
Steps to Apply Machine Learning
Regression and Classification Problems
Basic Data Manipulation in R
More on Data Manipulation in R
Basic Data Manipulation in R - Practical
Create a Vector
2.7 Problem and Solution
2.10 Problem and Solution
Exponentiation Right to Left
2.13 Avoiding Some Common Mistakes
Simple Linear Regression
Simple Linear Regression Continues
What is Rsquare
Standard Error
General Statistics
General Statistics Continues
Simple Linear Regression and More of Statistics
Open the Studio
What is R Square
What is STD Error
Reject Null Hypothesis
Variance Covariance and Correlation
Root names and Types of Distribution Function
Generating Random Numbers and Combination Function
Probabilities for Discrete Distribution Function
Quantile Function and Poison Distribution
Students T Distribution, Hypothesis and Example
Chai-Square Distribution
Data Visualization
More on Data Visualization
Multiple Linear Regression
Multiple Linear Regression Continues
Regression Variables
Generalized Linear Model
Generalized Least Square
KNN- Various Methods of Distance Measurements
Overview of KNN- (Steps involved)
Data normalization and prediction on Test Data
Improvement of Model Performance and ROC
Decision Tree Classifier
More on Decision Tree Classifier
Pruning of Decision Trees
Decision Tree Remaining
Decision Tree Remaining Continues
General concept of Random Forest
Ada Boosting and Ensemble Learning
Data Visualization and Preparation
Tuning Random Forest Model
Evaluation of Random Forest Model Performance
Introduction to Kmeans Clustering
Kmeans Elbow Point and Dataset
Example of Kmeans Dataset
Creating a Graph for Kmeans Clustering
Creating a Graph for Kmeans Clustering Continues
Aggregation Function of Clustering
Conditional Probability with Bayes Algorithm
Venn Diagram Naive Bayes Classification
Component OF Bayes Theorem using Frequency Table
Naive Bayes Classification Algorithm and Laplace Estimator
Example of Naive Bayes Classification
Example of Naive Bayes Classification Continues
Spam and Ham Messages in Word Cloud
Implementation of Dictionary and Document Term Matrix
Executes the Function Naive Bayes
Support Vector Machine with Black Box Method
Linearly and Non- Linearly Support Vector Machine
Kernal Trick
Gaussian RBF Kernal and OCR with SVMs
Examples of Gaussian RBF Kernal and OCR with SVMs
Summary of Support Vector Machine
Feature Selection Dimension Reduction Technique
Feature Extraction Dimension Reduction Technique
Dimension Reduction Technique Example
Dimension Reduction Technique Example Continues
Introduction Principal Component Analysis
Steps of PCA
Steps of PCA Continues
Eigen Values
Eigen Vectors
Principal Component Analysis using Pr-Comp
Principal Component Analysis using Pr-Comp Continues
C Bind Type in PCA
R Type Model
Black Box Method in Neural Network
Characteristics of a Neural Networks
Network Topology of a Neural Networks
Weight Adjustment and Case Update
Introduction Model Building in R
Installing the Package of Model Building in R
Nodes in Model Building in R
Example of Model Building in R
Time Series Analysis
Pattern in Time Series Data
Time Series Modelling
Moving Average Model
Auto Correlation Function
Inference of ACF and PFCF
Diagnostic Checking
Forecasting Using Stock Price
Stock Price Index
Stock Price Index Continues
Prophet Stock
Run Prophet Stock
Time Series Data Denationalization
Time Series Data Denationalization Continues
Average of Quarter Denationalization
Regression of Denationalization
Gradient Boosting Machines
Errors in Gradient Boosting Machines
What is Error Rate in Gradient Boosting Machines
Optimization Gradient Boosting Machines
Gradient Boosting Trees (GBT)
Dataset Boosting in Gradient
Example of Dataset Boosting in Gradient
Example of Dataset Boosting in Gradient Continues
Market Basket Analysis Association Rules
Market Basket Analysis Association Rules Continues
Market Basket Analysis Interpretation
Implementation of Market Basket Analysis
Example of Market Basket Analysis
Datamining in Market Basket Analysis
Market Basket Analysis Using Rstudio
Market Basket Analysis Using Rstudio Continues
More on Rstudio in Market Analysis
New Development in Machine Learning
Data Scientist in Machine Learnirng
Types of Detection in Machine Learning
Example of New Development in Machine Learning
Example of New Development in Machine Learning Continues
Course Certificate

Secure Video
131
Certificate
1
Cost: 5000

Tag

Course Duration:- 20h 21m