Logistic Regression With R Studio
Published 11/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.85 GB | Duration: 3h 51m
Learn about Logistic Regression with R Studio and practical implementation
What you'll learn
Know in detail about logistic regression analysis and its benefits
Know about the different methods of finding the probabilities and Understand about the key components of logistic regression
Learn how to interpret the modeling results and present it to others
Know how to interpret logistic regression analysis output produced by R
Requirements
Students or anyone taking this course should have some familiarity with R. There are no basic skills required to take this course.
Description
Regression is a statistical method which helps to determine the relationship between one dependent variable and other independent variables. It explains how the dependent variable changes when one of the independent variable varies. It is also used to know which independent variable is related to the dependent variable and what is their relationship. Regression analysis is widely used in the field of prediction and forecasting. Regression analysis is an important component for modelling and analyzing data.Regression is of two types - Linear regression and Multiple regression. Linear regression uses one independent variable to know the outcome whereas Multiple regression uses two or more independent variable to forecast the output.In the recent years many techniques have been developed to perform regression analysis. They are Linear regression, Logistic regression, Polynomial regression, Stepwise regression, Ridge regression, Lasso Regression and Elastic net regression.Uses of regression analysisRegression analysis helps to find the significant relationship between dependent variable and independent variableIt helps to know the amount of impact caused by multiple independent variables on a dependent variableIt helps to compare the effects of variables measured using different scales. This comparison will help to bring out the best to be used for predictive modelling.Regression analysis is used in businesses for a lot of reasons like to find out the factors responsible for business profit, to forecast the future value, to know how the interest rates can affect the stock price and so on.Regression analysis is used as a quantitative research method which is used when the research involves modelling and analysis of several variables.Logistic regression in R is defined as the binary classification problem in the field of statistic measuring. The difference between a dependent and independent variable with the guide of logistic function by estimating the different occurrence of the probabilities, i.e., it is used to predict the outcome of the independent variable (1 or 0 either yes/no) as it is an extension of a linear regression which is used to predict the continuous output variables.How does Logistic Regression in R works?Logistic regression is a technique used in the field of statistics measuring the difference between a dependent and independent variable with the guide of logistic function by estimating the different occurrence of probabilities. They can be either binomial (has yes or No outcome) or multinomial (Fair vs poor very poor). The probability values lie between 0 and 1, and the variable should be positive (<1).It targets the dependent variable and has the following steps to follow:n- no. of fixed trials on a taken dataset.With two outcomes trial.The outcome of the probability should be independent of each other.The probability of success and failures must be the same at each trial.
Overview
Section 1: Introduction
Lecture 1 Introduction to Logistic Regression
Section 2: Advertisement Dataset
Lecture 2 Advertisement Dataset
Lecture 3 Raw Column
Lecture 4 Feature Scaling
Lecture 5 Fitting Logistic Regression Model
Lecture 6 Classifier Scoefficients
Lecture 7 Classifier Scoefficients Continue
Lecture 8 Make Confusion Matrix
Lecture 9 Logistic Regression Training Set
Section 3: Diabetes Dataset
Lecture 10 Diabetes Dataset
Lecture 11 Diabetes Dataset - Logistic Regration Model
Lecture 12 Making a Model
Lecture 13 Dimension Reduction
Lecture 14 Confusion Matrix
Lecture 15 Reduce Number of False Positives
Lecture 16 Plot Roc Curv
Lecture 17 Setting Threshold
Lecture 18 Area Under Curve
Section 4: Credit Risk
Lecture 19 Credit Risk
Lecture 20 Dataset Loan Dollar Status
Lecture 21 Dependents
Lecture 22 Applicant Income
Lecture 23 Applicant Income Continue
Lecture 24 Loan Amount
Lecture 25 Loan Amount Term
Lecture 26 Credit History
Lecture 27 Spliting Dataset
Anyone who is interested in modeling data and estimate the probabilities of given outcomes.
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