SlideShare una empresa de Scribd logo
1 de 15
Descargar para leer sin conexión
Logistic Regression
Analysis
-By
PIE TUTORS
…your statistical partner…
www.pietutors.com
OUTLINE
• Introduction
• Assumptions
• Model development
• Example
• References
Introduction
• Logistic Regression is a statistical method for analyzing a dataset
in which there are one or more independent variables that
determine an outcome. The outcome is measured with a
dichotomous variable, where there are only two possible outcomes.
• The goal of logistic regression is to find the best fitting model to
describe the relationship between the dichotomous characteristic of
interest, and a set of independent variables.
• Logistic Regression generates the coefficients of a formula to
predict a Logit Transformation of the probability of presence of the
characteristic of interest.
Assumptions
• Assumes a linear relationship between the logit of the IVs and
DVs.
• Absence of multi-collinearity.
• Normal distribution is not assumed for the dependent variable as
well as for errors.
• Larger samples are needed than for linear regression.
• The dependent variable must be a dichotomy (2 categories).
• The independent variables need not be interval, nor normally
distributed, nor of equal variance within each group.
Model Development
1. Binary Logistic Regression
As Logistic Regression gives the formula to predict a logit
transformation of probability of presence of character of interest, so,
the model is,
+…….+
In logistic regression, the dependent variable is in fact a logit, which
is a log of odds,
1
So, the required probability is-
2. Multinomial Logistic Regression
Multinomial logit regression is used when the dependent variable in
question is nominal and for which there are more than two
categories.
Two additional assumptions:1. The multinomial logit model assumes that data are case
specific, that is, each independent variable has a single value for
each case.
2. There is no need for the independent variables to be
statistically independent from each other.
Model:In multinomial logistic regression there are more than two
categories for dependent variable, so the probability of belonging to
category ‘j’ is given by-

=j)=

	
∑
Example
Description:- Entering high school students make program choices
among general program, vocational program and academic
program. Their choice might be modeled using their writing score
and their social economic status.
Description of the data:- The data set contains variables on 200
students. The outcome variable is prog, program type. The predictor
variables are social economic status, ses, a three-level categorical
variable and writing score, write, a continuous variable.
Descriptive Statistics
Types of program

N

Mean

Std. Deviation

General

45

51.33

9.398

Academic

105

56.26

7.943

Vocation

50

46.76

9.319
Now, by using multinomial logit modelFitting-criteria

Likelihood ratio test

model
-2 log likelihood Chi-square
Intercept only

206.756

Sig.

6

.000

254.986

Final

df

48.230
Results
• The Pseudo R- square value for the model is 0.21.
• The likelihood ratio chi-square of 48.23 with a p-value < 0.0001
tells us that our model as a whole fits significantly better than an
empty model. And the parameters are corresponding to two
equations:=

+

1 +

2 +

	

=

+

1 +

2 +
Parameters
Prog. type

Wald

df

Sig.

Intercept 

1.689

1.896

1

.169

Write 

‐.058

7.320

1

.007

.944

[ses=1]

1.163

5.114

1

.024

3.199

[ses=2]

.630

1.833

1

.176

1.877

[ses=3]

General

B

Exp(B)

0

0

Intercept 

12.361

1

.000

Write 

‐.114

26.139

1

.000

.893

[ses=1]
Vocation 

4.236
.983

2.722

1

.099

2.672

[ses=2]

1.274

6.214

1

.013

3.575

[ses=3]

0

0
Interpretation
• A one-unit increase in the variable write is associated with a .058
decrease in the relative log odds of being in general program versus
academic program .
• A one-unit increase in the variable write is associated with a .1136
decrease in the relative log odds of being in vocation program
versus academic program.
• The relative log odds of being in general program versus in
academic program will increase by 1.163 if moving from the
highest level of ses (ses = 3) to the lowest level of ses (ses = 1).
References
1. http://www.schatz.sju.edu/multivar/guide/Logistic.pdf
2. http://www.ats.ucla.edu/stat/spss/dae/mlogit.htm

Más contenido relacionado

La actualidad más candente

Regression analysis
Regression analysisRegression analysis
Regression analysis
Ravi shankar
 
Regression analysis ppt
Regression analysis pptRegression analysis ppt
Regression analysis ppt
Elkana Rorio
 

La actualidad más candente (20)

Multinomial logisticregression basicrelationships
Multinomial logisticregression basicrelationshipsMultinomial logisticregression basicrelationships
Multinomial logisticregression basicrelationships
 
Logistic regression
Logistic regressionLogistic regression
Logistic regression
 
4.5. logistic regression
4.5. logistic regression4.5. logistic regression
4.5. logistic regression
 
Logistic regression
Logistic regressionLogistic regression
Logistic regression
 
Logistic regression
Logistic regressionLogistic regression
Logistic regression
 
Logistic regression with SPSS examples
Logistic regression with SPSS examplesLogistic regression with SPSS examples
Logistic regression with SPSS examples
 
Ordinal Logistic Regression
Ordinal Logistic RegressionOrdinal Logistic Regression
Ordinal Logistic Regression
 
Ordinal logistic regression
Ordinal logistic regression Ordinal logistic regression
Ordinal logistic regression
 
Cluster analysis
Cluster analysisCluster analysis
Cluster analysis
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
Simple linear regression
Simple linear regressionSimple linear regression
Simple linear regression
 
Regression
Regression Regression
Regression
 
Logistic regression (blyth 2006) (simplified)
Logistic regression (blyth 2006) (simplified)Logistic regression (blyth 2006) (simplified)
Logistic regression (blyth 2006) (simplified)
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
Multinomial Logistic Regression
Multinomial Logistic RegressionMultinomial Logistic Regression
Multinomial Logistic Regression
 
Regression analysis.
Regression analysis.Regression analysis.
Regression analysis.
 
Regression analysis ppt
Regression analysis pptRegression analysis ppt
Regression analysis ppt
 
Logistic Regression.pptx
Logistic Regression.pptxLogistic Regression.pptx
Logistic Regression.pptx
 
Multiple Regression and Logistic Regression
Multiple Regression and Logistic RegressionMultiple Regression and Logistic Regression
Multiple Regression and Logistic Regression
 
Basics of Regression analysis
 Basics of Regression analysis Basics of Regression analysis
Basics of Regression analysis
 

Destacado (9)

Curse of dimensionality
Curse of dimensionalityCurse of dimensionality
Curse of dimensionality
 
Hierarchical Clustering
Hierarchical ClusteringHierarchical Clustering
Hierarchical Clustering
 
Logistic Transformation Project - Aerospace
Logistic Transformation Project - AerospaceLogistic Transformation Project - Aerospace
Logistic Transformation Project - Aerospace
 
Logistic Regression
Logistic RegressionLogistic Regression
Logistic Regression
 
Ml ch10
Ml ch10Ml ch10
Ml ch10
 
Normal Distribution, Binomial Distribution, Poisson Distribution
Normal Distribution, Binomial Distribution, Poisson DistributionNormal Distribution, Binomial Distribution, Poisson Distribution
Normal Distribution, Binomial Distribution, Poisson Distribution
 
正則化つき線形モデル(「入門機械学習第6章」より)
正則化つき線形モデル(「入門機械学習第6章」より)正則化つき線形モデル(「入門機械学習第6章」より)
正則化つき線形モデル(「入門機械学習第6章」より)
 
Ml ch7
Ml ch7Ml ch7
Ml ch7
 
Binomial probability distributions ppt
Binomial probability distributions pptBinomial probability distributions ppt
Binomial probability distributions ppt
 

Similar a Logistic Regression Analysis

Applied statistics lecture_6
Applied statistics lecture_6Applied statistics lecture_6
Applied statistics lecture_6
Daria Bogdanova
 

Similar a Logistic Regression Analysis (20)

Logistic regression sage
Logistic regression sageLogistic regression sage
Logistic regression sage
 
Logistical Regression.pptx
Logistical Regression.pptxLogistical Regression.pptx
Logistical Regression.pptx
 
Logistic-regression.pptx
Logistic-regression.pptxLogistic-regression.pptx
Logistic-regression.pptx
 
RM MLM PPT March_22nd 2023.pptx
RM MLM PPT March_22nd 2023.pptxRM MLM PPT March_22nd 2023.pptx
RM MLM PPT March_22nd 2023.pptx
 
GLMs.pptx
GLMs.pptxGLMs.pptx
GLMs.pptx
 
Logit and Probit and Tobit model: Basic Introduction
Logit and Probit  and Tobit model: Basic IntroductionLogit and Probit  and Tobit model: Basic Introduction
Logit and Probit and Tobit model: Basic Introduction
 
Applied statistics lecture_6
Applied statistics lecture_6Applied statistics lecture_6
Applied statistics lecture_6
 
Introduction to machine learning
Introduction to machine learningIntroduction to machine learning
Introduction to machine learning
 
Asset Relationship - CH 8 - Regression | CMT Level 3 | Chartered Market Techn...
Asset Relationship - CH 8 - Regression | CMT Level 3 | Chartered Market Techn...Asset Relationship - CH 8 - Regression | CMT Level 3 | Chartered Market Techn...
Asset Relationship - CH 8 - Regression | CMT Level 3 | Chartered Market Techn...
 
2.2 Logit and Probit.pptx
2.2 Logit and Probit.pptx2.2 Logit and Probit.pptx
2.2 Logit and Probit.pptx
 
Module-2_ML.pdf
Module-2_ML.pdfModule-2_ML.pdf
Module-2_ML.pdf
 
Week_3_Lecture.pdf
Week_3_Lecture.pdfWeek_3_Lecture.pdf
Week_3_Lecture.pdf
 
what is Correlations
what is Correlationswhat is Correlations
what is Correlations
 
Regression analysis made easy
Regression analysis made easyRegression analysis made easy
Regression analysis made easy
 
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep LearningAnomaly detection: Core Techniques and Advances in Big Data and Deep Learning
Anomaly detection: Core Techniques and Advances in Big Data and Deep Learning
 
Anomaly detection Meetup Slides
Anomaly detection Meetup SlidesAnomaly detection Meetup Slides
Anomaly detection Meetup Slides
 
Econometrics chapter 8
Econometrics chapter 8Econometrics chapter 8
Econometrics chapter 8
 
Day 1_ Introduction.pptx
Day 1_ Introduction.pptxDay 1_ Introduction.pptx
Day 1_ Introduction.pptx
 
Generalized Linear Model and it Challenges
Generalized Linear Model and it ChallengesGeneralized Linear Model and it Challenges
Generalized Linear Model and it Challenges
 
Supervised Learning.pptx
Supervised Learning.pptxSupervised Learning.pptx
Supervised Learning.pptx
 

Más de COSTARCH Analytical Consulting (P) Ltd.

Más de COSTARCH Analytical Consulting (P) Ltd. (14)

Hospitality Analytics: Learn More About Your Customers
Hospitality Analytics: Learn More About Your CustomersHospitality Analytics: Learn More About Your Customers
Hospitality Analytics: Learn More About Your Customers
 
Dedh Ishqia: Social Sentiments
Dedh Ishqia: Social SentimentsDedh Ishqia: Social Sentiments
Dedh Ishqia: Social Sentiments
 
Karle Pyaar Karle: Social Sentiments
Karle Pyaar Karle: Social SentimentsKarle Pyaar Karle: Social Sentiments
Karle Pyaar Karle: Social Sentiments
 
Student's T-Test
Student's T-TestStudent's T-Test
Student's T-Test
 
Dyadic Data Analysis
Dyadic Data AnalysisDyadic Data Analysis
Dyadic Data Analysis
 
Sexiest of the Sexiest Job Profile: Sports Analyst
Sexiest of the Sexiest Job Profile: Sports AnalystSexiest of the Sexiest Job Profile: Sports Analyst
Sexiest of the Sexiest Job Profile: Sports Analyst
 
Structural Equation Modelling (SEM) Part 3
Structural Equation Modelling (SEM) Part 3Structural Equation Modelling (SEM) Part 3
Structural Equation Modelling (SEM) Part 3
 
Functional Data Analysis
Functional Data AnalysisFunctional Data Analysis
Functional Data Analysis
 
Within and Between Analysis (WABA).
Within and Between Analysis (WABA).Within and Between Analysis (WABA).
Within and Between Analysis (WABA).
 
Digital Marketing
Digital MarketingDigital Marketing
Digital Marketing
 
Structural Equation Modelling (SEM) Part 2
Structural Equation Modelling (SEM) Part 2Structural Equation Modelling (SEM) Part 2
Structural Equation Modelling (SEM) Part 2
 
Structural Equation Modelling (SEM) Part 1
Structural Equation Modelling (SEM) Part 1Structural Equation Modelling (SEM) Part 1
Structural Equation Modelling (SEM) Part 1
 
Data mining and its applications!
Data mining and its applications!Data mining and its applications!
Data mining and its applications!
 
Approaches to the_analysis_of_survey_data
Approaches to the_analysis_of_survey_dataApproaches to the_analysis_of_survey_data
Approaches to the_analysis_of_survey_data
 

Último

The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
heathfieldcps1
 

Último (20)

How to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POSHow to Manage Global Discount in Odoo 17 POS
How to Manage Global Discount in Odoo 17 POS
 
Food safety_Challenges food safety laboratories_.pdf
Food safety_Challenges food safety laboratories_.pdfFood safety_Challenges food safety laboratories_.pdf
Food safety_Challenges food safety laboratories_.pdf
 
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
80 ĐỀ THI THỬ TUYỂN SINH TIẾNG ANH VÀO 10 SỞ GD – ĐT THÀNH PHỐ HỒ CHÍ MINH NĂ...
 
Plant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptxPlant propagation: Sexual and Asexual propapagation.pptx
Plant propagation: Sexual and Asexual propapagation.pptx
 
Understanding Accommodations and Modifications
Understanding  Accommodations and ModificationsUnderstanding  Accommodations and Modifications
Understanding Accommodations and Modifications
 
Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024Mehran University Newsletter Vol-X, Issue-I, 2024
Mehran University Newsletter Vol-X, Issue-I, 2024
 
How to Add New Custom Addons Path in Odoo 17
How to Add New Custom Addons Path in Odoo 17How to Add New Custom Addons Path in Odoo 17
How to Add New Custom Addons Path in Odoo 17
 
The basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptxThe basics of sentences session 3pptx.pptx
The basics of sentences session 3pptx.pptx
 
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
Beyond_Borders_Understanding_Anime_and_Manga_Fandom_A_Comprehensive_Audience_...
 
FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024FSB Advising Checklist - Orientation 2024
FSB Advising Checklist - Orientation 2024
 
Micro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdfMicro-Scholarship, What it is, How can it help me.pdf
Micro-Scholarship, What it is, How can it help me.pdf
 
Interdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptxInterdisciplinary_Insights_Data_Collection_Methods.pptx
Interdisciplinary_Insights_Data_Collection_Methods.pptx
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Towards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptxTowards a code of practice for AI in AT.pptx
Towards a code of practice for AI in AT.pptx
 
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
TỔNG ÔN TẬP THI VÀO LỚP 10 MÔN TIẾNG ANH NĂM HỌC 2023 - 2024 CÓ ĐÁP ÁN (NGỮ Â...
 
ICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptxICT Role in 21st Century Education & its Challenges.pptx
ICT Role in 21st Century Education & its Challenges.pptx
 
On National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan FellowsOn National Teacher Day, meet the 2024-25 Kenan Fellows
On National Teacher Day, meet the 2024-25 Kenan Fellows
 
How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17How to Create and Manage Wizard in Odoo 17
How to Create and Manage Wizard in Odoo 17
 
Sociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning ExhibitSociology 101 Demonstration of Learning Exhibit
Sociology 101 Demonstration of Learning Exhibit
 
SOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning PresentationSOC 101 Demonstration of Learning Presentation
SOC 101 Demonstration of Learning Presentation
 

Logistic Regression Analysis