SlideShare a Scribd company logo
Quantitative Analysis for Managers Regression analysis application Instructor: Prof. MINE AYSEN DOYRAN Student: RecepMaz
Regression analysis Regression analysis includes any techniques for modeling and analyzing several variables, when the focus is on the relationship between a dependent variable and one or more independent variables.  Regression analysis helps one understand how the typical value of the dependent variable changes when any one of the independent variables is varied, while the other independent variables are held fixed.  Regression analysis estimates the conditional expectation of the dependent variable given the independent variables — that is, the average value of the dependent variable when the independent variables are held fixed.
Regression analysis The focus is on a quantile, or other location parameter of the conditional distribution of the dependent variable given the independent variables. In all cases, the estimation target is a function of the independent variables called the regression function.  In regression analysis, it is also of interest to characterize the variation of the dependent variable around the regression function, which can be described by a probability distribution.
Regression analysis Regression analysis is widely used for prediction and forecasting, where its use has substantial overlap with the field of machine learning.  Regression analysis is also used to understand which among the independent variables are related to the dependent variable, and to explore the forms of these relationships.
Regression analysis In restricted circumstances, regression analysis can be used to infer causal relationships between the independent and dependent variables. Simple linear regression models have only two variables Multiple regression models have more variables
Regression models involve the following variables The variable to be predicted is called the dependent variable, Y     Sometimes called the response variable The value of this variable depends on the value of the independent variable, X Sometimes called the explanatory or predictor variable, control variable A regression model relates Y to a function of X
Independent variable Independent variable Dependent variable =                          + Introduction regression models dependent variable, Y independent variable, X A regression model relates Y to a function of X
Testing the Model for Significance If the F-statistic is large, the significance level (P-value) will be low, indicating it is unlikely this would have occurred by chance If P value of F Statistic (Significance F) is smaller than 0.05 (5%), it means that your regression model is statistically significant.
Testing the Model for Significance The best model is a statistically significant model with a high r2 and few variables As more variables are added to the model, the r2-value usually increases For this reason, the adjusted r2 value is often used to determine the usefulness of an additional variable The adjusted r2 takes into account the number of independent variables in the model
Testing the Model for Significance  As the number of variables increases, the adjusted r2 gets smaller unless the increase due to the new variable is large enough to offset the change in k (number of independent variables)
Testing the Model for Significance   In general, if a new variable increases the adjusted r2, it should probably be included in the model In some cases, variables contain duplicate information When two independent variables are correlated, they are said to be collinear When more than two independent variables are correlated, multicollinearity exists When multicollinearity is present, hypothesis tests for the individual coefficients are not valid but the model may still be useful
Hypothesis statement , dependent variable and independent variable  Dependent variable……: Total number of white people between 18 to 64 years Independent variable…: Number of white people below poverty level between 18 to 64 years Hypothesis statement..: Hypothesis statement is that while population of white adult people (18 to 64 years) increases, number of white people between 18 to 64 years who are living below poverty level decrease by the years.
INTERPREATION OF REGRESSION OUTPUTS        R Square R square= 0.024884311=2.5% of variation in total number of white people between 18 to 64 years is explained by  white people below poverty level . This value is indicating weak fitness. I f R square is too high (0,8/0,9…) we will have multicollinearity problem. Which means our variables correlated each other. Fortunately, our R square value is not too high and it is also between 0 and 1.
INTERPREATION OF REGRESSION OUTPUTS       Adjusted R square Adjusted R Square= -0.0834618768434626=-8.3% this value is indicating weak fitness. If the number of observations is small we may obtain a higher value of r square. This can provide a very misleading indicator of goodness of fit. That is why many researchers use adjusted R square value instead. If the adjusted R square value higher than R square value we may face multicollinearity problem. Adjusted R Square=-8.3% < R square=2.5% . We don’t have multicollinearity problem.
INTERPREATION OF REGRESSION OUTPUTS Significance F The most important indicator to analysis regression outputs significance F. This value refers statical significant of regression model. This value provides evidence of existence of a linear relationship between our two variables. It also provides a measure of the total variation explained by the regression relative to the total unexplained variation. The higher the significance F, the better the overall fit of the regression line. Significance F values of 5% (0.05) or less are generally considered statistically significant. Like P values, lower the significant of the value, the more confident we can be of the overall significance of the regression equation.  Interpretation of Significance F is the low number means there is only 64% chance that our regression model fits the data purely by accident.  Significance F=0.643195730271619=64% > 5%  that means ,there is no significant relationship between our two variables.
INTERPREATION OF REGRESSION OUTPUTS P value P value=0.000253490931854696=0.025% .It indicates high statistical significance of our independent variables individually. It shows how confident we are in your analysis. For a P value to be statistically significant, it has to be;  P value=5%=0.05 P value=1%=0.01 P value=10%=0.10
Recep maz msb 701 quantitative analysis for managers
Recep maz msb 701 quantitative analysis for managers
Recep maz msb 701 quantitative analysis for managers
Recep maz msb 701 quantitative analysis for managers
Recep maz msb 701 quantitative analysis for managers
Recep maz msb 701 quantitative analysis for managers

More Related Content

What's hot

Multicollinearity
MulticollinearityMulticollinearity
Multicollinearity
Bernard Asia
 
Regression presentation
Regression presentationRegression presentation
Regression presentation
Allame Tabatabaei
 
Regression analysis made easy
Regression analysis made easyRegression analysis made easy
Regression analysis made easy
Weam Banjar
 
Multicolinearity
MulticolinearityMulticolinearity
Multicolinearity
Pawan Kawan
 
Multiple Regression and Logistic Regression
Multiple Regression and Logistic RegressionMultiple Regression and Logistic Regression
Multiple Regression and Logistic Regression
Kaushik Rajan
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
Teachers Mitraa
 
Data Science - Part IV - Regression Analysis & ANOVA
Data Science - Part IV - Regression Analysis & ANOVAData Science - Part IV - Regression Analysis & ANOVA
Data Science - Part IV - Regression Analysis & ANOVA
Derek Kane
 
Multiple linear regression
Multiple linear regressionMultiple linear regression
Multiple linear regression
Avjinder (Avi) Kaler
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
somimemon
 
Path analysis with manifest variables
Path analysis with manifest variablesPath analysis with manifest variables
Path analysis with manifest variables
Gabriel Contreras Serrano
 
Multicollinearity1
Multicollinearity1Multicollinearity1
Multicollinearity1
Muhammad Ali
 
Lesson 8 Linear Correlation And Regression
Lesson 8 Linear Correlation And RegressionLesson 8 Linear Correlation And Regression
Lesson 8 Linear Correlation And Regression
Sumit Prajapati
 
Correlation
CorrelationCorrelation
Correlation
Nabaz Nazim
 
Logistic regression
  Logistic regression  Logistic regression
Logistic regression
Learnbay Datascience
 
What is Simple Linear Regression and How Can an Enterprise Use this Technique...
What is Simple Linear Regression and How Can an Enterprise Use this Technique...What is Simple Linear Regression and How Can an Enterprise Use this Technique...
What is Simple Linear Regression and How Can an Enterprise Use this Technique...
Smarten Augmented Analytics
 
Introduction to regression analysis 2
Introduction to regression analysis 2Introduction to regression analysis 2
Introduction to regression analysis 2
Sibashis Chakraborty
 

What's hot (16)

Multicollinearity
MulticollinearityMulticollinearity
Multicollinearity
 
Regression presentation
Regression presentationRegression presentation
Regression presentation
 
Regression analysis made easy
Regression analysis made easyRegression analysis made easy
Regression analysis made easy
 
Multicolinearity
MulticolinearityMulticolinearity
Multicolinearity
 
Multiple Regression and Logistic Regression
Multiple Regression and Logistic RegressionMultiple Regression and Logistic Regression
Multiple Regression and Logistic Regression
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
Data Science - Part IV - Regression Analysis & ANOVA
Data Science - Part IV - Regression Analysis & ANOVAData Science - Part IV - Regression Analysis & ANOVA
Data Science - Part IV - Regression Analysis & ANOVA
 
Multiple linear regression
Multiple linear regressionMultiple linear regression
Multiple linear regression
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
 
Path analysis with manifest variables
Path analysis with manifest variablesPath analysis with manifest variables
Path analysis with manifest variables
 
Multicollinearity1
Multicollinearity1Multicollinearity1
Multicollinearity1
 
Lesson 8 Linear Correlation And Regression
Lesson 8 Linear Correlation And RegressionLesson 8 Linear Correlation And Regression
Lesson 8 Linear Correlation And Regression
 
Correlation
CorrelationCorrelation
Correlation
 
Logistic regression
  Logistic regression  Logistic regression
Logistic regression
 
What is Simple Linear Regression and How Can an Enterprise Use this Technique...
What is Simple Linear Regression and How Can an Enterprise Use this Technique...What is Simple Linear Regression and How Can an Enterprise Use this Technique...
What is Simple Linear Regression and How Can an Enterprise Use this Technique...
 
Introduction to regression analysis 2
Introduction to regression analysis 2Introduction to regression analysis 2
Introduction to regression analysis 2
 

Similar to Recep maz msb 701 quantitative analysis for managers

ders 8 Quantile-Regression.ppt
ders 8 Quantile-Regression.pptders 8 Quantile-Regression.ppt
ders 8 Quantile-Regression.ppt
Ergin Akalpler
 
A Topic on REGRESSION Analysis conducted pptx
A Topic on REGRESSION Analysis conducted pptxA Topic on REGRESSION Analysis conducted pptx
A Topic on REGRESSION Analysis conducted pptx
zeusrex4815162342
 
Introduction-to-Linear-Regression.pptx
Introduction-to-Linear-Regression.pptxIntroduction-to-Linear-Regression.pptx
Introduction-to-Linear-Regression.pptx
engdlshadfm
 
Multiple Linear Regression
Multiple Linear Regression Multiple Linear Regression
Multiple Linear Regression
Vamshi krishna Guptha
 
Research Methodology Module-06
Research Methodology Module-06Research Methodology Module-06
Research Methodology Module-06
Kishor Ade
 
STATISTICAL REGRESSION MODELS
STATISTICAL REGRESSION MODELSSTATISTICAL REGRESSION MODELS
STATISTICAL REGRESSION MODELS
Aneesa K Ayoob
 
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdfDr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
Sumathi Arumugam
 
Quantitative Methods - Level II - CFA Program
Quantitative Methods - Level II - CFA ProgramQuantitative Methods - Level II - CFA Program
Quantitative Methods - Level II - CFA Program
Mohamed Farouk, CFA, CFTe I
 
Ders 2 ols .ppt
Ders 2 ols .pptDers 2 ols .ppt
Ders 2 ols .ppt
Ergin Akalpler
 
CH3.pdf
CH3.pdfCH3.pdf
Applications of regression analysis - Measurement of validity of relationship
Applications of regression analysis - Measurement of validity of relationshipApplications of regression analysis - Measurement of validity of relationship
Applications of regression analysis - Measurement of validity of relationship
Rithish Kumar
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
Salim Azad
 
Simple Regression.pptx
Simple Regression.pptxSimple Regression.pptx
Simple Regression.pptx
Victoria Bozhenko
 
How to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdfHow to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdf
phdassistance101
 
Measure of Association
Measure of AssociationMeasure of Association
Measure of Association
Kalahandi University
 
PPT Correlation.pptx
PPT Correlation.pptxPPT Correlation.pptx
PPT Correlation.pptx
MahamZeeshan5
 
regression.ppt
regression.pptregression.ppt
regression.ppt
syedmirsyed
 
Multiple regression by anagha singh
Multiple regression by anagha singhMultiple regression by anagha singh
Multiple regression by anagha singh
AnaghaSingh
 
My regression lecture mk3 (uploaded to web ct)
My regression lecture   mk3 (uploaded to web ct)My regression lecture   mk3 (uploaded to web ct)
My regression lecture mk3 (uploaded to web ct)
chrisstiff
 
Statistical analysis in SPSS_
Statistical analysis in SPSS_ Statistical analysis in SPSS_
Statistical analysis in SPSS_
Dr. Anugamini Priya
 

Similar to Recep maz msb 701 quantitative analysis for managers (20)

ders 8 Quantile-Regression.ppt
ders 8 Quantile-Regression.pptders 8 Quantile-Regression.ppt
ders 8 Quantile-Regression.ppt
 
A Topic on REGRESSION Analysis conducted pptx
A Topic on REGRESSION Analysis conducted pptxA Topic on REGRESSION Analysis conducted pptx
A Topic on REGRESSION Analysis conducted pptx
 
Introduction-to-Linear-Regression.pptx
Introduction-to-Linear-Regression.pptxIntroduction-to-Linear-Regression.pptx
Introduction-to-Linear-Regression.pptx
 
Multiple Linear Regression
Multiple Linear Regression Multiple Linear Regression
Multiple Linear Regression
 
Research Methodology Module-06
Research Methodology Module-06Research Methodology Module-06
Research Methodology Module-06
 
STATISTICAL REGRESSION MODELS
STATISTICAL REGRESSION MODELSSTATISTICAL REGRESSION MODELS
STATISTICAL REGRESSION MODELS
 
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdfDr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
Dr. A Sumathi - LINEARITY CONCEPT OF SIGNIFICANCE.pdf
 
Quantitative Methods - Level II - CFA Program
Quantitative Methods - Level II - CFA ProgramQuantitative Methods - Level II - CFA Program
Quantitative Methods - Level II - CFA Program
 
Ders 2 ols .ppt
Ders 2 ols .pptDers 2 ols .ppt
Ders 2 ols .ppt
 
CH3.pdf
CH3.pdfCH3.pdf
CH3.pdf
 
Applications of regression analysis - Measurement of validity of relationship
Applications of regression analysis - Measurement of validity of relationshipApplications of regression analysis - Measurement of validity of relationship
Applications of regression analysis - Measurement of validity of relationship
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
 
Simple Regression.pptx
Simple Regression.pptxSimple Regression.pptx
Simple Regression.pptx
 
How to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdfHow to Interpret your regression output in management PhD research .pdf
How to Interpret your regression output in management PhD research .pdf
 
Measure of Association
Measure of AssociationMeasure of Association
Measure of Association
 
PPT Correlation.pptx
PPT Correlation.pptxPPT Correlation.pptx
PPT Correlation.pptx
 
regression.ppt
regression.pptregression.ppt
regression.ppt
 
Multiple regression by anagha singh
Multiple regression by anagha singhMultiple regression by anagha singh
Multiple regression by anagha singh
 
My regression lecture mk3 (uploaded to web ct)
My regression lecture   mk3 (uploaded to web ct)My regression lecture   mk3 (uploaded to web ct)
My regression lecture mk3 (uploaded to web ct)
 
Statistical analysis in SPSS_
Statistical analysis in SPSS_ Statistical analysis in SPSS_
Statistical analysis in SPSS_
 

Recently uploaded

Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
Tatiana Kojar
 
A Comprehensive Guide to DeFi Development Services in 2024
A Comprehensive Guide to DeFi Development Services in 2024A Comprehensive Guide to DeFi Development Services in 2024
A Comprehensive Guide to DeFi Development Services in 2024
Intelisync
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
Zilliz
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Safe Software
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
DanBrown980551
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Precisely
 
Nordic Marketo Engage User Group_June 13_ 2024.pptx
Nordic Marketo Engage User Group_June 13_ 2024.pptxNordic Marketo Engage User Group_June 13_ 2024.pptx
Nordic Marketo Engage User Group_June 13_ 2024.pptx
MichaelKnudsen27
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
Zilliz
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
Javier Junquera
 
System Design Case Study: Building a Scalable E-Commerce Platform - Hiike
System Design Case Study: Building a Scalable E-Commerce Platform - HiikeSystem Design Case Study: Building a Scalable E-Commerce Platform - Hiike
System Design Case Study: Building a Scalable E-Commerce Platform - Hiike
Hiike
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
Zilliz
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
Jason Packer
 
Building Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and MilvusBuilding Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and Milvus
Zilliz
 
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying AheadDigital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Wask
 
Taking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdfTaking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdf
ssuserfac0301
 
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-EfficiencyFreshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
ScyllaDB
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
saastr
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
Alex Pruden
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
Antonios Katsarakis
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
panagenda
 

Recently uploaded (20)

Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
Skybuffer AI: Advanced Conversational and Generative AI Solution on SAP Busin...
 
A Comprehensive Guide to DeFi Development Services in 2024
A Comprehensive Guide to DeFi Development Services in 2024A Comprehensive Guide to DeFi Development Services in 2024
A Comprehensive Guide to DeFi Development Services in 2024
 
Fueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte WebinarFueling AI with Great Data with Airbyte Webinar
Fueling AI with Great Data with Airbyte Webinar
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
 
Nordic Marketo Engage User Group_June 13_ 2024.pptx
Nordic Marketo Engage User Group_June 13_ 2024.pptxNordic Marketo Engage User Group_June 13_ 2024.pptx
Nordic Marketo Engage User Group_June 13_ 2024.pptx
 
Generating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and MilvusGenerating privacy-protected synthetic data using Secludy and Milvus
Generating privacy-protected synthetic data using Secludy and Milvus
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
 
System Design Case Study: Building a Scalable E-Commerce Platform - Hiike
System Design Case Study: Building a Scalable E-Commerce Platform - HiikeSystem Design Case Study: Building a Scalable E-Commerce Platform - Hiike
System Design Case Study: Building a Scalable E-Commerce Platform - Hiike
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
 
Building Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and MilvusBuilding Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and Milvus
 
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying AheadDigital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying Ahead
 
Taking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdfTaking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdf
 
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-EfficiencyFreshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
Freshworks Rethinks NoSQL for Rapid Scaling & Cost-Efficiency
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
 

Recep maz msb 701 quantitative analysis for managers

  • 1. Quantitative Analysis for Managers Regression analysis application Instructor: Prof. MINE AYSEN DOYRAN Student: RecepMaz
  • 2. Regression analysis Regression analysis includes any techniques for modeling and analyzing several variables, when the focus is on the relationship between a dependent variable and one or more independent variables. Regression analysis helps one understand how the typical value of the dependent variable changes when any one of the independent variables is varied, while the other independent variables are held fixed. Regression analysis estimates the conditional expectation of the dependent variable given the independent variables — that is, the average value of the dependent variable when the independent variables are held fixed.
  • 3. Regression analysis The focus is on a quantile, or other location parameter of the conditional distribution of the dependent variable given the independent variables. In all cases, the estimation target is a function of the independent variables called the regression function. In regression analysis, it is also of interest to characterize the variation of the dependent variable around the regression function, which can be described by a probability distribution.
  • 4. Regression analysis Regression analysis is widely used for prediction and forecasting, where its use has substantial overlap with the field of machine learning. Regression analysis is also used to understand which among the independent variables are related to the dependent variable, and to explore the forms of these relationships.
  • 5. Regression analysis In restricted circumstances, regression analysis can be used to infer causal relationships between the independent and dependent variables. Simple linear regression models have only two variables Multiple regression models have more variables
  • 6. Regression models involve the following variables The variable to be predicted is called the dependent variable, Y Sometimes called the response variable The value of this variable depends on the value of the independent variable, X Sometimes called the explanatory or predictor variable, control variable A regression model relates Y to a function of X
  • 7. Independent variable Independent variable Dependent variable = + Introduction regression models dependent variable, Y independent variable, X A regression model relates Y to a function of X
  • 8. Testing the Model for Significance If the F-statistic is large, the significance level (P-value) will be low, indicating it is unlikely this would have occurred by chance If P value of F Statistic (Significance F) is smaller than 0.05 (5%), it means that your regression model is statistically significant.
  • 9. Testing the Model for Significance The best model is a statistically significant model with a high r2 and few variables As more variables are added to the model, the r2-value usually increases For this reason, the adjusted r2 value is often used to determine the usefulness of an additional variable The adjusted r2 takes into account the number of independent variables in the model
  • 10. Testing the Model for Significance  As the number of variables increases, the adjusted r2 gets smaller unless the increase due to the new variable is large enough to offset the change in k (number of independent variables)
  • 11. Testing the Model for Significance   In general, if a new variable increases the adjusted r2, it should probably be included in the model In some cases, variables contain duplicate information When two independent variables are correlated, they are said to be collinear When more than two independent variables are correlated, multicollinearity exists When multicollinearity is present, hypothesis tests for the individual coefficients are not valid but the model may still be useful
  • 12. Hypothesis statement , dependent variable and independent variable Dependent variable……: Total number of white people between 18 to 64 years Independent variable…: Number of white people below poverty level between 18 to 64 years Hypothesis statement..: Hypothesis statement is that while population of white adult people (18 to 64 years) increases, number of white people between 18 to 64 years who are living below poverty level decrease by the years.
  • 13. INTERPREATION OF REGRESSION OUTPUTS R Square R square= 0.024884311=2.5% of variation in total number of white people between 18 to 64 years is explained by white people below poverty level . This value is indicating weak fitness. I f R square is too high (0,8/0,9…) we will have multicollinearity problem. Which means our variables correlated each other. Fortunately, our R square value is not too high and it is also between 0 and 1.
  • 14. INTERPREATION OF REGRESSION OUTPUTS Adjusted R square Adjusted R Square= -0.0834618768434626=-8.3% this value is indicating weak fitness. If the number of observations is small we may obtain a higher value of r square. This can provide a very misleading indicator of goodness of fit. That is why many researchers use adjusted R square value instead. If the adjusted R square value higher than R square value we may face multicollinearity problem. Adjusted R Square=-8.3% < R square=2.5% . We don’t have multicollinearity problem.
  • 15. INTERPREATION OF REGRESSION OUTPUTS Significance F The most important indicator to analysis regression outputs significance F. This value refers statical significant of regression model. This value provides evidence of existence of a linear relationship between our two variables. It also provides a measure of the total variation explained by the regression relative to the total unexplained variation. The higher the significance F, the better the overall fit of the regression line. Significance F values of 5% (0.05) or less are generally considered statistically significant. Like P values, lower the significant of the value, the more confident we can be of the overall significance of the regression equation. Interpretation of Significance F is the low number means there is only 64% chance that our regression model fits the data purely by accident. Significance F=0.643195730271619=64% > 5% that means ,there is no significant relationship between our two variables.
  • 16. INTERPREATION OF REGRESSION OUTPUTS P value P value=0.000253490931854696=0.025% .It indicates high statistical significance of our independent variables individually. It shows how confident we are in your analysis. For a P value to be statistically significant, it has to be; P value=5%=0.05 P value=1%=0.01 P value=10%=0.10