SlideShare uma empresa Scribd logo
1 de 62
What is econometrics? Simple, non-technical introduction on Linear Regression/OLS as a technique
About this document… ,[object Object],[object Object]
About this document ,[object Object],[object Object],[object Object]
About this document ,[object Object],[object Object],[object Object]
What is econometrics?
“Econometrics?  Isn’t that difficult?”
It’s full of formulas… and it could be complex
But…
[object Object]
This is an attempt to present econometrics as simple as possible…
What’s required to learn a little bit of econometrics
… lots of curiosity
… a little bit of patience
… a little bit of brains
… confidence in dealing with numbers
… a belief that numbers can tell stories
Let’s start with a little bit of definition What is econometrics?
What is econometrics? ,[object Object],[object Object],[object Object],[object Object]
What is econometrics? ,[object Object],[object Object],[object Object],* … but not necessarily moot and unimportant For those interested about the differences, see future tutorials…
What is econometrics? ,[object Object],[object Object],[object Object],[object Object],[object Object]
What is econometrics? ,[object Object],[object Object]
What is econometrics? ,[object Object],[object Object],We know the values of y and x Econometrics helps us identify the values of m, b and u
If we were interested in awareness and GRPs…  ,[object Object],awareness = m  •  GRPs + b + u NB.  This is simplifying the relationship between GRPs and awareness drastically. The relationship is far more complex, of course – but let’s assume that this equation is true for now. What econometrics does is “estimate” the values of “m”, “b” and “u” based on the available data on Awareness and GRPs, such that we have an equation that relates Awareness and GRPs. Once m, b and u are identified and estimated, we can then use the equation to explain the movements in awareness with respect to GRPs – and predict how awareness is going to move in the future given different levels of GRPs
There are many econometric techniques…  ,[object Object]
What is  linear regression ? ,[object Object]
Introduction to linear regression ,[object Object],[object Object],[object Object],[object Object]
If we plotted the data, we would indeed see an upward trend…  Time t, in months Product users ‘000 In the 1 st  month, we see that there are about 5’000 product users By the 30 th  month, the number of users have increased to about 40’000 users
The question ,[object Object]
To answer this question…  …  we need to understand first the  past relationship  between the two variables –  time  and  numbers of users . We will then use this understanding of the past to predict what’s going to happen in the next 12 months The Past The Future
What bridges the gap between the past  and the future…  Once we have identified the equation or the model, we will have a better grasp of (1)  the past trends  and (2)  the potentials of the future Linear regression comes into the picture by bridging that gap between the past and the future The Past The Future Linear regression equation
With that in mind, let’s look at the chart again
From mere observation, we see an uptrend in users across time… Time t, in months Product users ‘000
How do we quantify* that uptrend? Time t, in months Product users ‘000 * Remember: In order to project into the future, we need to create a model that quantifies the relationship between time and number of users
There are an infinite number of lines that we could use to characterize the uptrend…  Time t, in months Product users ‘000 Different people have different views – even when viewing the same set of data: I can argue that the best line is the grey line, another can argue that the blue line is best, and still another can argue that the best line is the pink line
Linear regression insists that there is one (and only one) line that would best characterize the trend and the relationship between the two variables
Linear regression also insists that this equation be of the following form: ,[object Object],[object Object],[object Object],[object Object],[object Object]
This one line that best describes the relationship between the two variables is derived through OLS ,[object Object],[object Object],Huh
Let’s go back a few charts…  What OLS does is it  objectively  goes through these infinite number of lines – and finds the best-fitting line such that the distance between the line and the original data-points are at a minimum OLS does this iteratively – that is, through  trial-and-error  – until it arrives at the values of m, b, and u that define a line with minimum distance between it and the original data.  (Think of OLS as a search-algorithm that tries different m-b-u combinations to achieve the best-fitting line.) Remember: Given any data set, there are an infinite number of lines that can be used to describe the trend.  One can choose the “pink” to be the best and rationalize it; another person can argue that the yellow line is the best, and still another third person can defend the blue line. We can argue indefinitely about the merits of each of these infinite number of lines.
Going back to the data – the best fitting regression line, after applying OLS is…  Time t, in months Product users ‘000
By applying OLS, the equation  «y = 1.416x + 3.6329»  is found to be the best-fitting regression line ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Now comes the interesting part…  ,[object Object]
The story behind  «y = 1.416x + 3.6329» ,[object Object],[object Object],[object Object],[object Object],[object Object]
OK, we have an equation – how do we know it’s the correct equation? ,[object Object],[object Object],[object Object],[object Object]
Let’s eyeball the model: There  seem  to be no data-points that are significantly away from the line…  Time t, in months Product users ‘000
Eyeballing the data, however, brings back  subjective interpretations Time t, in months Product users ‘000 One can argue that point at month 11 is significantly away from the line – and so is data for month 24… We therefore need a more accurate, more objective measurement of “fit”
How else do we know if the equation is valid or not? ,[object Object],[object Object],[object Object],[object Object],[object Object],The r-squared is only one of few that measure goodness-of-fit (GIF).  Other measures include adjusted R-squared, AIC/Akaike Information Criteria, RMSE/root-mean squared error, and GLM-ANOVA.  These will not be discussed here.
Will we ever have a r-squared of 1.00? ,[object Object],[object Object],[object Object],[object Object]
But there are deviations between the line and the data! ,[object Object],[object Object]
Deviations are not entirely bad…  ,[object Object],[object Object],[object Object]
Let’s go back to the original question:
What have we done so far…? ,[object Object]
What have we done so far…? ,[object Object]
Let’s now project what’s going to happen in the next 12 months…  Time t, in months Product users ‘000 At the end of the next 12 months [by month 42], we can expect to have 543’000 users – if all things remain equal
Since we don’t really know what’s going to happen in the future – and we don’t have a perfect model…  We can report ranges instead of just a line… The dashed lines indicate the range of expectations for the next 12 months We can expect that there will be about 470’000 to 616’000 users by month 42
Are you still there?
Take a sigh of relief…
Linear regression through OLS is just amongst of the many techniques in econometrics… ,[object Object],[object Object],[object Object],[object Object]
Books on econometrics that we’ve found useful…  ,[object Object],[object Object],[object Object]
Other books that might be helpful ,[object Object],[object Object]
Credits for the images use ,[object Object],[object Object],[object Object]
This presentation ,[object Object],[object Object]
 

Mais conteúdo relacionado

Mais procurados

Regression Analysis
Regression AnalysisRegression Analysis
Regression AnalysisASAD ALI
 
Time series analysis
Time series analysisTime series analysis
Time series analysisFaltu Focat
 
Multicolinearity
MulticolinearityMulticolinearity
MulticolinearityPawan Kawan
 
Chapter 7 sampling distributions
Chapter 7 sampling distributionsChapter 7 sampling distributions
Chapter 7 sampling distributionsmeharahutsham
 
Autocorrelation
AutocorrelationAutocorrelation
AutocorrelationAkram Ali
 
Correlation in statistics
Correlation in statisticsCorrelation in statistics
Correlation in statisticsNadeem Uddin
 
Multiple regression presentation
Multiple regression presentationMultiple regression presentation
Multiple regression presentationCarlo Magno
 
Markowitz Portfolio Selection
Markowitz Portfolio SelectionMarkowitz Portfolio Selection
Markowitz Portfolio Selectionmerzak emerzak
 
Lec 5 - Normality Testing.pptx
Lec 5 - Normality Testing.pptxLec 5 - Normality Testing.pptx
Lec 5 - Normality Testing.pptxFarah Amir
 
Chapter 07 - Autocorrelation.pptx
Chapter 07 - Autocorrelation.pptxChapter 07 - Autocorrelation.pptx
Chapter 07 - Autocorrelation.pptxFarah Amir
 
Basic econometrics lectues_1
Basic econometrics lectues_1Basic econometrics lectues_1
Basic econometrics lectues_1Nivedita Sharma
 
Heteroskedasticity
HeteroskedasticityHeteroskedasticity
Heteroskedasticityhalimuth
 

Mais procurados (20)

Time series.ppt
Time series.pptTime series.ppt
Time series.ppt
 
Regression Analysis
Regression AnalysisRegression Analysis
Regression Analysis
 
Regression analysis
Regression analysisRegression analysis
Regression analysis
 
Time series analysis
Time series analysisTime series analysis
Time series analysis
 
Multicolinearity
MulticolinearityMulticolinearity
Multicolinearity
 
Chapter 14
Chapter 14 Chapter 14
Chapter 14
 
Chapter 7 sampling distributions
Chapter 7 sampling distributionsChapter 7 sampling distributions
Chapter 7 sampling distributions
 
Autocorrelation
AutocorrelationAutocorrelation
Autocorrelation
 
Correlation in statistics
Correlation in statisticsCorrelation in statistics
Correlation in statistics
 
Multiple regression presentation
Multiple regression presentationMultiple regression presentation
Multiple regression presentation
 
Unit Root Test
Unit Root Test Unit Root Test
Unit Root Test
 
Markowitz Portfolio Selection
Markowitz Portfolio SelectionMarkowitz Portfolio Selection
Markowitz Portfolio Selection
 
time series analysis
time series analysistime series analysis
time series analysis
 
Lec 5 - Normality Testing.pptx
Lec 5 - Normality Testing.pptxLec 5 - Normality Testing.pptx
Lec 5 - Normality Testing.pptx
 
What is statistics
What is statisticsWhat is statistics
What is statistics
 
Chapter 07 - Autocorrelation.pptx
Chapter 07 - Autocorrelation.pptxChapter 07 - Autocorrelation.pptx
Chapter 07 - Autocorrelation.pptx
 
MModule 1 ppt.pptx
MModule 1 ppt.pptxMModule 1 ppt.pptx
MModule 1 ppt.pptx
 
Basic econometrics lectues_1
Basic econometrics lectues_1Basic econometrics lectues_1
Basic econometrics lectues_1
 
Heteroskedasticity
HeteroskedasticityHeteroskedasticity
Heteroskedasticity
 
Autocorrelation
AutocorrelationAutocorrelation
Autocorrelation
 

Destaque

Some Advanced Remarketing Ideas
Some Advanced Remarketing IdeasSome Advanced Remarketing Ideas
Some Advanced Remarketing IdeasChris Thomas
 
Wireframes - a brief overview
Wireframes - a brief overviewWireframes - a brief overview
Wireframes - a brief overviewJenni Leder
 
Understand A/B Testing in 9 use cases & 7 mistakes
Understand A/B Testing in 9 use cases & 7 mistakesUnderstand A/B Testing in 9 use cases & 7 mistakes
Understand A/B Testing in 9 use cases & 7 mistakesTheFamily
 
How to Plug a Leaky Sales Funnel With Facebook Retargeting
How to Plug a Leaky Sales Funnel With Facebook RetargetingHow to Plug a Leaky Sales Funnel With Facebook Retargeting
How to Plug a Leaky Sales Funnel With Facebook RetargetingDigital Marketer
 
Optimize Your Sales & Marketing Funnel
Optimize Your Sales & Marketing FunnelOptimize Your Sales & Marketing Funnel
Optimize Your Sales & Marketing FunnelHubSpot
 
Google Analytics Fundamentals: Set Up and Basics for Measurement
Google Analytics Fundamentals: Set Up and Basics for MeasurementGoogle Analytics Fundamentals: Set Up and Basics for Measurement
Google Analytics Fundamentals: Set Up and Basics for MeasurementOrbit Media Studios
 
Using Your Growth Model to Drive Smarter High Tempo Testing
Using Your Growth Model to Drive Smarter High Tempo TestingUsing Your Growth Model to Drive Smarter High Tempo Testing
Using Your Growth Model to Drive Smarter High Tempo TestingSean Ellis
 
Lean Community Building: Getting the Most Bang for Your Time & Money
Lean Community Building: Getting the Most Bang for  Your Time & MoneyLean Community Building: Getting the Most Bang for  Your Time & Money
Lean Community Building: Getting the Most Bang for Your Time & MoneyJennifer Lopez
 
10 Mobile Marketing Campaigns That Went Viral and Made Millions
10 Mobile Marketing Campaigns That Went Viral and Made Millions10 Mobile Marketing Campaigns That Went Viral and Made Millions
10 Mobile Marketing Campaigns That Went Viral and Made MillionsMark Fidelman
 
How Top Brands Use Referral Programs to Drive Customer Acquisition
How Top Brands Use Referral Programs to Drive Customer AcquisitionHow Top Brands Use Referral Programs to Drive Customer Acquisition
How Top Brands Use Referral Programs to Drive Customer AcquisitionKissmetrics on SlideShare
 
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...GeekWire
 
10 Ways You're Using AdWords Wrong and How to Correct Those Practices
10 Ways You're Using AdWords Wrong and How to Correct Those Practices 10 Ways You're Using AdWords Wrong and How to Correct Those Practices
10 Ways You're Using AdWords Wrong and How to Correct Those Practices Kissmetrics on SlideShare
 
No excuses user research
No excuses user researchNo excuses user research
No excuses user researchLily Dart
 
User experience doesn't happen on a screen: It happens in the mind.
User experience doesn't happen on a screen: It happens in the mind.User experience doesn't happen on a screen: It happens in the mind.
User experience doesn't happen on a screen: It happens in the mind.John Whalen
 
Stop Leaving Money on the Table! Optimizing your Site for Users and Revenue
Stop Leaving Money on the Table! Optimizing your Site for Users and RevenueStop Leaving Money on the Table! Optimizing your Site for Users and Revenue
Stop Leaving Money on the Table! Optimizing your Site for Users and RevenueJosh Patrice
 
SQL Tutorial for Marketers
SQL Tutorial for MarketersSQL Tutorial for Marketers
SQL Tutorial for MarketersJustin Mares
 
How to: Viral Marketing + Brand Storytelling
How to: Viral Marketing + Brand Storytelling How to: Viral Marketing + Brand Storytelling
How to: Viral Marketing + Brand Storytelling Elle Shelley
 
The Beginners Guide to Startup PR #startuppr
The Beginners Guide to Startup PR #startupprThe Beginners Guide to Startup PR #startuppr
The Beginners Guide to Startup PR #startupprOnboardly
 

Destaque (20)

Some Advanced Remarketing Ideas
Some Advanced Remarketing IdeasSome Advanced Remarketing Ideas
Some Advanced Remarketing Ideas
 
Wireframes - a brief overview
Wireframes - a brief overviewWireframes - a brief overview
Wireframes - a brief overview
 
Understand A/B Testing in 9 use cases & 7 mistakes
Understand A/B Testing in 9 use cases & 7 mistakesUnderstand A/B Testing in 9 use cases & 7 mistakes
Understand A/B Testing in 9 use cases & 7 mistakes
 
How to Plug a Leaky Sales Funnel With Facebook Retargeting
How to Plug a Leaky Sales Funnel With Facebook RetargetingHow to Plug a Leaky Sales Funnel With Facebook Retargeting
How to Plug a Leaky Sales Funnel With Facebook Retargeting
 
Optimize Your Sales & Marketing Funnel
Optimize Your Sales & Marketing FunnelOptimize Your Sales & Marketing Funnel
Optimize Your Sales & Marketing Funnel
 
Intro to Facebook Ads
Intro to Facebook AdsIntro to Facebook Ads
Intro to Facebook Ads
 
Google Analytics Fundamentals: Set Up and Basics for Measurement
Google Analytics Fundamentals: Set Up and Basics for MeasurementGoogle Analytics Fundamentals: Set Up and Basics for Measurement
Google Analytics Fundamentals: Set Up and Basics for Measurement
 
Using Your Growth Model to Drive Smarter High Tempo Testing
Using Your Growth Model to Drive Smarter High Tempo TestingUsing Your Growth Model to Drive Smarter High Tempo Testing
Using Your Growth Model to Drive Smarter High Tempo Testing
 
Lean Community Building: Getting the Most Bang for Your Time & Money
Lean Community Building: Getting the Most Bang for  Your Time & MoneyLean Community Building: Getting the Most Bang for  Your Time & Money
Lean Community Building: Getting the Most Bang for Your Time & Money
 
10 Mobile Marketing Campaigns That Went Viral and Made Millions
10 Mobile Marketing Campaigns That Went Viral and Made Millions10 Mobile Marketing Campaigns That Went Viral and Made Millions
10 Mobile Marketing Campaigns That Went Viral and Made Millions
 
How Top Brands Use Referral Programs to Drive Customer Acquisition
How Top Brands Use Referral Programs to Drive Customer AcquisitionHow Top Brands Use Referral Programs to Drive Customer Acquisition
How Top Brands Use Referral Programs to Drive Customer Acquisition
 
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...
Brenda Spoonemore - A biz dev playbook for startups: Why, when and how to do ...
 
10 Ways You're Using AdWords Wrong and How to Correct Those Practices
10 Ways You're Using AdWords Wrong and How to Correct Those Practices 10 Ways You're Using AdWords Wrong and How to Correct Those Practices
10 Ways You're Using AdWords Wrong and How to Correct Those Practices
 
No excuses user research
No excuses user researchNo excuses user research
No excuses user research
 
User experience doesn't happen on a screen: It happens in the mind.
User experience doesn't happen on a screen: It happens in the mind.User experience doesn't happen on a screen: It happens in the mind.
User experience doesn't happen on a screen: It happens in the mind.
 
Stop Leaving Money on the Table! Optimizing your Site for Users and Revenue
Stop Leaving Money on the Table! Optimizing your Site for Users and RevenueStop Leaving Money on the Table! Optimizing your Site for Users and Revenue
Stop Leaving Money on the Table! Optimizing your Site for Users and Revenue
 
SQL Tutorial for Marketers
SQL Tutorial for MarketersSQL Tutorial for Marketers
SQL Tutorial for Marketers
 
HTML & CSS Masterclass
HTML & CSS MasterclassHTML & CSS Masterclass
HTML & CSS Masterclass
 
How to: Viral Marketing + Brand Storytelling
How to: Viral Marketing + Brand Storytelling How to: Viral Marketing + Brand Storytelling
How to: Viral Marketing + Brand Storytelling
 
The Beginners Guide to Startup PR #startuppr
The Beginners Guide to Startup PR #startupprThe Beginners Guide to Startup PR #startuppr
The Beginners Guide to Startup PR #startuppr
 

Semelhante a Simple (and Simplistic) Introduction to Econometrics and Linear Regression

Statistics for Managers notes.pdf
Statistics for Managers notes.pdfStatistics for Managers notes.pdf
Statistics for Managers notes.pdfVelujv
 
Real Estate Data Set
Real Estate Data SetReal Estate Data Set
Real Estate Data SetSarah Jimenez
 
Pentaho Meeting 2008 - Statistics & BI
Pentaho Meeting 2008 - Statistics & BIPentaho Meeting 2008 - Statistics & BI
Pentaho Meeting 2008 - Statistics & BIStudio Synthesis
 
The future is uncertain. Some events do have a very small probabil.docx
The future is uncertain. Some events do have a very small probabil.docxThe future is uncertain. Some events do have a very small probabil.docx
The future is uncertain. Some events do have a very small probabil.docxoreo10
 
Shopping Centers, Big Data & I.O.T
Shopping Centers, Big Data & I.O.TShopping Centers, Big Data & I.O.T
Shopping Centers, Big Data & I.O.TOscar Cuenca Roca
 
KIT-601 Lecture Notes-UNIT-2.pdf
KIT-601 Lecture Notes-UNIT-2.pdfKIT-601 Lecture Notes-UNIT-2.pdf
KIT-601 Lecture Notes-UNIT-2.pdfDr. Radhey Shyam
 
Essentials of machine learning algorithms
Essentials of machine learning algorithmsEssentials of machine learning algorithms
Essentials of machine learning algorithmsArunangsu Sahu
 
Advanced Econometrics L3-4.pptx
Advanced Econometrics L3-4.pptxAdvanced Econometrics L3-4.pptx
Advanced Econometrics L3-4.pptxakashayosha
 
The Controversy Between Theory To Measurement And...
The Controversy Between Theory To Measurement And...The Controversy Between Theory To Measurement And...
The Controversy Between Theory To Measurement And...Tasha Holloway
 
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docxhyacinthshackley2629
 
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docxnovabroom
 
Relationship between Linear Algebra and StatisticsLinear algebra.docx
Relationship between Linear Algebra and StatisticsLinear algebra.docxRelationship between Linear Algebra and StatisticsLinear algebra.docx
Relationship between Linear Algebra and StatisticsLinear algebra.docxdebishakespeare
 
Workbook Project
Workbook ProjectWorkbook Project
Workbook ProjectBrian Ryan
 
Statistik Chapter 1
Statistik Chapter 1Statistik Chapter 1
Statistik Chapter 1WanBK Leo
 
Linear logisticregression
Linear logisticregressionLinear logisticregression
Linear logisticregressionkongara
 

Semelhante a Simple (and Simplistic) Introduction to Econometrics and Linear Regression (19)

Glm
GlmGlm
Glm
 
Statistics for Managers notes.pdf
Statistics for Managers notes.pdfStatistics for Managers notes.pdf
Statistics for Managers notes.pdf
 
Real Estate Data Set
Real Estate Data SetReal Estate Data Set
Real Estate Data Set
 
Pentaho Meeting 2008 - Statistics & BI
Pentaho Meeting 2008 - Statistics & BIPentaho Meeting 2008 - Statistics & BI
Pentaho Meeting 2008 - Statistics & BI
 
Statistics
StatisticsStatistics
Statistics
 
The future is uncertain. Some events do have a very small probabil.docx
The future is uncertain. Some events do have a very small probabil.docxThe future is uncertain. Some events do have a very small probabil.docx
The future is uncertain. Some events do have a very small probabil.docx
 
Shopping Centers, Big Data & I.O.T
Shopping Centers, Big Data & I.O.TShopping Centers, Big Data & I.O.T
Shopping Centers, Big Data & I.O.T
 
KIT-601 Lecture Notes-UNIT-2.pdf
KIT-601 Lecture Notes-UNIT-2.pdfKIT-601 Lecture Notes-UNIT-2.pdf
KIT-601 Lecture Notes-UNIT-2.pdf
 
Economics for entrepreneurs
Economics for entrepreneurs Economics for entrepreneurs
Economics for entrepreneurs
 
Essay On Math 533
Essay On Math 533Essay On Math 533
Essay On Math 533
 
Essentials of machine learning algorithms
Essentials of machine learning algorithmsEssentials of machine learning algorithms
Essentials of machine learning algorithms
 
Advanced Econometrics L3-4.pptx
Advanced Econometrics L3-4.pptxAdvanced Econometrics L3-4.pptx
Advanced Econometrics L3-4.pptx
 
The Controversy Between Theory To Measurement And...
The Controversy Between Theory To Measurement And...The Controversy Between Theory To Measurement And...
The Controversy Between Theory To Measurement And...
 
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
 
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
16 USING LINEAR REGRESSION PREDICTING THE FUTURE16 MEDIA LIBRAR.docx
 
Relationship between Linear Algebra and StatisticsLinear algebra.docx
Relationship between Linear Algebra and StatisticsLinear algebra.docxRelationship between Linear Algebra and StatisticsLinear algebra.docx
Relationship between Linear Algebra and StatisticsLinear algebra.docx
 
Workbook Project
Workbook ProjectWorkbook Project
Workbook Project
 
Statistik Chapter 1
Statistik Chapter 1Statistik Chapter 1
Statistik Chapter 1
 
Linear logisticregression
Linear logisticregressionLinear logisticregression
Linear logisticregression
 

Último

7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...Paul Menig
 
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...anilsa9823
 
Event mailer assignment progress report .pdf
Event mailer assignment progress report .pdfEvent mailer assignment progress report .pdf
Event mailer assignment progress report .pdftbatkhuu1
 
Regression analysis: Simple Linear Regression Multiple Linear Regression
Regression analysis:  Simple Linear Regression Multiple Linear RegressionRegression analysis:  Simple Linear Regression Multiple Linear Regression
Regression analysis: Simple Linear Regression Multiple Linear RegressionRavindra Nath Shukla
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth MarketingShawn Pang
 
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...lizamodels9
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Serviceritikaroy0888
 
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 DelhiCall Girls in Delhi
 
Best Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaBest Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaShree Krishna Exports
 
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...Any kyc Account
 
Keppel Ltd. 1Q 2024 Business Update Presentation Slides
Keppel Ltd. 1Q 2024 Business Update  Presentation SlidesKeppel Ltd. 1Q 2024 Business Update  Presentation Slides
Keppel Ltd. 1Q 2024 Business Update Presentation SlidesKeppelCorporation
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Dave Litwiller
 
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Tina Ji
 
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature Set
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature SetCreating Low-Code Loan Applications using the Trisotech Mortgage Feature Set
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature SetDenis Gagné
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsP&CO
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in managementchhavia330
 
Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMRavindra Nath Shukla
 
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...Lviv Startup Club
 
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyThe Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyEthan lee
 

Último (20)

7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...7.pdf This presentation captures many uses and the significance of the number...
7.pdf This presentation captures many uses and the significance of the number...
 
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
Lucknow 💋 Escorts in Lucknow - 450+ Call Girl Cash Payment 8923113531 Neha Th...
 
Event mailer assignment progress report .pdf
Event mailer assignment progress report .pdfEvent mailer assignment progress report .pdf
Event mailer assignment progress report .pdf
 
Regression analysis: Simple Linear Regression Multiple Linear Regression
Regression analysis:  Simple Linear Regression Multiple Linear RegressionRegression analysis:  Simple Linear Regression Multiple Linear Regression
Regression analysis: Simple Linear Regression Multiple Linear Regression
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
 
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Service
 
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
 
Best Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaBest Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in India
 
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...
KYC-Verified Accounts: Helping Companies Handle Challenging Regulatory Enviro...
 
Keppel Ltd. 1Q 2024 Business Update Presentation Slides
Keppel Ltd. 1Q 2024 Business Update  Presentation SlidesKeppel Ltd. 1Q 2024 Business Update  Presentation Slides
Keppel Ltd. 1Q 2024 Business Update Presentation Slides
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
 
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
 
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
 
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature Set
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature SetCreating Low-Code Loan Applications using the Trisotech Mortgage Feature Set
Creating Low-Code Loan Applications using the Trisotech Mortgage Feature Set
 
Value Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and painsValue Proposition canvas- Customer needs and pains
Value Proposition canvas- Customer needs and pains
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in management
 
Monte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSMMonte Carlo simulation : Simulation using MCSM
Monte Carlo simulation : Simulation using MCSM
 
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...
Yaroslav Rozhankivskyy: Три складові і три передумови максимальної продуктивн...
 
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case studyThe Coffee Bean & Tea Leaf(CBTL), Business strategy case study
The Coffee Bean & Tea Leaf(CBTL), Business strategy case study
 

Simple (and Simplistic) Introduction to Econometrics and Linear Regression

  • 1. What is econometrics? Simple, non-technical introduction on Linear Regression/OLS as a technique
  • 2.
  • 3.
  • 4.
  • 6. “Econometrics? Isn’t that difficult?”
  • 7. It’s full of formulas… and it could be complex
  • 9.
  • 10. This is an attempt to present econometrics as simple as possible…
  • 11. What’s required to learn a little bit of econometrics
  • 12. … lots of curiosity
  • 13. … a little bit of patience
  • 14. … a little bit of brains
  • 15. … confidence in dealing with numbers
  • 16. … a belief that numbers can tell stories
  • 17. Let’s start with a little bit of definition What is econometrics?
  • 18.
  • 19.
  • 20.
  • 21.
  • 22.
  • 23.
  • 24.
  • 25.
  • 26.
  • 27. If we plotted the data, we would indeed see an upward trend… Time t, in months Product users ‘000 In the 1 st month, we see that there are about 5’000 product users By the 30 th month, the number of users have increased to about 40’000 users
  • 28.
  • 29. To answer this question… … we need to understand first the past relationship between the two variables – time and numbers of users . We will then use this understanding of the past to predict what’s going to happen in the next 12 months The Past The Future
  • 30. What bridges the gap between the past and the future… Once we have identified the equation or the model, we will have a better grasp of (1) the past trends and (2) the potentials of the future Linear regression comes into the picture by bridging that gap between the past and the future The Past The Future Linear regression equation
  • 31. With that in mind, let’s look at the chart again
  • 32. From mere observation, we see an uptrend in users across time… Time t, in months Product users ‘000
  • 33. How do we quantify* that uptrend? Time t, in months Product users ‘000 * Remember: In order to project into the future, we need to create a model that quantifies the relationship between time and number of users
  • 34. There are an infinite number of lines that we could use to characterize the uptrend… Time t, in months Product users ‘000 Different people have different views – even when viewing the same set of data: I can argue that the best line is the grey line, another can argue that the blue line is best, and still another can argue that the best line is the pink line
  • 35. Linear regression insists that there is one (and only one) line that would best characterize the trend and the relationship between the two variables
  • 36.
  • 37.
  • 38. Let’s go back a few charts… What OLS does is it objectively goes through these infinite number of lines – and finds the best-fitting line such that the distance between the line and the original data-points are at a minimum OLS does this iteratively – that is, through trial-and-error – until it arrives at the values of m, b, and u that define a line with minimum distance between it and the original data. (Think of OLS as a search-algorithm that tries different m-b-u combinations to achieve the best-fitting line.) Remember: Given any data set, there are an infinite number of lines that can be used to describe the trend. One can choose the “pink” to be the best and rationalize it; another person can argue that the yellow line is the best, and still another third person can defend the blue line. We can argue indefinitely about the merits of each of these infinite number of lines.
  • 39. Going back to the data – the best fitting regression line, after applying OLS is… Time t, in months Product users ‘000
  • 40.
  • 41.
  • 42.
  • 43.
  • 44. Let’s eyeball the model: There seem to be no data-points that are significantly away from the line… Time t, in months Product users ‘000
  • 45. Eyeballing the data, however, brings back subjective interpretations Time t, in months Product users ‘000 One can argue that point at month 11 is significantly away from the line – and so is data for month 24… We therefore need a more accurate, more objective measurement of “fit”
  • 46.
  • 47.
  • 48.
  • 49.
  • 50. Let’s go back to the original question:
  • 51.
  • 52.
  • 53. Let’s now project what’s going to happen in the next 12 months… Time t, in months Product users ‘000 At the end of the next 12 months [by month 42], we can expect to have 543’000 users – if all things remain equal
  • 54. Since we don’t really know what’s going to happen in the future – and we don’t have a perfect model… We can report ranges instead of just a line… The dashed lines indicate the range of expectations for the next 12 months We can expect that there will be about 470’000 to 616’000 users by month 42
  • 55. Are you still there?
  • 56. Take a sigh of relief…
  • 57.
  • 58.
  • 59.
  • 60.
  • 61.
  • 62.  

Notas do Editor

  1. http://www.gettyimages.com/detail/88640738/The-Image-Bank
  2. http://www.gettyimages.com/detail/73209874/Rubberball-Productions
  3. http://www.flickr.com/photos/cuppini/1194887952/ http://www.flickr.com/photos/fabi42/292643814/
  4. http://www.flickr.com/photos/cuppini/1194887952/
  5. http://www.gettyimages.com/detail/200539930-010/Stone
  6. http://www.gettyimages.com/detail/200498009-001/Photonica