SlideShare ist ein Scribd-Unternehmen logo
1 von 23
FABRIKAM
METROLOGY & QUALITY ASSURANCE
D e p a r t m e n t o f M e c h a n i c a l E n g i n e e r i n g
UNIVERSITY OF ENGINEERING & TECHNOLOGY LAHORE
Normal
Distribution
3
Table of contents
 Normal Distribution Curve
 Non-Normal Distribution
 Mathematical Definition
 Standard Deviation
 Characteristics of Normal Curve
 Normality Test
 Methods for Normality Test
 Example
 Practical Example
Normal Distribution Curve
The term “Normal Distribution Curve” is used
to describe the mathematical concept called
normal distribution.
It refers to the shape that is created when a line
is plotted using the data points for an item that
meets the criteria of ‘Normal Distribution’
Non-Normal Distribution
Mathematical Definition
A continuous random variable X is said to
follow normal distribution with mean ( Îź ) and
standard derivation ( σ ), if its probability
function is
f (x) =
1
𝜎 2𝜋
. 𝑒− 𝑥−μ 2
2𝜎2
Where,
Îź = mean
σ = Standard deviation
Standard Deviation
 The Standard Deviation is a degree of
dispersion from mean value
 It is a measure of how spread out the numbers
are.
Characteristics of Normal Distribution
1. Bell Curve
2. Mean, mode and median
3. Symmetry
4. Uni-nodal
5. Standard Deviation
6. The total area under the curve is 1
CHARACTERISTICS
1: Bell Curve
• Normal curve often called
bell curve due to its
appearance
• Data follows Bell Curves
closely, but not perfectly
• Normal curve is symmetric
about mean
• 50% data is less than mean
and 50% data is greater than
mean
CHARACTERISTICS
2: Symmetry
• In normal distribution mean
is always at centre
• In Normal Distribution;
Mean = Median = Mode
CHARACTERISTICS
3: Mean, Mode, Median
• Normal curve has only One
mode, so there is only one
peak in a curve which is
called Uni-nodal and lies in
the centre.
CHARACTERISTICS
4: Uni - Nodal
• Normal curve have predictable
standard deviation
CHARACTERISTICS
5: Standard Deviation
FABRIKAM
NORMALITY
TEST
14
Normality Test
Normality tests are used to determine if a data
set is well-modeled by a normal distribution
To compute how likely it is for a random
variable underlying the data set to be normally
distributed.
Need to make sure data is normally distributed
before using a normal distribution
FABRIKAM
METHODS FOR
NORMALITY TEST
1. Histogram
2. Skew & Kurtosis
3. Probability Plots
4. Chi-Square goodness of Fit
16
Normality Test Methods
1: Histogram
• It gives visual analyzation of data, either
it looks like bell curve shape i.e. normal
shape or different shape
• It does NOT have to be “Perfect” bell
curve shape
• Data should be symmetrical
• Don’t have several peaks, that is, data
should be unimodal.
Normality Test Methods
2: Skew & Kurtosis
Skews
• Normal distributed data has no skew
• In +ve skew we have a tail to right
• In –ve skew we have tail to left
Large Sample Space for better judgement.
Normality Test Methods
2: Skew & Kurtosis
Kurtosis
• Kurtosis describes how sharp your peak
is or how flattened it is
• Normal Distribution has Kurtosis of 3.0
• Mesokurtic
• Leptokurtic
• Platykurtic
• Minimum Sample Space = 100
Normality Test Methods
3: Probability Plots
• Minimum sample space = 30
• It can be used by hand or statistical
software
• Put data in ascending order
• Start from data 1, and calculate your
plotting position
• Label data scale, draw your points
• Draw line of best fit
• The ‘Best Fit Line’ determines the
normality of curve.
Normality Test
Methods
4 : Chi-Square
• Difference between observed and
expected value
• We expect our value to fall in this
distribution, if it falls outside it is not
normally distributed
• Minimum sample size = 125
Examples of Normal Distribution
• Height of people
• Measurement errors
• Blood pressure
• Point on a test
• IQ score
• Salaries
FABRIKAMFABRIKAM
PRACTICAL EXAMPLE
Problem:
The bottom 30% of students failed an end of semester
exams. The mean for the test was 120, and the
standard deviation was 17. What was passing score?
Data: Ο = 120, σ = 17, x = ?
Solution:
z =
𝒙−μ
σ
𝒙 = z σ +μ
𝒙 = z (17) + 120
From table z = -0.52
𝒙 = (-0.52)(17) + 120
𝒙 = 111.16
which is passing score.
23

Weitere ähnliche Inhalte

Was ist angesagt?

Sampling Distributions and Estimators
Sampling Distributions and Estimators Sampling Distributions and Estimators
Sampling Distributions and Estimators Long Beach City College
 
The Normal distribution
The Normal distributionThe Normal distribution
The Normal distributionSarfraz Ahmad
 
Central tendency
Central tendencyCentral tendency
Central tendencykeerthi samuel
 
Univariate Analysis
 Univariate Analysis Univariate Analysis
Univariate AnalysisSoumya Sahoo
 
Selection of appropriate data analysis technique
Selection of appropriate data analysis techniqueSelection of appropriate data analysis technique
Selection of appropriate data analysis techniqueRajaKrishnan M
 
Lecture 6. univariate and bivariate analysis
Lecture 6. univariate and bivariate analysisLecture 6. univariate and bivariate analysis
Lecture 6. univariate and bivariate analysisDr Rajeev Kumar
 
3 measures of central dendency
3  measures of central dendency3  measures of central dendency
3 measures of central dendencyDr. Nazar Jaf
 
Ch2 Data Description
Ch2 Data DescriptionCh2 Data Description
Ch2 Data DescriptionFarhan Alfin
 
How to detect outliers from a big set of data ?
How to detect outliers from a big set of data ?How to detect outliers from a big set of data ?
How to detect outliers from a big set of data ?Mrinmoy Majumder
 
2. chapter ii(analyz)
2. chapter ii(analyz)2. chapter ii(analyz)
2. chapter ii(analyz)Chhom Karath
 
Stat11t Chapter1
Stat11t Chapter1Stat11t Chapter1
Stat11t Chapter1gueste87a4f
 
Degrees of freedom
Degrees of freedomDegrees of freedom
Degrees of freedomMacVasquez
 
Measures of central tendency and dispersion
Measures of central tendency and dispersionMeasures of central tendency and dispersion
Measures of central tendency and dispersionDr Dhavalkumar F. Chaudhary
 
Descriptive statistics ii
Descriptive statistics iiDescriptive statistics ii
Descriptive statistics iiMohammad Ihmeidan
 
Business statistics
Business statisticsBusiness statistics
Business statisticsRavi Prakash
 
Applied Statistics : Sampling method & central limit theorem
Applied Statistics : Sampling method & central limit theoremApplied Statistics : Sampling method & central limit theorem
Applied Statistics : Sampling method & central limit theoremwahidsajol
 
Advanced statistics Lesson 1
Advanced statistics Lesson 1Advanced statistics Lesson 1
Advanced statistics Lesson 1Cliffed Echavez
 

Was ist angesagt? (20)

Sampling Distributions and Estimators
Sampling Distributions and Estimators Sampling Distributions and Estimators
Sampling Distributions and Estimators
 
The Normal distribution
The Normal distributionThe Normal distribution
The Normal distribution
 
Central tendency
Central tendencyCentral tendency
Central tendency
 
Summarizing data
Summarizing dataSummarizing data
Summarizing data
 
Univariate Analysis
 Univariate Analysis Univariate Analysis
Univariate Analysis
 
Selection of appropriate data analysis technique
Selection of appropriate data analysis techniqueSelection of appropriate data analysis technique
Selection of appropriate data analysis technique
 
Lecture 6. univariate and bivariate analysis
Lecture 6. univariate and bivariate analysisLecture 6. univariate and bivariate analysis
Lecture 6. univariate and bivariate analysis
 
3 measures of central dendency
3  measures of central dendency3  measures of central dendency
3 measures of central dendency
 
Ch2 Data Description
Ch2 Data DescriptionCh2 Data Description
Ch2 Data Description
 
How to detect outliers from a big set of data ?
How to detect outliers from a big set of data ?How to detect outliers from a big set of data ?
How to detect outliers from a big set of data ?
 
2. chapter ii(analyz)
2. chapter ii(analyz)2. chapter ii(analyz)
2. chapter ii(analyz)
 
Stat11t Chapter1
Stat11t Chapter1Stat11t Chapter1
Stat11t Chapter1
 
Degrees of freedom
Degrees of freedomDegrees of freedom
Degrees of freedom
 
Measures of central tendency and dispersion
Measures of central tendency and dispersionMeasures of central tendency and dispersion
Measures of central tendency and dispersion
 
Descriptive statistics ii
Descriptive statistics iiDescriptive statistics ii
Descriptive statistics ii
 
Advanced statistics
Advanced statisticsAdvanced statistics
Advanced statistics
 
Business statistics
Business statisticsBusiness statistics
Business statistics
 
Applied Statistics : Sampling method & central limit theorem
Applied Statistics : Sampling method & central limit theoremApplied Statistics : Sampling method & central limit theorem
Applied Statistics : Sampling method & central limit theorem
 
Advanced statistics Lesson 1
Advanced statistics Lesson 1Advanced statistics Lesson 1
Advanced statistics Lesson 1
 
Descriptive statistics
Descriptive statisticsDescriptive statistics
Descriptive statistics
 

Ähnlich wie Normal distribtion curve

Normal distribution
Normal distributionNormal distribution
Normal distributionCamilleJoy3
 
Basic geostatistics
Basic geostatisticsBasic geostatistics
Basic geostatisticsSerdar Kaya
 
Res701 research methodology lecture 7 8-devaprakasam
Res701 research methodology lecture 7 8-devaprakasamRes701 research methodology lecture 7 8-devaprakasam
Res701 research methodology lecture 7 8-devaprakasamVIT University (Chennai Campus)
 
ME SP 11 Q3 0302 PS.pptx statistics and probability
ME SP 11 Q3 0302 PS.pptx statistics and probabilityME SP 11 Q3 0302 PS.pptx statistics and probability
ME SP 11 Q3 0302 PS.pptx statistics and probabilityTinCabos
 
estimation
estimationestimation
estimationMmedsc Hahm
 
Estimation
EstimationEstimation
EstimationMmedsc Hahm
 
Outlier analysis and anomaly detection
Outlier analysis and anomaly detectionOutlier analysis and anomaly detection
Outlier analysis and anomaly detectionShantanuDeosthale
 
descriptive data analysis
 descriptive data analysis descriptive data analysis
descriptive data analysisgnanasarita1
 
Chapter34
Chapter34Chapter34
Chapter34Ying Liu
 
Introduction to Statistics23122223.ppt
Introduction to Statistics23122223.pptIntroduction to Statistics23122223.ppt
Introduction to Statistics23122223.pptpathianithanaidu
 
Introduction to Statistics2312.ppt
Introduction to Statistics2312.pptIntroduction to Statistics2312.ppt
Introduction to Statistics2312.pptpathianithanaidu
 
statisticsintroductionofbusinessstats.ppt
statisticsintroductionofbusinessstats.pptstatisticsintroductionofbusinessstats.ppt
statisticsintroductionofbusinessstats.pptvoore ajay
 
non parametric test.pptx
non parametric test.pptxnon parametric test.pptx
non parametric test.pptxSoujanyaLk1
 
Introduction to Statistics53004300.ppt
Introduction to Statistics53004300.pptIntroduction to Statistics53004300.ppt
Introduction to Statistics53004300.pptTripthiDubey
 
Chap 3 - PrinciplesofInference-part1.pptx
Chap 3 - PrinciplesofInference-part1.pptxChap 3 - PrinciplesofInference-part1.pptx
Chap 3 - PrinciplesofInference-part1.pptxarifmachinelearning
 
Research method ch07 statistical methods 1
Research method ch07 statistical methods 1Research method ch07 statistical methods 1
Research method ch07 statistical methods 1naranbatn
 
Normalprobabilitydistribution 090308113911-phpapp02
Normalprobabilitydistribution 090308113911-phpapp02Normalprobabilitydistribution 090308113911-phpapp02
Normalprobabilitydistribution 090308113911-phpapp02keerthi samuel
 

Ähnlich wie Normal distribtion curve (20)

template.pptx
template.pptxtemplate.pptx
template.pptx
 
Normal distribution
Normal distributionNormal distribution
Normal distribution
 
Basic geostatistics
Basic geostatisticsBasic geostatistics
Basic geostatistics
 
Res701 research methodology lecture 7 8-devaprakasam
Res701 research methodology lecture 7 8-devaprakasamRes701 research methodology lecture 7 8-devaprakasam
Res701 research methodology lecture 7 8-devaprakasam
 
Dscriptive statistics
Dscriptive statisticsDscriptive statistics
Dscriptive statistics
 
ME SP 11 Q3 0302 PS.pptx statistics and probability
ME SP 11 Q3 0302 PS.pptx statistics and probabilityME SP 11 Q3 0302 PS.pptx statistics and probability
ME SP 11 Q3 0302 PS.pptx statistics and probability
 
estimation
estimationestimation
estimation
 
Estimation
EstimationEstimation
Estimation
 
Outlier analysis and anomaly detection
Outlier analysis and anomaly detectionOutlier analysis and anomaly detection
Outlier analysis and anomaly detection
 
Stats - Intro to Quantitative
Stats -  Intro to Quantitative Stats -  Intro to Quantitative
Stats - Intro to Quantitative
 
descriptive data analysis
 descriptive data analysis descriptive data analysis
descriptive data analysis
 
Chapter34
Chapter34Chapter34
Chapter34
 
Introduction to Statistics23122223.ppt
Introduction to Statistics23122223.pptIntroduction to Statistics23122223.ppt
Introduction to Statistics23122223.ppt
 
Introduction to Statistics2312.ppt
Introduction to Statistics2312.pptIntroduction to Statistics2312.ppt
Introduction to Statistics2312.ppt
 
statisticsintroductionofbusinessstats.ppt
statisticsintroductionofbusinessstats.pptstatisticsintroductionofbusinessstats.ppt
statisticsintroductionofbusinessstats.ppt
 
non parametric test.pptx
non parametric test.pptxnon parametric test.pptx
non parametric test.pptx
 
Introduction to Statistics53004300.ppt
Introduction to Statistics53004300.pptIntroduction to Statistics53004300.ppt
Introduction to Statistics53004300.ppt
 
Chap 3 - PrinciplesofInference-part1.pptx
Chap 3 - PrinciplesofInference-part1.pptxChap 3 - PrinciplesofInference-part1.pptx
Chap 3 - PrinciplesofInference-part1.pptx
 
Research method ch07 statistical methods 1
Research method ch07 statistical methods 1Research method ch07 statistical methods 1
Research method ch07 statistical methods 1
 
Normalprobabilitydistribution 090308113911-phpapp02
Normalprobabilitydistribution 090308113911-phpapp02Normalprobabilitydistribution 090308113911-phpapp02
Normalprobabilitydistribution 090308113911-phpapp02
 

Mehr von AliRaza1767

Solar Ponds.pptx
Solar Ponds.pptxSolar Ponds.pptx
Solar Ponds.pptxAliRaza1767
 
Hydrogen Alternative Fuels.pptx
Hydrogen Alternative Fuels.pptxHydrogen Alternative Fuels.pptx
Hydrogen Alternative Fuels.pptxAliRaza1767
 
Three new models for evaluation of standard involute spur gear | Mesh Analysis
Three new models for evaluation of standard involute spur gear | Mesh Analysis Three new models for evaluation of standard involute spur gear | Mesh Analysis
Three new models for evaluation of standard involute spur gear | Mesh Analysis AliRaza1767
 
Slotter machine
Slotter machineSlotter machine
Slotter machineAliRaza1767
 
Six sigma, spc , lean
Six sigma, spc , leanSix sigma, spc , lean
Six sigma, spc , leanAliRaza1767
 
Shaper & planer machines
Shaper & planer machinesShaper & planer machines
Shaper & planer machinesAliRaza1767
 
Quality assurance errors
Quality assurance errorsQuality assurance errors
Quality assurance errorsAliRaza1767
 
Grinding machine
Grinding machineGrinding machine
Grinding machineAliRaza1767
 
Drilling, boring reaming operation on lathe
Drilling, boring reaming operation on latheDrilling, boring reaming operation on lathe
Drilling, boring reaming operation on latheAliRaza1767
 
Broaching machine
Broaching machineBroaching machine
Broaching machineAliRaza1767
 
Computer Aided Quality
Computer Aided QualityComputer Aided Quality
Computer Aided QualityAliRaza1767
 
Abrsive products
Abrsive productsAbrsive products
Abrsive productsAliRaza1767
 
Milling machine
Milling machineMilling machine
Milling machineAliRaza1767
 
Milling machine.pptx
Milling machine.pptxMilling machine.pptx
Milling machine.pptxAliRaza1767
 
Building construction layout
Building construction layoutBuilding construction layout
Building construction layoutAliRaza1767
 
Funny speech by ali raza
Funny speech by ali razaFunny speech by ali raza
Funny speech by ali razaAliRaza1767
 
Rock and the Rock Cycle
Rock and the Rock CycleRock and the Rock Cycle
Rock and the Rock CycleAliRaza1767
 
FCC structure
FCC structureFCC structure
FCC structureAliRaza1767
 

Mehr von AliRaza1767 (18)

Solar Ponds.pptx
Solar Ponds.pptxSolar Ponds.pptx
Solar Ponds.pptx
 
Hydrogen Alternative Fuels.pptx
Hydrogen Alternative Fuels.pptxHydrogen Alternative Fuels.pptx
Hydrogen Alternative Fuels.pptx
 
Three new models for evaluation of standard involute spur gear | Mesh Analysis
Three new models for evaluation of standard involute spur gear | Mesh Analysis Three new models for evaluation of standard involute spur gear | Mesh Analysis
Three new models for evaluation of standard involute spur gear | Mesh Analysis
 
Slotter machine
Slotter machineSlotter machine
Slotter machine
 
Six sigma, spc , lean
Six sigma, spc , leanSix sigma, spc , lean
Six sigma, spc , lean
 
Shaper & planer machines
Shaper & planer machinesShaper & planer machines
Shaper & planer machines
 
Quality assurance errors
Quality assurance errorsQuality assurance errors
Quality assurance errors
 
Grinding machine
Grinding machineGrinding machine
Grinding machine
 
Drilling, boring reaming operation on lathe
Drilling, boring reaming operation on latheDrilling, boring reaming operation on lathe
Drilling, boring reaming operation on lathe
 
Broaching machine
Broaching machineBroaching machine
Broaching machine
 
Computer Aided Quality
Computer Aided QualityComputer Aided Quality
Computer Aided Quality
 
Abrsive products
Abrsive productsAbrsive products
Abrsive products
 
Milling machine
Milling machineMilling machine
Milling machine
 
Milling machine.pptx
Milling machine.pptxMilling machine.pptx
Milling machine.pptx
 
Building construction layout
Building construction layoutBuilding construction layout
Building construction layout
 
Funny speech by ali raza
Funny speech by ali razaFunny speech by ali raza
Funny speech by ali raza
 
Rock and the Rock Cycle
Rock and the Rock CycleRock and the Rock Cycle
Rock and the Rock Cycle
 
FCC structure
FCC structureFCC structure
FCC structure
 

KĂźrzlich hochgeladen

Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Jack DiGiovanna
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsappssapnasaifi408
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...dajasot375
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPramod Kumar Srivastava
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPTBoston Institute of Analytics
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptxthyngster
 
Top 5 Best Data Analytics Courses In Queens
Top 5 Best Data Analytics Courses In QueensTop 5 Best Data Analytics Courses In Queens
Top 5 Best Data Analytics Courses In Queensdataanalyticsqueen03
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSINGmarianagonzalez07
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]📊 Markus Baersch
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样vhwb25kk
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFAAndrei Kaleshka
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一F sss
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degreeyuu sss
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Colleen Farrelly
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.natarajan8993
 

KĂźrzlich hochgeladen (20)

Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
Building on a FAIRly Strong Foundation to Connect Academic Research to Transl...
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
 
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
Indian Call Girls in Abu Dhabi O5286O24O8 Call Girls in Abu Dhabi By Independ...
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
 
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default  Presentation : Data Analysis Project PPTPredictive Analysis for Loan Default  Presentation : Data Analysis Project PPT
Predictive Analysis for Loan Default Presentation : Data Analysis Project PPT
 
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptxEMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM  TRACKING WITH GOOGLE ANALYTICS.pptx
EMERCE - 2024 - AMSTERDAM - CROSS-PLATFORM TRACKING WITH GOOGLE ANALYTICS.pptx
 
Top 5 Best Data Analytics Courses In Queens
Top 5 Best Data Analytics Courses In QueensTop 5 Best Data Analytics Courses In Queens
Top 5 Best Data Analytics Courses In Queens
 
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
2006_GasProcessing_HB (1).pdf HYDROCARBON PROCESSING
 
GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]GA4 Without Cookies [Measure Camp AMS]
GA4 Without Cookies [Measure Camp AMS]
 
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
1:1定制(UQ毕业证)昆士兰大学毕业证成绩单修改留信学历认证原版一模一样
 
DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFA
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
E-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptxE-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptx
 
Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024Generative AI for Social Good at Open Data Science East 2024
Generative AI for Social Good at Open Data Science East 2024
 
RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.RABBIT: A CLI tool for identifying bots based on their GitHub events.
RABBIT: A CLI tool for identifying bots based on their GitHub events.
 

Normal distribtion curve

  • 1. FABRIKAM METROLOGY & QUALITY ASSURANCE D e p a r t m e n t o f M e c h a n i c a l E n g i n e e r i n g UNIVERSITY OF ENGINEERING & TECHNOLOGY LAHORE
  • 3. 3 Table of contents  Normal Distribution Curve  Non-Normal Distribution  Mathematical Definition  Standard Deviation  Characteristics of Normal Curve  Normality Test  Methods for Normality Test  Example  Practical Example
  • 4. Normal Distribution Curve The term “Normal Distribution Curve” is used to describe the mathematical concept called normal distribution. It refers to the shape that is created when a line is plotted using the data points for an item that meets the criteria of ‘Normal Distribution’
  • 6. Mathematical Definition A continuous random variable X is said to follow normal distribution with mean ( Îź ) and standard derivation ( σ ), if its probability function is f (x) = 1 𝜎 2𝜋 . 𝑒− 𝑥−μ 2 2𝜎2 Where, Îź = mean σ = Standard deviation
  • 7. Standard Deviation  The Standard Deviation is a degree of dispersion from mean value  It is a measure of how spread out the numbers are.
  • 8. Characteristics of Normal Distribution 1. Bell Curve 2. Mean, mode and median 3. Symmetry 4. Uni-nodal 5. Standard Deviation 6. The total area under the curve is 1
  • 9. CHARACTERISTICS 1: Bell Curve • Normal curve often called bell curve due to its appearance • Data follows Bell Curves closely, but not perfectly
  • 10. • Normal curve is symmetric about mean • 50% data is less than mean and 50% data is greater than mean CHARACTERISTICS 2: Symmetry
  • 11. • In normal distribution mean is always at centre • In Normal Distribution; Mean = Median = Mode CHARACTERISTICS 3: Mean, Mode, Median
  • 12. • Normal curve has only One mode, so there is only one peak in a curve which is called Uni-nodal and lies in the centre. CHARACTERISTICS 4: Uni - Nodal
  • 13. • Normal curve have predictable standard deviation CHARACTERISTICS 5: Standard Deviation
  • 15. Normality Test Normality tests are used to determine if a data set is well-modeled by a normal distribution To compute how likely it is for a random variable underlying the data set to be normally distributed. Need to make sure data is normally distributed before using a normal distribution
  • 16. FABRIKAM METHODS FOR NORMALITY TEST 1. Histogram 2. Skew & Kurtosis 3. Probability Plots 4. Chi-Square goodness of Fit 16
  • 17. Normality Test Methods 1: Histogram • It gives visual analyzation of data, either it looks like bell curve shape i.e. normal shape or different shape • It does NOT have to be “Perfect” bell curve shape • Data should be symmetrical • Don’t have several peaks, that is, data should be unimodal.
  • 18. Normality Test Methods 2: Skew & Kurtosis Skews • Normal distributed data has no skew • In +ve skew we have a tail to right • In –ve skew we have tail to left Large Sample Space for better judgement.
  • 19. Normality Test Methods 2: Skew & Kurtosis Kurtosis • Kurtosis describes how sharp your peak is or how flattened it is • Normal Distribution has Kurtosis of 3.0 • Mesokurtic • Leptokurtic • Platykurtic • Minimum Sample Space = 100
  • 20. Normality Test Methods 3: Probability Plots • Minimum sample space = 30 • It can be used by hand or statistical software • Put data in ascending order • Start from data 1, and calculate your plotting position • Label data scale, draw your points • Draw line of best fit • The ‘Best Fit Line’ determines the normality of curve.
  • 21. Normality Test Methods 4 : Chi-Square • Difference between observed and expected value • We expect our value to fall in this distribution, if it falls outside it is not normally distributed • Minimum sample size = 125
  • 22. Examples of Normal Distribution • Height of people • Measurement errors • Blood pressure • Point on a test • IQ score • Salaries
  • 23. FABRIKAMFABRIKAM PRACTICAL EXAMPLE Problem: The bottom 30% of students failed an end of semester exams. The mean for the test was 120, and the standard deviation was 17. What was passing score? Data: Îź = 120, σ = 17, x = ? Solution: z = 𝒙−μ σ 𝒙 = z σ +Îź 𝒙 = z (17) + 120 From table z = -0.52 𝒙 = (-0.52)(17) + 120 𝒙 = 111.16 which is passing score. 23