SlideShare una empresa de Scribd logo
1 de 11
Descargar para leer sin conexión
: ‫کۆلێژ‬ ‫ناوی‬
‫هەولێر‬ ‫ئەندازیاری‬ ‫پۆلیتەکنیکی‬ ‫زانکۆی‬
: ‫زانستی‬ ‫بەشی‬ ‫ناوی‬
‫شارستانی‬ ‫ئەندازیاری‬
: ‫بابەت‬ ‫ناوی‬
Engineering Statistics
: ‫قوتابی‬ ‫ناوی‬
‫بهرام‬ ‫بهزاد‬
‫صا‬
‫بر‬
‫مامۆستای‬ ‫ناوی‬
: ‫بابەت‬
‫عمر‬ ‫حسن‬ ‫دلڤین‬
: ‫کردن‬ ‫پێشکەش‬ ‫رێکەوتی‬
١٥
/
٦
/
٢٠٢٠
2
Contents
Introduction:................................................................................................ 3
Degrees of Freedom:................................................................................ 3
Key Takeaways ........................................................................................ 3
Calculation by hand: ................................................................................... 4
Calculation by Microsoft Excel: ................................................................. 5
T- Distribution Curve:................................................................................. 6
Discussion:.................................................................................................. 8
Summary and Learning Outcomes:............................................................. 9
Reference: ................................................................................................. 11
3
Introduction:
A t-test is a statistical test that is used to compare the means of two groups. It is often used in
hypothesis testing to determine whether a process or treatment actually has an effect on the
population of interest, or whether two groups are different from one another.
T-distribution is a probability distribution that is used to estimate population parameters when the
sample size is small and / or when the population variance is unknown.
Why use the t-distribution?
According to the central limit theorem, the sampling distribution of statistic will follow a normal
distribution as long as the sample size is sufficiently large.
When to use the t-distribution:
The t-distribution can be used with any statistic having a bell shaped distribution The sampling
distribution of a statistic should be bell shaped if any of the following conditions apply
 The population distribution is normal.
 Population is symmetric, unimodal, without outliers and the sample size at least 40.
Degrees of Freedom: There are actually many different t-distributions. The particular of the
t-distribution is determined by its degree of freedom.
Whose values are given by:
n
S
t


 

Key Takeaways
 The T distribution is a continuous probability distribution of the z-score when the estimated
standard deviation is used in the denominator rather than the true standard deviation.
 The T distribution, like the normal distribution, is bell-shaped and symmetric, but it has
heavier tails, which means it tends to produce values that fall far from its mean.
 T-tests are used in statistics to estimate significance.
µ = is the sample mean.
µº = is the population mean.
S = is the standard deviation of the sample.
n = is the sample size.
4
Calculation by hand:
Data:
Speed’s
𝜇 = 52.333 𝑘𝑚/ℎ𝑟
𝜇°
= 56 𝑘𝑚/ℎ𝑟
n = 30
𝑆𝐷 𝑜𝑟 (𝑆) = 9.444 𝑘𝑚/ℎ𝑟
Solution:
Step 1: determine the null and alternative hypotheses.
Null hypothesis 𝐻0: 𝜇 = 𝜇𝑜
Alternative hypothesis 𝐻𝑎: 𝜇 ≠ 𝜇𝑜
𝑜𝑟 𝜇 > 𝜇𝑜
𝑜𝑟 𝜇 < 𝜇𝑜
Step 2:
𝑡 =
𝑋−𝜇𝑜
𝑆
√𝑛
=
52.333−56
9.444
√30
= −2.126
Step 3: I use Table A.3
t = 2.126
df = 30-1= 29
P-value = 0.021
Step 4: I use Table A.2
df = 29
C.L = 95% = 0.95
𝑡′
= 2.05
Step 5:
52.333 < 56 and 2.05 < 2.126 (Two – tailed) , statistically significant
51 54 54 61 50 50 41 57 49 54
35 50 53 50 43 51 51 48 54 64
76 39 49 76 52 54 62 35 59 48
5
Calculation by Microsoft Excel:
Data:
Speeds
𝜇 = 52.333 𝑘𝑚/ℎ𝑟
𝜇°
= 56 𝑘𝑚/ℎ𝑟
n = 30
𝑆𝐷 𝑜𝑟 (𝑆) = 9.444 𝑘𝑚/ℎ𝑟
Result:
51 54 54 61 50 50 41 57 49 54
35 50 53 50 43 51 51 48 54 64
76 39 49 76 52 54 62 35 59 48
t-Test: One-Sample
Result
Mean 52.3333333
Variance 89.1954023
Observations 30
Hypothesized Mean
Difference
0
df 29
t Stat -2.1264777
P(T<=t) one-tail 0.02104907
t Critical one-tail 1.69912703
P(T<=t) two-tail 0.04209814
t Critical two-tail 2.04522964
6
T- Distribution Curve:
7
8
Discussion:
One sample t-test, using T distribution (DF=29) (two-tailed) (validation)
Since p-value < α, H0 is rejected.
The average of Speed's population is considered to be not equal to the μ0.
In other words, the difference between the average of the Speed and μ0 is big enough to be
statistically significant.
p-value equals 0.0420981, ( p( x ≤ T ) = 0.0210491 ). This means that the chance of type1 error
(rejecting a correct H0) is small: 0.04210 (4.21%).
The smaller the p-value the more it supports Ha.
The test statistic T equals -2.126478, is not in the 95% critical value accepted range: [-2.0452 :
2.0452].
x=52.33, is not in the 95% accepted range: [52.4700 : 59.5300].
The statistic S' equals 1.724 .
The observed standardized effect size is medium (0.39). That indicates that the magnitude of the
difference between the average and μ0 is medium.
9
Summary and Learning Outcomes:
Step 1: Determine the null and alternative hypotheses.
where the format of the alternative hypothesis depends on the research question
of interest and must be decided before looking at the data.
Step 2: Summarize the data into an appropriate test statistic after first verifying
that necessary data conditions are met.
If n is large, or if there are no extreme outliers or skewness, compute
Step 3: Find the p-value by comparing the test statistic to the possibilities
expected if the null hypothesis were true.
Using the t-distribution with df 5 n 2 1, the p-value is the area in the tail(s)
beyond the test statistic t, as follows:
These areas can be found using statistical software, or a p-value range can be
found using Table A.3 in the Appendix.
Step 4: Decide whether the result is statistically significant based on the p-value.
Step 5: Report the conclusion in the context of the situation.
The notation t* is used for the multiplier in a confidence interval as well
as for the critical value in a rejection region. Values of t* are found in Table A.2.
10
Summary and Learning Outcomes:
The t-test is your first introduction to performing a real statistical test between two groups and
trying to understand this whole matter of significance from an applied point of view. Be sure that
you understand what is in this chapter before you move on. And be sure you can do by hand the few
calculations that were asked for. Next, we move on to using another form of the same test, only this
time, two measures are taken from one group of participants rather than one measure taken from
two separate groups.
The t-test assesses whether the means of two groups are statistically different from each
other.
Independent t-test is to determine if a difference exists in the means of two groups on a
particular characteristic.
Paired samples t-test is a measurements of the same variable at two different points are
compared.
To calculate t-test, we need two t-values and p-value:
I. Calculated t-value.
II. Critical t-value
If calculated t-value is greater than critical t-value, then reject the null hypothesis.
In MS excel:
I. Analyze for t-test.
II. Perform t-test
III. If the sig < alpha value, null hypothesis will be accepted.
11
Reference:
1-Mind on Statistics 5th ed Jessica M. Utts University of California, Irvine Robert F. Heckard
Pennsylvania State University.
2-Applied Statistics and Probability for Engineers Sixth Edition Douglas C. Montgomery Arizona
State University George C. Runger Arizona State University.
3-Basic Statistics for Business & Economics Fifth Edition Douglas A. Lind Coastal Carolina
University and The University of Toledo William C. Marchal The University of Toledo SamuelA.
Wathen Coastal Carolina University.
4-Excel 2016 for Engineering Statistics A Guide to Solving Practical Problems /Thomas J. Quirk.
5- statistics for people who hate statistics 6th
ed —Professor Valarie Janesick Professor of
Educational Leadership University of South Florida.
6- Engineering Statistics 2019-2020 lecturer. Dilveen H. Omar.

Más contenido relacionado

Similar a T- Distribution Report

Day 12 t test for dependent samples and single samples pdf
Day 12 t test for dependent samples and single samples pdfDay 12 t test for dependent samples and single samples pdf
Day 12 t test for dependent samples and single samples pdfElih Sutisna Yanto
 
Inferential Statistics.pptx
Inferential Statistics.pptxInferential Statistics.pptx
Inferential Statistics.pptxjonatanjohn1
 
BRM Unit 3 Data Analysis-1.pptx
BRM Unit 3 Data Analysis-1.pptxBRM Unit 3 Data Analysis-1.pptx
BRM Unit 3 Data Analysis-1.pptxVikasRai405977
 
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docx
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docxRunning head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docx
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docxsusanschei
 
Analyzing experimental research data
Analyzing experimental research dataAnalyzing experimental research data
Analyzing experimental research dataAtula Ahuja
 
In the t test for independent groups, ____.we estimate µ1 µ2.docx
In the t test for independent groups, ____.we estimate µ1 µ2.docxIn the t test for independent groups, ____.we estimate µ1 µ2.docx
In the t test for independent groups, ____.we estimate µ1 µ2.docxbradburgess22840
 
BRM Unit 3 Data Analysis.pptx
BRM Unit 3 Data Analysis.pptxBRM Unit 3 Data Analysis.pptx
BRM Unit 3 Data Analysis.pptxVikasRai405977
 
Introduction to the t test
Introduction to the t testIntroduction to the t test
Introduction to the t testSr Edith Bogue
 
1.0 Descriptive statistics.pdf
1.0 Descriptive statistics.pdf1.0 Descriptive statistics.pdf
1.0 Descriptive statistics.pdfthaersyam
 
MPhil clinical psy Non-parametric statistics.pptx
MPhil clinical psy Non-parametric statistics.pptxMPhil clinical psy Non-parametric statistics.pptx
MPhil clinical psy Non-parametric statistics.pptxrodrickrajamanickam
 
T test for two independent samples and induction
T test for two independent samples and inductionT test for two independent samples and induction
T test for two independent samples and inductionEmmanuel Buah
 

Similar a T- Distribution Report (20)

The t test
The t testThe t test
The t test
 
Day 12 t test for dependent samples and single samples pdf
Day 12 t test for dependent samples and single samples pdfDay 12 t test for dependent samples and single samples pdf
Day 12 t test for dependent samples and single samples pdf
 
Estimating a Population Mean
Estimating a Population Mean  Estimating a Population Mean
Estimating a Population Mean
 
Inferential Statistics.pptx
Inferential Statistics.pptxInferential Statistics.pptx
Inferential Statistics.pptx
 
Parametric Statistics
Parametric StatisticsParametric Statistics
Parametric Statistics
 
One-Way ANOVA
One-Way ANOVAOne-Way ANOVA
One-Way ANOVA
 
BRM Unit 3 Data Analysis-1.pptx
BRM Unit 3 Data Analysis-1.pptxBRM Unit 3 Data Analysis-1.pptx
BRM Unit 3 Data Analysis-1.pptx
 
Correlation
Correlation  Correlation
Correlation
 
Two dependent samples (matched pairs)
Two dependent samples (matched pairs) Two dependent samples (matched pairs)
Two dependent samples (matched pairs)
 
Data analysis
Data analysisData analysis
Data analysis
 
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docx
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docxRunning head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docx
Running head COURSE PROJECT –PHASE 3 COURSE PROJECT –PHASE 3.docx
 
Analyzing experimental research data
Analyzing experimental research dataAnalyzing experimental research data
Analyzing experimental research data
 
In the t test for independent groups, ____.we estimate µ1 µ2.docx
In the t test for independent groups, ____.we estimate µ1 µ2.docxIn the t test for independent groups, ____.we estimate µ1 µ2.docx
In the t test for independent groups, ____.we estimate µ1 µ2.docx
 
BRM Unit 3 Data Analysis.pptx
BRM Unit 3 Data Analysis.pptxBRM Unit 3 Data Analysis.pptx
BRM Unit 3 Data Analysis.pptx
 
Introduction to the t test
Introduction to the t testIntroduction to the t test
Introduction to the t test
 
1.0 Descriptive statistics.pdf
1.0 Descriptive statistics.pdf1.0 Descriptive statistics.pdf
1.0 Descriptive statistics.pdf
 
MPhil clinical psy Non-parametric statistics.pptx
MPhil clinical psy Non-parametric statistics.pptxMPhil clinical psy Non-parametric statistics.pptx
MPhil clinical psy Non-parametric statistics.pptx
 
Point estimation
Point estimationPoint estimation
Point estimation
 
T test for two independent samples and induction
T test for two independent samples and inductionT test for two independent samples and induction
T test for two independent samples and induction
 
Estimating a Population Mean
Estimating a Population MeanEstimating a Population Mean
Estimating a Population Mean
 

Más de Bahzad5

دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratory
دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratoryدليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratory
دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide LaboratoryBahzad5
 
2013 (Total Station & Civil 3D) فێرکاری
2013  (Total Station & Civil 3D) فێرکاری2013  (Total Station & Civil 3D) فێرکاری
2013 (Total Station & Civil 3D) فێرکاریBahzad5
 
Engineering field knowledge -زانیاری بواری ئەندازیاری
Engineering field knowledge -زانیاری بواری ئەندازیاریEngineering field knowledge -زانیاری بواری ئەندازیاری
Engineering field knowledge -زانیاری بواری ئەندازیاریBahzad5
 
(atmosphere correction) زانیاری دەربارەی
(atmosphere correction) زانیاری دەربارەی(atmosphere correction) زانیاری دەربارەی
(atmosphere correction) زانیاری دەربارەیBahzad5
 
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بیناBahzad5
 
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی (Municipal guidelines)
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی  (Municipal guidelines)المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی  (Municipal guidelines)
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی (Municipal guidelines)Bahzad5
 
CONDITIONS OF CONTRACT FOR WORKS OF CIVIL ENGINEERING CONSTRUCTION
CONDITIONS OF CONTRACT  FOR WORKS OF CIVIL  ENGINEERING CONSTRUCTIONCONDITIONS OF CONTRACT  FOR WORKS OF CIVIL  ENGINEERING CONSTRUCTION
CONDITIONS OF CONTRACT FOR WORKS OF CIVIL ENGINEERING CONSTRUCTIONBahzad5
 
Lecture 1: Basics of trigonometry (surveying)
Lecture 1: Basics of trigonometry (surveying)Lecture 1: Basics of trigonometry (surveying)
Lecture 1: Basics of trigonometry (surveying)Bahzad5
 
الشروط العامة لمقاولات اعمال الهندسة المدنية
الشروط العامة لمقاولات اعمال الهندسة المدنيةالشروط العامة لمقاولات اعمال الهندسة المدنية
الشروط العامة لمقاولات اعمال الهندسة المدنيةBahzad5
 
GENERAL CONDITIONS FOR CONTRACTS OF CIVIL ENGINEERING WORKS
GENERAL CONDITIONS  FOR  CONTRACTS OF CIVIL ENGINEERING WORKS GENERAL CONDITIONS  FOR  CONTRACTS OF CIVIL ENGINEERING WORKS
GENERAL CONDITIONS FOR CONTRACTS OF CIVIL ENGINEERING WORKS Bahzad5
 
2 سەرەتاکانی دیزاین
2 سەرەتاکانی دیزاین2 سەرەتاکانی دیزاین
2 سەرەتاکانی دیزاینBahzad5
 
Soil Mechanics (Problems & solutions)
Soil Mechanics (Problems & solutions)Soil Mechanics (Problems & solutions)
Soil Mechanics (Problems & solutions)Bahzad5
 
ڕێبەری بەشە ئەندازیارییەکان
ڕێبەری بەشە ئەندازیارییەکانڕێبەری بەشە ئەندازیارییەکان
ڕێبەری بەشە ئەندازیارییەکانBahzad5
 
سەرەتاکانی دیزاین
سەرەتاکانی دیزاینسەرەتاکانی دیزاین
سەرەتاکانی دیزاینBahzad5
 
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیە
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیەڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیە
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیەBahzad5
 
پرۆژەی ناساندنی ئەندازیاری
پرۆژەی ناساندنی ئەندازیاریپرۆژەی ناساندنی ئەندازیاری
پرۆژەی ناساندنی ئەندازیاریBahzad5
 
بناغە و بنەپایە Footing and Foundation
بناغە و بنەپایە Footing and Foundationبناغە و بنەپایە Footing and Foundation
بناغە و بنەپایە Footing and FoundationBahzad5
 
slump test سڵەمپ تێست
slump test سڵەمپ تێستslump test سڵەمپ تێست
slump test سڵەمپ تێستBahzad5
 
Design of Storm Sewer System
Design of Storm Sewer SystemDesign of Storm Sewer System
Design of Storm Sewer SystemBahzad5
 
ڕۆنی بزوێنەر
ڕۆنی بزوێنەرڕۆنی بزوێنەر
ڕۆنی بزوێنەرBahzad5
 

Más de Bahzad5 (20)

دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratory
دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratoryدليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratory
دليل تجارب الاسفلت المختبرية - Asphalt Experiments Guide Laboratory
 
2013 (Total Station & Civil 3D) فێرکاری
2013  (Total Station & Civil 3D) فێرکاری2013  (Total Station & Civil 3D) فێرکاری
2013 (Total Station & Civil 3D) فێرکاری
 
Engineering field knowledge -زانیاری بواری ئەندازیاری
Engineering field knowledge -زانیاری بواری ئەندازیاریEngineering field knowledge -زانیاری بواری ئەندازیاری
Engineering field knowledge -زانیاری بواری ئەندازیاری
 
(atmosphere correction) زانیاری دەربارەی
(atmosphere correction) زانیاری دەربارەی(atmosphere correction) زانیاری دەربارەی
(atmosphere correction) زانیاری دەربارەی
 
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا
(Building Permit Guidelines ) ڕێنماییەکانی مۆڵەتی بینا
 
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی (Municipal guidelines)
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی  (Municipal guidelines)المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی  (Municipal guidelines)
المبادئ التوجيهية البلدية - ڕێنامەی شارەوانی (Municipal guidelines)
 
CONDITIONS OF CONTRACT FOR WORKS OF CIVIL ENGINEERING CONSTRUCTION
CONDITIONS OF CONTRACT  FOR WORKS OF CIVIL  ENGINEERING CONSTRUCTIONCONDITIONS OF CONTRACT  FOR WORKS OF CIVIL  ENGINEERING CONSTRUCTION
CONDITIONS OF CONTRACT FOR WORKS OF CIVIL ENGINEERING CONSTRUCTION
 
Lecture 1: Basics of trigonometry (surveying)
Lecture 1: Basics of trigonometry (surveying)Lecture 1: Basics of trigonometry (surveying)
Lecture 1: Basics of trigonometry (surveying)
 
الشروط العامة لمقاولات اعمال الهندسة المدنية
الشروط العامة لمقاولات اعمال الهندسة المدنيةالشروط العامة لمقاولات اعمال الهندسة المدنية
الشروط العامة لمقاولات اعمال الهندسة المدنية
 
GENERAL CONDITIONS FOR CONTRACTS OF CIVIL ENGINEERING WORKS
GENERAL CONDITIONS  FOR  CONTRACTS OF CIVIL ENGINEERING WORKS GENERAL CONDITIONS  FOR  CONTRACTS OF CIVIL ENGINEERING WORKS
GENERAL CONDITIONS FOR CONTRACTS OF CIVIL ENGINEERING WORKS
 
2 سەرەتاکانی دیزاین
2 سەرەتاکانی دیزاین2 سەرەتاکانی دیزاین
2 سەرەتاکانی دیزاین
 
Soil Mechanics (Problems & solutions)
Soil Mechanics (Problems & solutions)Soil Mechanics (Problems & solutions)
Soil Mechanics (Problems & solutions)
 
ڕێبەری بەشە ئەندازیارییەکان
ڕێبەری بەشە ئەندازیارییەکانڕێبەری بەشە ئەندازیارییەکان
ڕێبەری بەشە ئەندازیارییەکان
 
سەرەتاکانی دیزاین
سەرەتاکانی دیزاینسەرەتاکانی دیزاین
سەرەتاکانی دیزاین
 
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیە
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیەڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیە
ڕێبەری بەشەئەندازیارییەكانی زانكۆی كۆیە
 
پرۆژەی ناساندنی ئەندازیاری
پرۆژەی ناساندنی ئەندازیاریپرۆژەی ناساندنی ئەندازیاری
پرۆژەی ناساندنی ئەندازیاری
 
بناغە و بنەپایە Footing and Foundation
بناغە و بنەپایە Footing and Foundationبناغە و بنەپایە Footing and Foundation
بناغە و بنەپایە Footing and Foundation
 
slump test سڵەمپ تێست
slump test سڵەمپ تێستslump test سڵەمپ تێست
slump test سڵەمپ تێست
 
Design of Storm Sewer System
Design of Storm Sewer SystemDesign of Storm Sewer System
Design of Storm Sewer System
 
ڕۆنی بزوێنەر
ڕۆنی بزوێنەرڕۆنی بزوێنەر
ڕۆنی بزوێنەر
 

Último

Earthing details of Electrical Substation
Earthing details of Electrical SubstationEarthing details of Electrical Substation
Earthing details of Electrical Substationstephanwindworld
 
Industrial Safety Unit-IV workplace health and safety.ppt
Industrial Safety Unit-IV workplace health and safety.pptIndustrial Safety Unit-IV workplace health and safety.ppt
Industrial Safety Unit-IV workplace health and safety.pptNarmatha D
 
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgUnit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgsaravananr517913
 
Call Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call GirlsCall Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call Girlsssuser7cb4ff
 
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncWhy does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncssuser2ae721
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating SystemRashmi Bhat
 
National Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfNational Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfRajuKanojiya4
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort servicejennyeacort
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AIabhishek36461
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleAlluxio, Inc.
 
home automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadhome automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadaditya806802
 
Concrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxConcrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxKartikeyaDwivedi3
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the weldingMuhammadUzairLiaqat
 
Risk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfRisk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfROCENODodongVILLACER
 
Indian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptIndian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptMadan Karki
 
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONTHE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONjhunlian
 
Virtual memory management in Operating System
Virtual memory management in Operating SystemVirtual memory management in Operating System
Virtual memory management in Operating SystemRashmi Bhat
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionDr.Costas Sachpazis
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionMebane Rash
 

Último (20)

Earthing details of Electrical Substation
Earthing details of Electrical SubstationEarthing details of Electrical Substation
Earthing details of Electrical Substation
 
Industrial Safety Unit-IV workplace health and safety.ppt
Industrial Safety Unit-IV workplace health and safety.pptIndustrial Safety Unit-IV workplace health and safety.ppt
Industrial Safety Unit-IV workplace health and safety.ppt
 
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfgUnit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
Unit7-DC_Motors nkkjnsdkfnfcdfknfdgfggfg
 
Call Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call GirlsCall Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call Girls
 
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsyncWhy does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
Why does (not) Kafka need fsync: Eliminating tail latency spikes caused by fsync
 
Input Output Management in Operating System
Input Output Management in Operating SystemInput Output Management in Operating System
Input Output Management in Operating System
 
National Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdfNational Level Hackathon Participation Certificate.pdf
National Level Hackathon Participation Certificate.pdf
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
 
Past, Present and Future of Generative AI
Past, Present and Future of Generative AIPast, Present and Future of Generative AI
Past, Present and Future of Generative AI
 
Correctly Loading Incremental Data at Scale
Correctly Loading Incremental Data at ScaleCorrectly Loading Incremental Data at Scale
Correctly Loading Incremental Data at Scale
 
young call girls in Green Park🔝 9953056974 🔝 escort Service
young call girls in Green Park🔝 9953056974 🔝 escort Serviceyoung call girls in Green Park🔝 9953056974 🔝 escort Service
young call girls in Green Park🔝 9953056974 🔝 escort Service
 
home automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasadhome automation using Arduino by Aditya Prasad
home automation using Arduino by Aditya Prasad
 
Concrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptxConcrete Mix Design - IS 10262-2019 - .pptx
Concrete Mix Design - IS 10262-2019 - .pptx
 
welding defects observed during the welding
welding defects observed during the weldingwelding defects observed during the welding
welding defects observed during the welding
 
Risk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdfRisk Assessment For Installation of Drainage Pipes.pdf
Risk Assessment For Installation of Drainage Pipes.pdf
 
Indian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.pptIndian Dairy Industry Present Status and.ppt
Indian Dairy Industry Present Status and.ppt
 
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTIONTHE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
THE SENDAI FRAMEWORK FOR DISASTER RISK REDUCTION
 
Virtual memory management in Operating System
Virtual memory management in Operating SystemVirtual memory management in Operating System
Virtual memory management in Operating System
 
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective IntroductionSachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
Sachpazis Costas: Geotechnical Engineering: A student's Perspective Introduction
 
US Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of ActionUS Department of Education FAFSA Week of Action
US Department of Education FAFSA Week of Action
 

T- Distribution Report

  • 1. : ‫کۆلێژ‬ ‫ناوی‬ ‫هەولێر‬ ‫ئەندازیاری‬ ‫پۆلیتەکنیکی‬ ‫زانکۆی‬ : ‫زانستی‬ ‫بەشی‬ ‫ناوی‬ ‫شارستانی‬ ‫ئەندازیاری‬ : ‫بابەت‬ ‫ناوی‬ Engineering Statistics : ‫قوتابی‬ ‫ناوی‬ ‫بهرام‬ ‫بهزاد‬ ‫صا‬ ‫بر‬ ‫مامۆستای‬ ‫ناوی‬ : ‫بابەت‬ ‫عمر‬ ‫حسن‬ ‫دلڤین‬ : ‫کردن‬ ‫پێشکەش‬ ‫رێکەوتی‬ ١٥ / ٦ / ٢٠٢٠
  • 2. 2 Contents Introduction:................................................................................................ 3 Degrees of Freedom:................................................................................ 3 Key Takeaways ........................................................................................ 3 Calculation by hand: ................................................................................... 4 Calculation by Microsoft Excel: ................................................................. 5 T- Distribution Curve:................................................................................. 6 Discussion:.................................................................................................. 8 Summary and Learning Outcomes:............................................................. 9 Reference: ................................................................................................. 11
  • 3. 3 Introduction: A t-test is a statistical test that is used to compare the means of two groups. It is often used in hypothesis testing to determine whether a process or treatment actually has an effect on the population of interest, or whether two groups are different from one another. T-distribution is a probability distribution that is used to estimate population parameters when the sample size is small and / or when the population variance is unknown. Why use the t-distribution? According to the central limit theorem, the sampling distribution of statistic will follow a normal distribution as long as the sample size is sufficiently large. When to use the t-distribution: The t-distribution can be used with any statistic having a bell shaped distribution The sampling distribution of a statistic should be bell shaped if any of the following conditions apply  The population distribution is normal.  Population is symmetric, unimodal, without outliers and the sample size at least 40. Degrees of Freedom: There are actually many different t-distributions. The particular of the t-distribution is determined by its degree of freedom. Whose values are given by: n S t      Key Takeaways  The T distribution is a continuous probability distribution of the z-score when the estimated standard deviation is used in the denominator rather than the true standard deviation.  The T distribution, like the normal distribution, is bell-shaped and symmetric, but it has heavier tails, which means it tends to produce values that fall far from its mean.  T-tests are used in statistics to estimate significance. µ = is the sample mean. µº = is the population mean. S = is the standard deviation of the sample. n = is the sample size.
  • 4. 4 Calculation by hand: Data: Speed’s 𝜇 = 52.333 𝑘𝑚/ℎ𝑟 𝜇° = 56 𝑘𝑚/ℎ𝑟 n = 30 𝑆𝐷 𝑜𝑟 (𝑆) = 9.444 𝑘𝑚/ℎ𝑟 Solution: Step 1: determine the null and alternative hypotheses. Null hypothesis 𝐻0: 𝜇 = 𝜇𝑜 Alternative hypothesis 𝐻𝑎: 𝜇 ≠ 𝜇𝑜 𝑜𝑟 𝜇 > 𝜇𝑜 𝑜𝑟 𝜇 < 𝜇𝑜 Step 2: 𝑡 = 𝑋−𝜇𝑜 𝑆 √𝑛 = 52.333−56 9.444 √30 = −2.126 Step 3: I use Table A.3 t = 2.126 df = 30-1= 29 P-value = 0.021 Step 4: I use Table A.2 df = 29 C.L = 95% = 0.95 𝑡′ = 2.05 Step 5: 52.333 < 56 and 2.05 < 2.126 (Two – tailed) , statistically significant 51 54 54 61 50 50 41 57 49 54 35 50 53 50 43 51 51 48 54 64 76 39 49 76 52 54 62 35 59 48
  • 5. 5 Calculation by Microsoft Excel: Data: Speeds 𝜇 = 52.333 𝑘𝑚/ℎ𝑟 𝜇° = 56 𝑘𝑚/ℎ𝑟 n = 30 𝑆𝐷 𝑜𝑟 (𝑆) = 9.444 𝑘𝑚/ℎ𝑟 Result: 51 54 54 61 50 50 41 57 49 54 35 50 53 50 43 51 51 48 54 64 76 39 49 76 52 54 62 35 59 48 t-Test: One-Sample Result Mean 52.3333333 Variance 89.1954023 Observations 30 Hypothesized Mean Difference 0 df 29 t Stat -2.1264777 P(T<=t) one-tail 0.02104907 t Critical one-tail 1.69912703 P(T<=t) two-tail 0.04209814 t Critical two-tail 2.04522964
  • 7. 7
  • 8. 8 Discussion: One sample t-test, using T distribution (DF=29) (two-tailed) (validation) Since p-value < α, H0 is rejected. The average of Speed's population is considered to be not equal to the μ0. In other words, the difference between the average of the Speed and μ0 is big enough to be statistically significant. p-value equals 0.0420981, ( p( x ≤ T ) = 0.0210491 ). This means that the chance of type1 error (rejecting a correct H0) is small: 0.04210 (4.21%). The smaller the p-value the more it supports Ha. The test statistic T equals -2.126478, is not in the 95% critical value accepted range: [-2.0452 : 2.0452]. x=52.33, is not in the 95% accepted range: [52.4700 : 59.5300]. The statistic S' equals 1.724 . The observed standardized effect size is medium (0.39). That indicates that the magnitude of the difference between the average and μ0 is medium.
  • 9. 9 Summary and Learning Outcomes: Step 1: Determine the null and alternative hypotheses. where the format of the alternative hypothesis depends on the research question of interest and must be decided before looking at the data. Step 2: Summarize the data into an appropriate test statistic after first verifying that necessary data conditions are met. If n is large, or if there are no extreme outliers or skewness, compute Step 3: Find the p-value by comparing the test statistic to the possibilities expected if the null hypothesis were true. Using the t-distribution with df 5 n 2 1, the p-value is the area in the tail(s) beyond the test statistic t, as follows: These areas can be found using statistical software, or a p-value range can be found using Table A.3 in the Appendix. Step 4: Decide whether the result is statistically significant based on the p-value. Step 5: Report the conclusion in the context of the situation. The notation t* is used for the multiplier in a confidence interval as well as for the critical value in a rejection region. Values of t* are found in Table A.2.
  • 10. 10 Summary and Learning Outcomes: The t-test is your first introduction to performing a real statistical test between two groups and trying to understand this whole matter of significance from an applied point of view. Be sure that you understand what is in this chapter before you move on. And be sure you can do by hand the few calculations that were asked for. Next, we move on to using another form of the same test, only this time, two measures are taken from one group of participants rather than one measure taken from two separate groups. The t-test assesses whether the means of two groups are statistically different from each other. Independent t-test is to determine if a difference exists in the means of two groups on a particular characteristic. Paired samples t-test is a measurements of the same variable at two different points are compared. To calculate t-test, we need two t-values and p-value: I. Calculated t-value. II. Critical t-value If calculated t-value is greater than critical t-value, then reject the null hypothesis. In MS excel: I. Analyze for t-test. II. Perform t-test III. If the sig < alpha value, null hypothesis will be accepted.
  • 11. 11 Reference: 1-Mind on Statistics 5th ed Jessica M. Utts University of California, Irvine Robert F. Heckard Pennsylvania State University. 2-Applied Statistics and Probability for Engineers Sixth Edition Douglas C. Montgomery Arizona State University George C. Runger Arizona State University. 3-Basic Statistics for Business & Economics Fifth Edition Douglas A. Lind Coastal Carolina University and The University of Toledo William C. Marchal The University of Toledo SamuelA. Wathen Coastal Carolina University. 4-Excel 2016 for Engineering Statistics A Guide to Solving Practical Problems /Thomas J. Quirk. 5- statistics for people who hate statistics 6th ed —Professor Valarie Janesick Professor of Educational Leadership University of South Florida. 6- Engineering Statistics 2019-2020 lecturer. Dilveen H. Omar.