SlideShare a Scribd company logo
1 of 23
INFERENIAL
STATISTICS
www.drjayeshpatidar.blogspot.com
INFERENIAL STATISTICS
investigate questions, models and
hypotheses. In many cases, the
conclusions from inferential statistics
extend beyond the immediate data
alone.
Statistics that use sample data to
make decision or inferences about a
population
Populations are the group of
interest –but data analyzed on
samples. www.drjayeshpatidar.blogspot.in
INFERENIAL STATISTICS
Based on the laws of probability
The larger the difference between
the groups ,the lower the probability
is that the difference occurred by
chance
Based on the assumption that
samples are randomly selected
www.drjayeshpatidar.blogspot.in
INFERENIAL STATISTICS
to make judgments of the probability that an
observed difference between groups is a
dependable one or one that might have happened
by chance in this study.
Thus, inferential statistics to make inferences from
our data to more general conditions
www.drjayeshpatidar.blogspot.in
Purposes
Estimating population parameter from sample
data
Testing hypotheses
www.drjayeshpatidar.blogspot.in
Estimating population parameter
o Sampling error – when the sample
does not accurately reflect the
population
o Sampling distribution
www.drjayeshpatidar.blogspot.in
Pulse measurements on a population of 20 subjects
Av. pulse rates of a
grp.of cardiac
patients
66,71,70,67,80,63,
65,79,59,70,67,66,
70,74,92,80,71,55,
83,72
Mean pulse rate=71
Random sample#1
Random sample#2
Random sample#3
Mean pulse rate of
population=71
*Above average for
population
66,59,70,55,66
80,92,83,79,80
71,71,70,64,67
Mean pulse rate of
Random
sample#3=71
Mean=61
Mean=83*
Mean=71
Mean pulse rate of
Randomsample#1Consi
derably Below average
www.drjayeshpatidar.blogspot.in
Sampling distribution
A theoretical frequency distribution ,based
on an infinite no of samples
Based on mathematical formulas and logic
www.drjayeshpatidar.blogspot.in
Sampling distribution of mean
In normal distribution 68%values lie between+or –
1SDand approx 95%lies between +or –2SD
ie 95%of the values in a normal distribution lie
between +or –1.96SD from the mean.
www.drjayeshpatidar.blogspot.in
Confidence intervals
It is a range of values that with a specified degree
of probability ,is thought to contain the population
value.
They contain a lower and an upper limit.The
researcher asserts with some degree of confidence
that the population parameter lies within those
boundaries.
www.drjayeshpatidar.blogspot.in
A confidence interval (CI) is an interval estimate of a
population parameterInstead of estimating the
parameter by a single value, an interval likely to
include the parameter is given.
Thus, confidence intervals are used to indicate the
reliability of an estimate.
How likely the interval is to contain the parameter is
determined by the confidence level or confidence
coefficient.
Increasing the desired confidence level will widen
the confidence interval.
www.drjayeshpatidar.blogspot.in
Were this procedure to be repeated on
multiple samples, the calculated
confidence interval (which would differ
for each sample) would encompass the
true population parameter 90% of the
time."
Note that this need not be repeated
sampling from the same population, just
repeated sampling
www.drjayeshpatidar.blogspot.in
The confidence interval represents
values for the population parameter for
which the difference between the
parameter and the observed estimate is
not statistically significant at the 10%
level―
www.drjayeshpatidar.blogspot.in
If the true value of the parameter lies
outside the 90% confidence interval once it
has been calculated, then an event has
occurred which had a probability of 10% (or
less) of happening by chance
www.drjayeshpatidar.blogspot.in
Testing hypothesis
The null hypothesis is subjected to statistical
analysis
Steps
State the research hypothesis
State the null hypothesis to be tested
Choose the appropriate statistical test for the data
Decide on the level of significance
Decide the test –one tailed or two tailed test to be
used.
Calculate the test statistics using the research data
Compare the value to the critical value to that test
Reject or fail to reject null hypothesis
Determine support or lack of support for the research
hypothesis.
www.drjayeshpatidar.blogspot.in
Level of significance
Probability of rejecting a null hypothesis when it
is true ,and it should not be rejected(alpha)
Most common level of significance.. .05
The rresearcher Is willing to risk being wrong
5%of the time or 5 times out of 100,when
rejecting the null hypothesis
More accurate .01or even at .001
Risk 1%
www.drjayeshpatidar.blogspot.in
Degree of freedom
Concerns the no of values that are
free to vary. df and a no.
www.drjayeshpatidar.blogspot.in
Null hypothesis ---false ---reject—
correct decision
Null hypothesis--- true –accept –
correct decision
Null hypotheses--- true--- rejected---
--type I error
Null hypothesis-- false –accepted---
Type II errror
www.drjayeshpatidar.blogspot.in
Type II error –controlled –using a
large sample
www.drjayeshpatidar.blogspot.in
Type I Error No error
No error Type II Error
True false
Null
rejec
ted
Null
not
rejected
Actual situation in population
Null hypothesis
www.drjayeshpatidar.blogspot.in
Choosing statistical test:
1. Are you comparing groups or test scores?Are you
correlating variables
2. What is th helevel of measurement of the
variables (nominal,ordinal,interval/ratio)
3. How larg eare the groups?
4. How many sets or groups are being considered
5. Are the scores or observations dependent or
independent?
6. How many observations are available o the each
group www.drjayeshpatidar.blogspot.in
Statistical tests used
1. T tests
2. analysis of variance
3. chi-square
www.drjayeshpatidar.blogspot.in
Thank you
www.drjayeshpatidar.blogspot.in

More Related Content

What's hot

descriptive and inferential statistics
descriptive and inferential statisticsdescriptive and inferential statistics
descriptive and inferential statistics
Mona Sajid
 
Types of Statistics
Types of StatisticsTypes of Statistics
Types of Statistics
loranel
 
Brm (one tailed and two tailed hypothesis)
Brm (one tailed and two tailed hypothesis)Brm (one tailed and two tailed hypothesis)
Brm (one tailed and two tailed hypothesis)
Upama Dwivedi
 
Scales of Measurement
Scales of MeasurementScales of Measurement
Scales of Measurement
loranel
 

What's hot (20)

Concept of Inferential statistics
Concept of Inferential statisticsConcept of Inferential statistics
Concept of Inferential statistics
 
Introduction to Descriptive Statistics
Introduction to Descriptive StatisticsIntroduction to Descriptive Statistics
Introduction to Descriptive Statistics
 
Inferential statistics
Inferential statisticsInferential statistics
Inferential statistics
 
descriptive and inferential statistics
descriptive and inferential statisticsdescriptive and inferential statistics
descriptive and inferential statistics
 
Probability sampling
Probability samplingProbability sampling
Probability sampling
 
Types of Statistics
Types of StatisticsTypes of Statistics
Types of Statistics
 
Non probability sampling
Non probability samplingNon probability sampling
Non probability sampling
 
Statistics "Descriptive & Inferential"
Statistics "Descriptive & Inferential"Statistics "Descriptive & Inferential"
Statistics "Descriptive & Inferential"
 
Brm (one tailed and two tailed hypothesis)
Brm (one tailed and two tailed hypothesis)Brm (one tailed and two tailed hypothesis)
Brm (one tailed and two tailed hypothesis)
 
Hypothesis and its types
Hypothesis and its typesHypothesis and its types
Hypothesis and its types
 
Chi -square test
Chi -square testChi -square test
Chi -square test
 
Hypothesis testing
Hypothesis testingHypothesis testing
Hypothesis testing
 
Sampling & Its Types
Sampling & Its TypesSampling & Its Types
Sampling & Its Types
 
Sampling
SamplingSampling
Sampling
 
Scales of Measurement
Scales of MeasurementScales of Measurement
Scales of Measurement
 
Statistical analysis
Statistical  analysisStatistical  analysis
Statistical analysis
 
Hypothesis
HypothesisHypothesis
Hypothesis
 
1.2 types of data
1.2 types of data1.2 types of data
1.2 types of data
 
Inferential Statistics
Inferential StatisticsInferential Statistics
Inferential Statistics
 
Non-Parametric Tests
Non-Parametric TestsNon-Parametric Tests
Non-Parametric Tests
 

Viewers also liked

1.1-1.2 Descriptive and Inferential Statistics
1.1-1.2 Descriptive and Inferential Statistics1.1-1.2 Descriptive and Inferential Statistics
1.1-1.2 Descriptive and Inferential Statistics
mlong24
 
Inferential statistics (2)
Inferential statistics (2)Inferential statistics (2)
Inferential statistics (2)
rajnulada
 
Saturn brochure
Saturn brochureSaturn brochure
Saturn brochure
mlong24
 

Viewers also liked (10)

Power, Effect Sizes, Confidence Intervals, & Academic Integrity
Power, Effect Sizes, Confidence Intervals, & Academic IntegrityPower, Effect Sizes, Confidence Intervals, & Academic Integrity
Power, Effect Sizes, Confidence Intervals, & Academic Integrity
 
Understanding inferential statistics
Understanding inferential statisticsUnderstanding inferential statistics
Understanding inferential statistics
 
Inferential statictis ready go
Inferential statictis ready goInferential statictis ready go
Inferential statictis ready go
 
1.1-1.2 Descriptive and Inferential Statistics
1.1-1.2 Descriptive and Inferential Statistics1.1-1.2 Descriptive and Inferential Statistics
1.1-1.2 Descriptive and Inferential Statistics
 
INFERENTIAL STATISTICS: AN INTRODUCTION
INFERENTIAL STATISTICS: AN INTRODUCTIONINFERENTIAL STATISTICS: AN INTRODUCTION
INFERENTIAL STATISTICS: AN INTRODUCTION
 
Inferential statistics (2)
Inferential statistics (2)Inferential statistics (2)
Inferential statistics (2)
 
Lecture 03 Inferential Statistics 1
Lecture 03 Inferential Statistics 1Lecture 03 Inferential Statistics 1
Lecture 03 Inferential Statistics 1
 
Saturn brochure
Saturn brochureSaturn brochure
Saturn brochure
 
Basic Concepts of Inferential statistics
Basic Concepts of Inferential statisticsBasic Concepts of Inferential statistics
Basic Concepts of Inferential statistics
 
Descriptive research design
Descriptive research designDescriptive research design
Descriptive research design
 

Similar to Inferential statistics.ppt

Inferential statistics hand out (2)
Inferential statistics hand out (2)Inferential statistics hand out (2)
Inferential statistics hand out (2)
Kimberly Ann Yabut
 
Aron chpt 4 sample and probability f2011
Aron chpt 4 sample and probability f2011Aron chpt 4 sample and probability f2011
Aron chpt 4 sample and probability f2011
Sandra Nicks
 
Chapter 7 Estimation Chapter Learning Objectives 1.docx
Chapter 7 Estimation Chapter Learning Objectives 1.docxChapter 7 Estimation Chapter Learning Objectives 1.docx
Chapter 7 Estimation Chapter Learning Objectives 1.docx
christinemaritza
 
Chapter10 3%285%29
Chapter10 3%285%29Chapter10 3%285%29
Chapter10 3%285%29
jhtrespa
 
Sample size
Sample sizeSample size
Sample size
zubis
 
Estimation and hypothesis testing 1 (graduate statistics2)
Estimation and hypothesis testing 1 (graduate statistics2)Estimation and hypothesis testing 1 (graduate statistics2)
Estimation and hypothesis testing 1 (graduate statistics2)
Harve Abella
 
Aron chpt 4 sample and probability
Aron chpt 4 sample and probabilityAron chpt 4 sample and probability
Aron chpt 4 sample and probability
Karen Price
 
Aron chpt 4 sample and probability
Aron chpt 4 sample and probabilityAron chpt 4 sample and probability
Aron chpt 4 sample and probability
Karen Price
 
Lecture 6 Point and Interval Estimation.pptx
Lecture 6 Point and Interval Estimation.pptxLecture 6 Point and Interval Estimation.pptx
Lecture 6 Point and Interval Estimation.pptx
shakirRahman10
 

Similar to Inferential statistics.ppt (20)

Sample Size Determination.23.11.2021.pdf
Sample Size Determination.23.11.2021.pdfSample Size Determination.23.11.2021.pdf
Sample Size Determination.23.11.2021.pdf
 
Elements of inferential statistics
Elements of inferential statisticsElements of inferential statistics
Elements of inferential statistics
 
Stat
StatStat
Stat
 
Inferential statistics hand out (2)
Inferential statistics hand out (2)Inferential statistics hand out (2)
Inferential statistics hand out (2)
 
Burns And Bush Chapter 16
Burns And Bush Chapter 16Burns And Bush Chapter 16
Burns And Bush Chapter 16
 
Chapter 8
Chapter 8Chapter 8
Chapter 8
 
Hypothesis testing
Hypothesis testingHypothesis testing
Hypothesis testing
 
RESEARCH METHODS LESSON 3
RESEARCH METHODS LESSON 3RESEARCH METHODS LESSON 3
RESEARCH METHODS LESSON 3
 
Aron chpt 4 sample and probability f2011
Aron chpt 4 sample and probability f2011Aron chpt 4 sample and probability f2011
Aron chpt 4 sample and probability f2011
 
Chapter 7 Estimation Chapter Learning Objectives 1.docx
Chapter 7 Estimation Chapter Learning Objectives 1.docxChapter 7 Estimation Chapter Learning Objectives 1.docx
Chapter 7 Estimation Chapter Learning Objectives 1.docx
 
Hypo
HypoHypo
Hypo
 
Chapter10 3%285%29
Chapter10 3%285%29Chapter10 3%285%29
Chapter10 3%285%29
 
Sample size
Sample sizeSample size
Sample size
 
Estimating a Population Proportion
Estimating a Population ProportionEstimating a Population Proportion
Estimating a Population Proportion
 
Estimating a Population Proportion
Estimating a Population ProportionEstimating a Population Proportion
Estimating a Population Proportion
 
Estimation and hypothesis testing 1 (graduate statistics2)
Estimation and hypothesis testing 1 (graduate statistics2)Estimation and hypothesis testing 1 (graduate statistics2)
Estimation and hypothesis testing 1 (graduate statistics2)
 
Aron chpt 4 sample and probability
Aron chpt 4 sample and probabilityAron chpt 4 sample and probability
Aron chpt 4 sample and probability
 
Aron chpt 4 sample and probability
Aron chpt 4 sample and probabilityAron chpt 4 sample and probability
Aron chpt 4 sample and probability
 
inferencial statistics
inferencial statisticsinferencial statistics
inferencial statistics
 
Lecture 6 Point and Interval Estimation.pptx
Lecture 6 Point and Interval Estimation.pptxLecture 6 Point and Interval Estimation.pptx
Lecture 6 Point and Interval Estimation.pptx
 

More from Nursing Path

More from Nursing Path (20)

Psychosocial care of coronavirus disease 2019
Psychosocial care of coronavirus disease 2019Psychosocial care of coronavirus disease 2019
Psychosocial care of coronavirus disease 2019
 
Isolation facility for covid-19
Isolation facility for covid-19Isolation facility for covid-19
Isolation facility for covid-19
 
Guidelines on clinical management of covid 19
Guidelines on clinical management of covid   19Guidelines on clinical management of covid   19
Guidelines on clinical management of covid 19
 
Fluid and electrolyte balance
Fluid and electrolyte balanceFluid and electrolyte balance
Fluid and electrolyte balance
 
Hospital Infection Control Programme
Hospital Infection Control ProgrammeHospital Infection Control Programme
Hospital Infection Control Programme
 
Outcome based education
Outcome based educationOutcome based education
Outcome based education
 
Assessment
AssessmentAssessment
Assessment
 
Anxiety disorders
Anxiety disordersAnxiety disorders
Anxiety disorders
 
Selection and organization of learning experience
Selection and organization of learning experienceSelection and organization of learning experience
Selection and organization of learning experience
 
Universal Health Coverage
Universal Health CoverageUniversal Health Coverage
Universal Health Coverage
 
Pneumonia
PneumoniaPneumonia
Pneumonia
 
Swine flu
Swine fluSwine flu
Swine flu
 
Cardiopulmonary resuscitation
Cardiopulmonary resuscitationCardiopulmonary resuscitation
Cardiopulmonary resuscitation
 
Abortion
AbortionAbortion
Abortion
 
Microbiology
MicrobiologyMicrobiology
Microbiology
 
Fundamental of nursing practice exam 4
Fundamental of nursing practice exam 4Fundamental of nursing practice exam 4
Fundamental of nursing practice exam 4
 
Fundamentals of nursing practice exa1
Fundamentals of nursing practice exa1Fundamentals of nursing practice exa1
Fundamentals of nursing practice exa1
 
Fundamentals of nursing practice exam
Fundamentals of nursing practice examFundamentals of nursing practice exam
Fundamentals of nursing practice exam
 
Fundamentals of nursing practice exam
Fundamentals of nursing practice examFundamentals of nursing practice exam
Fundamentals of nursing practice exam
 
The enterobacteriaceae basic properties.ppsx x
The enterobacteriaceae basic properties.ppsx xThe enterobacteriaceae basic properties.ppsx x
The enterobacteriaceae basic properties.ppsx x
 

Recently uploaded

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
WSO2
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
 

Recently uploaded (20)

Architecting Cloud Native Applications
Architecting Cloud Native ApplicationsArchitecting Cloud Native Applications
Architecting Cloud Native Applications
 
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
 
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin WoodPolkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
Apidays New York 2024 - Accelerating FinTech Innovation by Vasa Krishnan, Fin...
 
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
MS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectorsMS Copilot expands with MS Graph connectors
MS Copilot expands with MS Graph connectors
 
Artificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : UncertaintyArtificial Intelligence Chap.5 : Uncertainty
Artificial Intelligence Chap.5 : Uncertainty
 
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challengesICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
 
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
 
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
 
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of TerraformAWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
 
Vector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptxVector Search -An Introduction in Oracle Database 23ai.pptx
Vector Search -An Introduction in Oracle Database 23ai.pptx
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdfRising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
 
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
Apidays New York 2024 - The Good, the Bad and the Governed by David O'Neill, ...
 
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot ModelMcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
 
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost SavingRepurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
 
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers:  A Deep Dive into Serverless Spatial Data and FMECloud Frontiers:  A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
 

Inferential statistics.ppt

  • 2. INFERENIAL STATISTICS investigate questions, models and hypotheses. In many cases, the conclusions from inferential statistics extend beyond the immediate data alone. Statistics that use sample data to make decision or inferences about a population Populations are the group of interest –but data analyzed on samples. www.drjayeshpatidar.blogspot.in
  • 3. INFERENIAL STATISTICS Based on the laws of probability The larger the difference between the groups ,the lower the probability is that the difference occurred by chance Based on the assumption that samples are randomly selected www.drjayeshpatidar.blogspot.in
  • 4. INFERENIAL STATISTICS to make judgments of the probability that an observed difference between groups is a dependable one or one that might have happened by chance in this study. Thus, inferential statistics to make inferences from our data to more general conditions www.drjayeshpatidar.blogspot.in
  • 5. Purposes Estimating population parameter from sample data Testing hypotheses www.drjayeshpatidar.blogspot.in
  • 6. Estimating population parameter o Sampling error – when the sample does not accurately reflect the population o Sampling distribution www.drjayeshpatidar.blogspot.in
  • 7. Pulse measurements on a population of 20 subjects Av. pulse rates of a grp.of cardiac patients 66,71,70,67,80,63, 65,79,59,70,67,66, 70,74,92,80,71,55, 83,72 Mean pulse rate=71 Random sample#1 Random sample#2 Random sample#3 Mean pulse rate of population=71 *Above average for population 66,59,70,55,66 80,92,83,79,80 71,71,70,64,67 Mean pulse rate of Random sample#3=71 Mean=61 Mean=83* Mean=71 Mean pulse rate of Randomsample#1Consi derably Below average www.drjayeshpatidar.blogspot.in
  • 8. Sampling distribution A theoretical frequency distribution ,based on an infinite no of samples Based on mathematical formulas and logic www.drjayeshpatidar.blogspot.in
  • 9. Sampling distribution of mean In normal distribution 68%values lie between+or – 1SDand approx 95%lies between +or –2SD ie 95%of the values in a normal distribution lie between +or –1.96SD from the mean. www.drjayeshpatidar.blogspot.in
  • 10. Confidence intervals It is a range of values that with a specified degree of probability ,is thought to contain the population value. They contain a lower and an upper limit.The researcher asserts with some degree of confidence that the population parameter lies within those boundaries. www.drjayeshpatidar.blogspot.in
  • 11. A confidence interval (CI) is an interval estimate of a population parameterInstead of estimating the parameter by a single value, an interval likely to include the parameter is given. Thus, confidence intervals are used to indicate the reliability of an estimate. How likely the interval is to contain the parameter is determined by the confidence level or confidence coefficient. Increasing the desired confidence level will widen the confidence interval. www.drjayeshpatidar.blogspot.in
  • 12. Were this procedure to be repeated on multiple samples, the calculated confidence interval (which would differ for each sample) would encompass the true population parameter 90% of the time." Note that this need not be repeated sampling from the same population, just repeated sampling www.drjayeshpatidar.blogspot.in
  • 13. The confidence interval represents values for the population parameter for which the difference between the parameter and the observed estimate is not statistically significant at the 10% level― www.drjayeshpatidar.blogspot.in
  • 14. If the true value of the parameter lies outside the 90% confidence interval once it has been calculated, then an event has occurred which had a probability of 10% (or less) of happening by chance www.drjayeshpatidar.blogspot.in
  • 15. Testing hypothesis The null hypothesis is subjected to statistical analysis Steps State the research hypothesis State the null hypothesis to be tested Choose the appropriate statistical test for the data Decide on the level of significance Decide the test –one tailed or two tailed test to be used. Calculate the test statistics using the research data Compare the value to the critical value to that test Reject or fail to reject null hypothesis Determine support or lack of support for the research hypothesis. www.drjayeshpatidar.blogspot.in
  • 16. Level of significance Probability of rejecting a null hypothesis when it is true ,and it should not be rejected(alpha) Most common level of significance.. .05 The rresearcher Is willing to risk being wrong 5%of the time or 5 times out of 100,when rejecting the null hypothesis More accurate .01or even at .001 Risk 1% www.drjayeshpatidar.blogspot.in
  • 17. Degree of freedom Concerns the no of values that are free to vary. df and a no. www.drjayeshpatidar.blogspot.in
  • 18. Null hypothesis ---false ---reject— correct decision Null hypothesis--- true –accept – correct decision Null hypotheses--- true--- rejected--- --type I error Null hypothesis-- false –accepted--- Type II errror www.drjayeshpatidar.blogspot.in
  • 19. Type II error –controlled –using a large sample www.drjayeshpatidar.blogspot.in
  • 20. Type I Error No error No error Type II Error True false Null rejec ted Null not rejected Actual situation in population Null hypothesis www.drjayeshpatidar.blogspot.in
  • 21. Choosing statistical test: 1. Are you comparing groups or test scores?Are you correlating variables 2. What is th helevel of measurement of the variables (nominal,ordinal,interval/ratio) 3. How larg eare the groups? 4. How many sets or groups are being considered 5. Are the scores or observations dependent or independent? 6. How many observations are available o the each group www.drjayeshpatidar.blogspot.in
  • 22. Statistical tests used 1. T tests 2. analysis of variance 3. chi-square www.drjayeshpatidar.blogspot.in