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Hypothesis Testing

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Type I error: Rejecting the null hypothesis. when it is in fact true ... P reject null hypothesis; otherwise do not reject. State your conclusion in words ... – PowerPoint PPT presentation

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Title: Hypothesis Testing


1
Hypothesis Testing
  • GTECH 201
  • Lecture 16

2
Overview of Todays Topic
  • Formulation
  • Evaluation
  • Refining and Restating
  • Statistical Tests

3
What is a Hypothesis?
  • Unproven or unsubstantiated statement
  • You need to know the literature before you can
    formulate a hypothesis statement
  • Data collection should support hypothesis testing
    and evaluation
  • If hypothesis is tested and found to be correct,
    then results can be refined (different scenarios
    can be tested)
  • If partially correct, then hypothesis statement
    needs to be refined (reworded)

4
Hypothesis Testing
  • Multi-step procedure that leads the researcher
    from the hypothesis statement to the decision
    regarding the hypothesis
  • 6- step process
  • State null and alternate hypotheses
  • Select appropriate statistical test
  • Select level of significance
  • Delineate regions of rejection and nonrejection
    of hypotheses
  • Calculate test statistic
  • Make regarding null hypothesis

5
Step 1
  • State null and alternate hypotheses
  • Null hypothesis
  • A hypothesis to be tested
  • Usually represented as
  • Alternative hypothesis
  • A hypothesis considered as an alternate to the
    null hypothesis
  • Usually represented as

6
Guidelines for Setting up H0, HA
  • Hypothesis tests concerning one parameter
  • Population mean, m
  • A null hypothesis for a hypothesis test
    concerning a population mean should always
    specify a single value for that parameter
  • ( ) sign must appear in the null hypothesis
  • Therefore

7
Guidelines, part 2
  • Alternative hypothesis
  • The choice of the alternative hypothesis depends
    on and should reveal the purpose of the
    hypothesis test
  • Null hypothesis and alternative hypothesis are
    mutually exclusive
  • Three choices are possible

8
Guidelines, part 3
  • An alternate hypothesis with a sign is called
    a two-tailed test
  • The population mean, is different from a
    specified value,
  • When a lt sign appears in the alternate
    hypothesis, the test is called a left-tailed test
  • When a gt sign appears in the alternate
    hypothesis, the test is called a right-tailed
    test

9
Setting up Hypotheses
  • A snack food company produces 454 gms bags of
    pretzels. Although the actual weights deviate
    slightly from the 454 gms, and vary from one bag
    to another, the quality control team insists that
    the mean net weight of bags be maintained at 454
    gms. If the mean net weight of the bags is lower
    or higher, it is likely to cause problems.
  • If you work for the quality control team and you
    want to decide whether the packaging machine is
    working properly, how would you set up a
    hypothesis test?

10
Stating Hypotheses

11
Select Appropriate Test
  • One sample difference of means t test
  • Objective
  • Compare a random sample mean to a population mean
    for difference
  • Requirements and assumptions
  • Random sample
  • Normally distributed population
  • Variable is measured at interval or ratio scale
  • Hypotheses
  • Test Statistic

12
Test Statistic
  • sample mean
  • population mean
  • standard error of the mean
  • population standard deviation

13
Level of Significance
  • ? 0.10 (90) 0.05 (95) 0.01 (99.7)
  • Errors
  • Type I error Rejecting the null hypothesis
    when it is in fact true
  • Type II error Not rejecting the null hypothesis
    when it is in fact false

14
Identify Regions of Rejection
  • Of null hypothesis
  • Two-tailed
  • Left tailed (directional)
  • Right tailed (directional)
  • Calculate test statistic
  • Make decision regarding null or alternate
    hypothesis

15
To Work in Class
  • We want to investigate demographic change in an
    area
  • 3500 households (HH)
  • You take a sample of 250 HH
  • Sample mean 2.68 sample variance 4.3
  • ? 0.10 (90)
  • Now, we want to find out if the mean HH size in
    this one area is typical or representative of the
    national mean household size (2.61)
  • Use the six step process to compare how closely
    the samples that you have taken compare with the
    national average HH size of 2.61

16
Limits of Hypothesis Testing
  • Pre-selecting level of significance
  • Lacks a theoretical basis
  • Used for convenience
  • Binary nature of null and alternative hypothesis
  • P-value or Probability value
  • Accepted approach
  • The exact significance level associated with the
    calculated test statistic is determined

17
More About P-Value
  • We can define P-value as
  • The exact probability of getting a test statistic
    value of a given magnitude, IF the null
    hypothesis is true
  • What is the probability of making a Type I error
  • Type I error occurs when the null hypothesis is
    rejected using the hypothesis testing procedure,
    even though in reality the null hypothesis is true

18
Comparing Classical and P Value Approaches
  • Classical
  • State hypotheses
  • Decide on significance level
  • Select test
  • Delineate regions of rejection/nonrejection
  • Calculate the test statistic
  • State your conclusion in words
  • P- Value
  • State hypotheses
  • Decide on significance level
  • Compute the value of the test statistic
  • Determine P-value
  • P reject null hypothesis otherwise do not
    reject
  • State your conclusion in words

19
Guidelines for Using P-Value
Evidence against H0
  • Weak or none
  • Moderate
  • Strong
  • Very strong

20
Example
  • A random sample of 18 people with income below
    the poverty level reveals their daily intake of
    calcium
  • mean 747.4 mg
  • standard deviation 188 mg
  • Use the P-value approach to determine whether the
    data provides sufficient evidence at the 5
    significance level to conclude that the mean
    calcium intake of all Americans with income below
    the poverty level is less than the required daily
    allowance of 800 mg

21
Parametric and Nonparametric Tests
  • Parametric tests
  • Require knowledge about population parameters
  • Assumptions made about population distribution
  • E.g., population is normally distributed
  • Sample data measured on Interval/Ratio scale
  • Non-parametric tests
  • Requires no knowledge about population parameters
  • Distribution-free
  • Some non-parametric tests are designed to be
    applied for nominal, ordinal data ( ) we
    will talk about these in the next lecture

22
Choices/Options
  • Run only a parametric test
  • Run only a non-parametric test
  • Run both tests
  • Goal
  • State the problem
  • Decide what inferential technique will be useful
  • Identify formulae associated with the technique
  • Interpret the results
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