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STAT 652

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Gasket data ... selected from a large number of machines that are used to produce the gasket. The response is the number of gaskets (in thousand) produced. ... – PowerPoint PPT presentation

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Title: STAT 652


1
STAT 652
Lecture 17
2
The Random Efeect Models
3
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Examples
  • A pharmaceutical company would like to examine
    the potency of a liquid medication mixed in large
    vats.
  • To do this, a random sample of five vats from a
    months production was obtained, and four
    separate samples were selected from each vat.

5
  • Maternal ability of mice-response is weight of 10
    day old litters. The data consists of 6 litters
    from each of 4 dams, all of same breed.
  • Here we wont be interested in a particular dam
    but more interested in the variation s²(A) from
    dam to dam and the variation in litters from the
    same dam s²(e).

6
Comparison of two Models
7
Estimating variance components
8
Possible Problem
9
Yield Data
  • Manufacturer will often receive numerous batches
    of raw materials for use in making chemical
    compounds.
  • The manufacturer wishes to obtain a high yield
    from each batch of raw material.
  • To determine the variability in yield due the
    different batches, three sample determinations of
    yield are made for each of five batches of raw
    material.

10
Analysis
  • MSTrVar (among batches)
  • MSEVar (within batches)
  • FMSTr/MSE20.5 (same as fixed effect) compare
    with F(a,4,10) so reject H0 that s²(Batch)0.
  • Also 11.71/13.51.867 of the variation is due to
    batches.

11
Two factor Models
  • Both factors Fixed Factorial Experiment
  • Both Factor random Random Effect
  • One fixed, one random Mixed effect
  • The E(MS) and corresponding F tests will depend
    on the nature of the factor.

12
Two factor Random effects Model
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15
Consequence of Model
16
Variance Components
  • s²MSE
  • s²(AB)MSAB-MSE/n
  • s²(A)MSA-MSE-n s²(AB)/bn

17
Test For Interaction
18
Test for factor A
19
Test for Factor B
20
Estimation of Variance Components
21
Strength Data
  • The factors that affect the breaking strength of
    synthetic fiber are being studies.
  • Four machines are chosen at random from a large
    population of machines, and three operators are
    chosen random from a large population of
    operators.
  • Two replications of a factorial experiment are
    run using fiber from the same production batch.
  • The response is the breaking strength of the
    fiber.

22
Analysis
  • Test for Interaction F9.54/3.332.86.
    F(6,12)3. so we fail to reject H_0 of no
    interaction.
  • Now s²(AB)0 so need to perform a pooled test.
  • MS(pooled)SSABSSE/61297.25/185.4
  • F(Machine)10.5/5.4 compare with F(3,6) so not
    significant
  • F(Operator)63.8/5.4 is significant.
  • Half of the total variation is due to the
    operators.

23
Mixed Effect Model
24
Also the interactions are independent to main
effect and error
25
Consequence of the Models
26
Expected Mean Squares
27
Test for Interaction
28
Test for Fixed Factor A
29
Test for Random Factor B
30
Estimation of Variance Components
ns²(AB)
31
Comparison of three models
32
Gasket data
  • A company wishes to investigate whether the type
    of gasket material affects the amount of
    production of gaskets.
  • Three materials, cork, rubber and plastic are to
    be studied.
  • Two machines were randomly selected from a large
    number of machines that are used to produce the
    gasket.
  • The response is the number of gaskets (in
    thousand) produced.
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