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Using Models To Make Decisions

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Title: Using Models To Make Decisions


1
Chapter 6
  • Using Models To Make Decisions

2
Homework 11
  • Read Chapter 6, pages 357-396 Ignore reference to
    Table II
  • LDI 6.16.7
  • EX 6.16.25 odd

3
Model
  • A model is a representation of a real-world
    object or phenomenon.
  • In statistics we want to model populations. In
    particular we want to model how the values of the
    variable of interest in the population are
    distributed.

4
Purpose
  • A well crafted model of a population will help us
    make sound decisions between competing theories.
  • Statistical models bring order and understanding
    to the overwhelming flow of data. Models serve as
    a frame of referencefor comparison, to determine
    if an observation is unusual or not.

5
Blood Pressure
  • What is a healthy BP?
  • What is an unhealthy BP?
  • Where did those statements come from?

6
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7
Modeling Continuous Variables
  • We need to have a model of what we think the
    distribution of the null looks like in order for
    us to decided if the observed data would be
    unusual to be seen under the assumption the null
    is true. Hence, we need to model populations.
    Since we will be discussing models for
    populations, the mean and standard deviation for
    a density curve or model will be represented by
    (mu) and (sigma), respectively.

8
Density Function
  • A density function is a nonnegative function or
    curve that describes the overall shape of a
    distribution. The total area under the entire
    curve is equal to 1, and proportions are measured
    as areas under the density curve/function.
  • Big Deal area proportion in a continuous model.

9
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10
Lets Get Normal
  • The normal distribution is the symmetric bell
    shaped distribution.

11
Abducted by an alien circus company,
Professor Arnold is forced to write statistics
equations in Center Ring.
12
Lets Get Normal
  • Normal distribution

Curve is bell shaped and symmetric
Density
Data Axis
13
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14
EX Heights of Adult Men and Women (According to
the National Center for Health Statistics). Note
that the shape of the distribution is dependent
on the mean and standard deviation.
  • Women
  • µ 63.6
  • ? 2.5

Men µ 69.2 ? 2.8
63.6
69.2
Height (inches)
15
Normal Notation
  • The notation X is N(m, s) means that the
    variable X is normally distributed with mean m
    and standard deviation s.
  • For example Height of men is N(69.2, 2.8)
    Height of women is N(63.6, 2.5)

16
Using the TI to Find Proportions in a Normal
Distribution
  • STEP 1 Draw a picture and shade the area that
    represents the proportion to be found.
  • STEP 2 Use NormalCDF (2nd-VARS).NormalCDf(lower,
    upper, m, s)
  • Note -E99 is negative infinity and E99 is
    positive infinity

17
What Percentage?
  • Given the models from the NCHS, answer the
    following
  • The percent of males more than 69.2 inches is
    ____
  • The percent of females more than 69.2 inches is
    ____
  • The percent of males less than 63.6 inches is
    ____

18
Keep in Mind
  • Since we are modeling populations, the mean and
    standard deviation are the parameters given by m
    and s respectively.

19
The Z score for Population Models
20
  • The Standard Normal Distribution

21
Lets Do It 6.2
22
ZScore
  • The zscore tells you how many standard
    deviations an observed value falls from the mean.
  • If z gt 0 then the value of x is above the mean.
  • If z lt 0 then the value of x is below the mean.
  • If z 0 then the value of x is equal to the mean.

23
Find the z-score
  • If your height was 74.5 inches, find your
    z-score.
  • If your height was 54.5 inches find your z-score.

24
Finding Proportions and z-scores in the Normal
Distribution
  • If you scored a 15 on the second statistics quiz,
    what would your z-score be? Assume the
    distribution of scores was normal with N(22,4).
  • What proportion of the class scored higher than
    you? lower?

25
68-95-99.7 Rule for N(m,s)
  • 68 of the observations fall within one standard
    deviation of the mean m - s, m s
  • 95 of the observations fall within two standard
    deviations of the meanm - 2s, m 2s
  • 99.7 of the observations fall within three
    standard deviations of the mean m - 3s, m 3s

26
Lets Do It
  • LDI 6.4
  • LDI 6.5

27
Finding Percentiles for a Normal Distribution
  • Assume that IQ scores for 12 year olds is well
    modeled by N(100,16). What IQ score must a 12
    year old score to be placed in the top 5 of the
    distribution of IQ scores?

28
Big Deal!
  • Area Proportion
  • Position Data Value

29
Lets Do It
  • LDI 6.6
  • LDI 6.7

30
Assessing Normality
  • The best way to assess normality is with a normal
    quantile plot. If points on a normal quantile
    plot lie close to a straight line, the plot
    indicates that the data are normal. Systematic
    deviations from a straight line indicate a
    nonnormal distribution. Outliers appear as points
    that are far away from the overall pattern of the
    plot

31
Lets Do It
  • Do a histogram and a normal quantile plot for the
    AGE, Left hand, and Right hand data respectively.
    Assess normality for each of these distributions
    using these two plots.
  • LDI 6.8 by shape.

32
Finding a z - score when given a proportion
  • Use InvNorm(area, mu, sigma). This will always
    give the area in the left tail.
  • Find the z score for 95
  • Find the z score for 15
  • Find the z scores that correspond to Q1 and Q3

33
Homework 12
  • LDI, 6.10, 6.11, 6.13, 6.14

34
Lets Get Uniform
  • The second most commonly used continuous
    distribution is the uniform distribution.

a
b
35
Notation
  • If a variable X is uniformally distributed we
    will say X is U(a,b) where a and b are the
    endpoints of the range of values. That is a is
    the minimum and b is the maximum.

36
Lets Do It
  • LDI 6.9
  • LDI 6.10

37
Models of Discrete Variables
  • If the variable of interest is countable, then
    the distribution will be discrete.
  • For example, the number of car models recalled by
    a certain manufacturer will be countable and
    finite. The values that the variable can take on

38
Mass Function
  • A mass function is used as a model for a discrete
    variable. For each possible value, the mass
    function gives the proportion of units in the
    population having that value. Thus, the values of
    the mass function must be between 0 and 1 and add
    up to 1. Proportions are measured directly as the
    values of the function, not as areas under the
    function.

39
Example
  • Number of books in a backpack. Let X be the
    number of books a student at CR carries in their
    backpack. The model that describes this variable
    is given by

40
The Plot of the Mass Function
41
Lets Do It
  • LDI 6.11
  • LDI 6.13
  • LDI 6.14
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