Statistics Anyone - PowerPoint PPT Presentation

1 / 14
About This Presentation
Title:

Statistics Anyone

Description:

Ordinal. Nominal. Related t-test. Wilcoxon Matched-Pair test. McNemar ... Ordinal rank order of scores (e.g. position in race) ... – PowerPoint PPT presentation

Number of Views:36
Avg rating:3.0/5.0
Slides: 15
Provided by: sonicartsr
Category:

less

Transcript and Presenter's Notes

Title: Statistics Anyone


1
Statistics Anyone?
  • Matthew Rodger

2
Descriptive Statistics
3
  • Mean (M) is the sum of data points divided by the
    number of points ?X/N
  • Mode is the value (or values) of the most
    frequent score(s)
  • Median is the central score when all scores are
    arranged ordinally
  • Variance
  • Standard Deviation

4
Standard Deviation (s.d.) and Standard Error
(s.e.)
  • Deviation of a score is distance from the mean of
    scores in a sample (X - M)
  • Sum of squares is the sum of the squares for all
    score deviations in the sample ?(X M)2
  • Variance is the mean squared deviation
  • (?(X M)2) / (N-1)
  • (N-1) used in place of N when
    estimating population parameters from a sample
  • Standard Deviation (s.d.) is the square root of
    the variance v((?(X M)2) / (N-1))
  • Standard Error (s.e.) is the Standard Deviation
    divided by the square root of the number of
    scores s.d./vN

5
Probability and significance
  • Examples
  • Adults in the Duple and Triple groups differed
    significantly in the proportion choosing the
    duple test stimulus, as measured by an
    independent samples t-test, t(14) 3.92, p
    .001 (Phillips-Silver Trainor, 2006)
  • This similarity was revealed because the
    navigation factor exercised no effect (F(1, 7)
    0317, p 0.59) (Segond, et al., 2005)
  • The first example indicates that the probability
    of observing these results by chance is 0.1
    (below the required 5) and hence statistically
    significant
  • In the second example, the probability of finding
    these results by chance is greater than 5 and so
    this factor did not have a significant effect on
    the dependent variable

6
Inferential Statistics
7
Choosing a statistical test
8
Nature of Dependent Variables
  • Nominal discrete categories (e.g. gender)
  • Ordinal rank order of scores (e.g. position in
    race)
  • Interval equal intervals measurements lacking
    real zero point (e.g. temperature in Celsius)
  • Ratio equal interval measurement with real zero
    point (e.g. temperature in Kelvin)

9
Nature of Independent Variables
  • Independent measures each subject contributes a
    score to one level (condition) of the independent
    variable
  • Related (dependent) measures subjects
    contribute scores to more than one level
    (condition) of independent variable
  • Sample matching is grouping independent samples
    together to use in related measures design

10
Parametric/Non-Parametric Data
  • Assumptions made for parametric data
  • Normal data distribution explained further down
  • Homogenity of variance variance should not be
    substantially different between sample groups or
    vary systematically across variables
  • Interval data see above
  • Independence no interaction between subjects in
    design

11
Normal Distribution
12
Skewed Distribution
13
If Parametric Assumptions are violated, use
corresponding non-parametric test (usually,
corresponding test for ordinal data)
14
Thank You
Write a Comment
User Comments (0)
About PowerShow.com