Title: Introduction to Statistics
1Introduction to Statistics
- Statistics Terminology
- Scales of Measurements
- Measures of Central Tendencies
- Skewness
- Measures of Variability
2Statistics The Course
- Descriptive Statistics
- Deals with describing data that has been
collected.
- Inferential Statistics
- Deals with data collected from samples so one can
generalize to populations.
3Populations vs Samples
- Population
- A population consists of all members of some
specified group. -
- Sample
- A sample is a subset of a population. It has
the same characteristics as the population.
4Parameters vs Statistics
- Parameters
- A measure of a characteristic of an entire
population.
- Statistic
- A measure of a characteristic of a sample.
5Parameters vs Statistics
In research, we obtain information about
population parameters by using information from
samples that represent the population. We apply
the laws of probability to the data collected
from the samples to generalize to the population..
6Scales of MeasurementsThere are four commonly
used.
- Each scale is represented by numbers.
- Each scale carries a different set of
information. - Each scale is manipulated differently.
Knowing the distinctions between the scales is
important in descriptive and inferential
statistics.
7Nominal
- Used to identify
- Used in place of a name
- No quantitative value
- Examples male 1 female 2
- social security number
8Ordinal
- Has the nominal characteristics
- Used to indicate order (rank)
- Not interested in distance between rank/order
only greater than or less than - Examples First place, second place
- Strongly agree, agree, undecided, etc.
9Interval
- Has the nominal and ordinal characteristics
- Both order and distance between have meaning
- Intervals between numbers are equal
- Examples IQ scores
-
10Ratio
- Has the nominal, ordinal, and interval
characteristics - A value exists that measures the complete absence
of the object measured. - Examples Height 10 feet is twice as tall as 5
feet. - Weight 50 is twice as heavy as 25 .
11Measures of Central Tendencies
- What is happening around the center of the data?
- Mean the arithmetic average
- Median the point where 50 of the data is above
and 50 is below - Mode occurs most frequently
12The Mode
- Occurs most frequently
- Is the simplest of the central tendencies.
- No computation is required.
- Very unstable information about the data
- Only average that can be used with nominal data.
13The Median
- The point where 50 of the data is above and 50
is below - Data is sorted and middle point is found.
- Is not sensitive to extreme scores.
- It is not appropriate to average median scores.
14The Mean
- The arithmetic average
- Add the values (data) and divide by the number of
values - Takes into account the value of every data point.
- Is considered the most stable central tendency.
15Measures of Variability
- Value describes the distribution of the data.
- Examples
- Range
- Standard Deviation
16The Range
- Simplest measure of variability
- (Highest value minus the lowest value) plus 1
- Unreliable because it is based on only two values
17The Standard Deviation
- Very useful measure of variability
- Shows the difference between a raw score and the
mean of a set of data. - Includes all data in the computation.
18Skewness
- Describes visually the distribution of the data.
- Examples
- Symmetrical distribution two halves of data are
mirror images. - Skewed distribution Data is pulled by extreme
scores to the left or right.
19Symmetrical Distribution
20Skewed DistributionsHint The tail points to the
skew.
Negatively Skewed Median right of mean More
higher scores
Positively Skewed Median left of mean More lower
scores