Title: STATISTICS A BRIEF INTRODUCTION
1STATISTICS A BRIEF INTRODUCTION
2Why Learn AboutStatistics?
- Statistics provides tools that are used in
- Quality control
- Research
- Measurements
- Sports
3In This Course
- We will use some of these tools in the lab, so
will introduce now some - Ideas
- Vocabulary
- A few calculations
4Variation
- There is variation in the natural world
- People vary
- Measurements vary
- Plants vary
- Weather varies
5Variation Cont
- Variation among organisms is the basis of natural
selection and evolution
6Example
- 100 people take a drug and 75 of them get better
- 100 people dont take the drug but 68 get better
without it - Did the drug help?
7Variability Is A Problem
- There is variation in peoples response to the
illness - There is variation in peoples response to the
drug - So its difficult to figure out if the drug
helped - Statistics helps with this type of problem
8Statistics
- Provides mathematical tools to help arrive at
meaningful conclusions in the presence of
variability
9Statistics Cont
- Might help researchers decide if a drug is
helpful or not - This is a more advanced application of statistics
than we will get into
10Statistics Cont
- Lets begin with some basic vocabulary
11Definitions
- Population
- Entire group of events, objects, results, or
individuals, all of whom share some unifying
characteristic
12Populations
- Examples
- All of a persons red blood cells
- All the enzyme molecules in a test tube
- All the college graduates in the U.S.
13Sample
- Sample Portion of the whole population that
represents the whole population
14Sample Cont
- Example It is virtually impossible to measure
the level of hemoglobin in every cell of a
patient - Rather, take a sample of the patients blood and
measure the hemoglobin level
15Population
SAMPLE
16More About Samples
- Representative sample sample that truly
represents the variability in the population --
good sample
17Representative Sample
- A sample is random if all members of the
population have an equal chance of being drawn - A sample is independent if the choice of one
member does not influence the choice of another - Samples need to be taken randomly and
independently in order to be representative
18Sampling
- How we take a sample is critical and often
complex - If sample is not taken correctly, it will not be
representative
19Example
- How would you sample a field of corn?
- Think about how to get a good sample
20Variables
- Variables
- Characteristics of a population (or a sample)
that can be observed or measured - Called variables because they can vary among
individuals
21Variables
- Examples
- Blood hemoglobin levels
- Activity of enzymes
- Test scores of students
22Variables Cont
- A population or sample can have many variables
that can be studied - Example
- Same population of six year old children can be
studied for - Height
- Shoe size
- Reading level
- Etc.
23Data
- Data Observations of a variable (singular is
datum) - May or may not be numerical
- Examples
- Heights of all the children in a sample
(numerical) - Lengths of insects (numerical)
- Pictures of mouse kidney cells (not numerical)
24Always Uncertainty
- Even if you take a sample correctly, there is
uncertainty when you use a sample to represent
the whole population - Various samples from the same population are
unlikely to be identical - So, need to be careful about drawing conclusions
about a population, based on a sample there is
always some uncertainty
25Sample Size
- If a sample is drawn correctly, then, the larger
the sample, the more likely it is to accurately
reflect the entire population - If it is not done correctly, then a bigger sample
may not be any better - How does this apply to the corn field?
26Inferential Statistics
- A branch of statistics
- Wont talk about it much
- Deals with tools to handle the uncertainty of
using a sample to represent a population - Helps with problems like the drug study,
mentioned earlier
27Descriptive Statistics
- Chapter 11 in your textbook
- Descriptive statistics is one area within
statistics - The is the type of statistics we will use
28Descriptive Statistics
- Provides tools to DESCRIBE, organize and
interpret variability in our observations of the
natural world
29Example Problem
- In a quality control setting, 15 vials of product
from a batch are tested. What is the sample?
What is the population? - In an experiment, the effect of a carcinogenic
compound was tested on 2000 lab rats. What is
the sample? What is the population?
30Example Problem Cont
- A clinical study of a new drug was tested on
fifty patients. What is the sample? What is the
population?
31Answers
- 15 vials, the sample, were tested for QC. The
population is all the vials in the batch. - The sample is the rats that were tested. The
population is probably all lab rats. - The sample is the 50 patients tested in the
trial. The population is all patients with the
same condition.
32Example Problem
- An advertisement says that 2 out of 3 doctors
recommend Brand X. - What is the sample? What is the population?
- Is the sample representative?
- Does this statement ensure that Brand X is better
than competitors?
33Answer
- Many abuses of statistics relate to poor
sampling. The population of interest is all
doctors. No way to know what the sample is. The
sample could have included only relatives of
employees at Brand X headquarters, or only
doctors in a certain area. Therefore the
statement does not ensure that the majority of
doctors recommend Brand X. It certainly does not
ensure that Brand X is best.
34Describing Data Sets
- Draw a sample from a population
- Measure values for a particular variable
- Result is a data set
35Data Sets
- Individuals vary, therefore the data set has
variation - Data without organization is like letters that
arent arranged into words
36Data Sets Cont
- Numerical data can be arranged in ways that are
meaningful or that are confusing or deceptive
37Descriptive Statistics
- Provides tools to organize, summarize, and
describe data in meaningful ways - Example
- Exam scores for a class is the data set
- What is the variable of interest?
- We can summarize the data with the class
average, what does this tell you?
38Descriptive Statistics Cont
- A measure that describes a data set, such as the
average, is sometimes called a statistic - Average gives information about the center of the
data
39Median And Mode
- Two other statistics that give information about
the center of a set of data - Median is the middle value
- Mode is most frequent value
40Measures OfCentral Tendency
- Measures that describe the center of a data set
are called Measures of Central Tendency - Mean, median, and the mode
41Hypothetical Data Set
- 2 5 6 7 8 3 9 3 10 4 7 4 6 11 9
- Simplest way to organize them is to put in
order - 2 3 3 4 4 5 6 6 7 7 8 9 9 10 11
- By inspection they center around 6 or 7
42Mean
- Mean is basically the same as the average
- Add all the numbers together and divide
- by number of values
- 2 3 3 4 4 5 6 6 7 7 8 9 9 10 11
- What is the mean for this data set?
43Nomenclature
- Mean 6.3 read X bar
- The observations are called X1, X2, etc.
- There are 15 observations in this example, so the
last one is X15 - Mean Xi
- ___n
- Where n number of values
44Example
- Data set
- 2 3 3 4 5 6 7 8 9
- What is the mode?
- What is the median?
45Mean Of A Population Versus The Mean Of A Sample
- Statisticians distinguish between the mean of a
sample and the mean of a population - The sample mean is
- The population mean is
- It is rare to know the population mean, so the
sample mean is used to represent it
46Dispersion
- Data sets A and B both have the same average
- A 4 5 5 5 6 6
- B 1 2 4 7 8 9
- But are not the same
- A is more clumped around the center of the
central value - B is more dispersed, or spread out
47Measures Of Dispersion
- Measures of central tendency do not describe how
dispersed a data set is - Measures of dispersion do they describe how much
the values in a data set vary from one another
48Measures Of Dispersion
- Common measures of dispersion are
- Range
- Variance
- Standard deviation
- Coefficient of variation
49Calculations Of Dispersion
- Measures of dispersion, like measures of central
tendency, are calculated - Range is the difference between the lowest and
highest values in a data set
50Calculations Of Dispersion Cont
- Example
- 2 3 3 4 4 5 6 6 7 7 8 9 9 10 11
- Range 11-2 9 or, 2 to 11
- Range is not particularly informative because it
is based only on two values from the data set
51Calculating Variance And Standard Deviation
- Variance and standard deviation measure of the
average amount by which each observation varies
from the mea - Example
- 4cm 5cm 6cm 7cm 7cm 7cm 9cm 11cm
- This is a data set, the lengths of 8 insects
52Calculating Variance And Standard Deviation
- 4cm 5cm 6cm 7cm 7cm 7cm 9cm 11cm
- The mean is 7 cm
- How much do they vary from one another?
- Intuitively might see how much each point varies
from the mean - This is called the deviation
53Calculation OfDeviations From Mean
- 4cm 5cm 6cm 7cm 7cm 7cm 9cm 11cm
- Value-Mean Deviation
- in cm
- (4-7) - 3
- (5-7) - 2
- (6-7) - 1
- (7-7) 0
- (7-7) 0
- (7-7) 0
- (9-7) 2
- (11-7) 4
54Calculation OfDeviations From Mean Cont
- Value-Mean
Deviation - (in cm)
- (4-7) - 3
- (5-7) - 2
- (6-7) - 1
- (7-7) 0
- (7-7) 0
- (7-7) 0
- (9-7) 2
- (11-7) 4
- Sum of deviations 0
55Calculation OfDeviations From Mean Cont
- Sum of the deviations from the mean is always
zero - Therefore, cannot use the average deviation to
describe the dispersion in the data set - Therefore, mathematicians decided to square each
deviation so they will get positive numbers
56Calculation OfDeviations From Mean Cont
- Value-Mean Deviation Squared Deviation
- (in cm)
- (4-7) - 3 9 cm2
- (5-7) - 2 4 cm2
- (6-7) - 1 1 cm2
- (7-7) 0 0
- (7-7) 0 0
- (7-7) 0 0
- (9-7) 2 4 cm2
- (11-7) 4 16 cm2
- total squared deviation sum of
squares 34 cm2
57Variance
- Total squared deviation (sum of squares) divided
by the number of measurements - 34 cm2 4.25 cm2
- 8
58Standard Deviation
- Square root of the variance
- 4.25 cm2 2.06 cm
- Note that the SD has the same units as the data
- Note also that the larger the variance and SD,
the more dispersed are the data
59Variance And SDOf Population Vs Sample
- Statisticians distinguish between the mean and SD
of a population and a sample - The variance of a population is called sigma
squared, s2 - Variance of a sample is S2
60Variance And SDOf Population Vs Sample Cont..
- The standard deviation of a population is called
sigma, s - Standard deviation of a sample is S or SD
61Standard Deviation Of A Sample
(Xi - )2 n -1
62Example Problem
- A biotechnology company sells cultures of E.
coli. The bacteria are grown in batches that are
freeze dried and packaged into vials. Each vial
is expected to have 200 mg of bacteria. A QC
technician tests a sample of vials from each
batch and reports the mean weight and SD.
63Example Problem Cont
- Batch Q-21 has a mean weight of 200 mg and a SD
of 12 mg. Batch P-34 has a mean weight of 200 mg
and as SD of 4 mg. Which lot appears to have
been packaged in a more controlled fashion?
64Answer
- The SD can be interpreted as an indication of
consistency. The SD of the weights of Batch P-34
is lower than of Batch Q-21. Therefore, the
weights for vials for Batch P-34 are less
dispersed than those for Batch Q-21 and Batch
P-34 appears to have been better controlled.
65FrequencyDistributions
- So far, talked about calculations to describe
data sets - Now talk about graphical methods
66The Weights Of 175 Field Mice
- (in grams)
- 19 22 20 24 22 19 27 20 21 22 20 22 24 24 21 2
5 19 21 20 23 25 22 19 17 20 20 21 25 21 22 27 22
19 22 23 22 25 22 24 23 20 21 22 23 21 24 19 21 22
22 25 22 23 20 23 22 22 26 21 24 23 21 25 20 23 2
0 21 24 23 18 20 23 21 22 22 25 21 23 22 24 20 21
23 21 19 21 24 20 22 23 20 22 19 22 24 20 25 21 22
22 24 21 22 23 25 21 19 19 21 23 22 22 24 21 23 2
2 23 28 20 23 26 21 22 24 20 21 23 20 22 23 21 19
20 26 22 20 21 22 23 24 20 21 23 22 24 21 23 22 2
4 21 22 24 20 22 21 23 26 21 22 23 24 21 23 20 20
21 25 22 20 22 21 21 23 22
67The Weights Of 175 Field Mice Cont
- This table of raw data is hard to interpret
- Begin by making a frequency table
68FrequencyDistribution Table Of The Weights Of
Field Mice
- Weight Frequency
- (in grams)
- 1
- 11
- 25
- 25
- 34
- 40
- 27
- 19
- 10
- 4
- 2
- 1
-
69Frequency Table
- Tells us that most mice have weights in the
middle of the range, a few are lighter or heavier - The word distribution refers to a pattern of
variation for a given variable
70Frequency Table Cont
- It is important to be aware of patterns, or
distributions, that emerge when data are
organized by frequency - The frequency distribution can be illustrated as
a frequency histogram
71Frequency Histogram
- X axis is units of measurement, in this example,
weight in grams - Y axis is the frequency of a particular value
- For example, 11 mice weighed 19 g
- The values for these 11 mice are illustrated as a
bar
72Frequency Histogram Cont
- Note that when the mouse data were collected, a
mouse recorded as 19 grams actually weighed
between 18.5 g and 19.4 g. - Therefore the bar spans an interval of 1 gram
73FIRST FOUR BARS
F R E Q U E N C Y
17 18 19 20
WEIGHTS IN GRAMS
74Constructing AFrequency Histogram
- Divide the range of the data into intervals
- It is simplest to make each interval (class) the
same width - No set rule as to how many intervals to have
- For example, length data might be 1-9 cm, 10-19
cm, 20-29 cm and so on
75Constructing AFrequency Histogram Cont
- Count the number of observations that are in each
interval - Make a frequency table with each interval and the
frequency of values in that interval - Label the axes of a graph with the intervals on
the X axis and the frequency on the Y axis
76Constructing AFrequency Histogram Cont
- Draw in bars where the height of a bar
corresponds to the frequency of the value - Center the bars above the midpoint of the class
interval - For example, if the interval is 0-9 cm, then the
bar should be centered at 4.5 cm
77NormalFrequency Distribution
- If weights of very many lab mice were measured,
would likely have a frequency distribution that
looks like a bell shape, also called the normal
distribution
78NormalDistribution
F R E Q U E N C Y
WEIGHT
79Normal Distribution
- Very important
- Examples
- Heights of humans
- Measure same thing over and over, measurements
will have this distribution
80Calculations AndGraphical Methods
- Related
- The center of the peak of a normal curve is the
mean, the median and the mode - Values are evenly spread out on either side of
that high point
81Calculations AndGraphical Methods Cont
- The width of the normal curve is related to the
SD - The more dispersed the data, the higher the SD
and the wider the normal curve - Exact relationship is in text, not go into it
this semester
82Example Problem
- A technician customarily performs a certain
assay. The results of 8 typical assays are - 32.0 mg 28.9 mg 23.4 mg 30.7 mg
- 23.6 mg 21.5 mg 29.8 mg 27.4 mg
- If the technician obtains a value of 18.1 mg,
should he be concerned? Base your answer on
estimation. - Perform statistical calculations to see if the
answer if out of the range of two SDs.
83Answer
- The average appears to be in the mid-twenties and
hovers around 5. Therefore, 18.1 mg appears a
bit low. - Mean 27.16 mg, SD 3.87 mg. The mean 2SD
is 19.4 mg, so 18.1 mg appears to be outside the
range and should be investigated