Title: Review of Basic Statistical Concepts
1Review of Basic Statistical Concepts
2Inferential Statistics
- Introduction to Inference
- The purpose of inference is to draw conclusions
from data. - Conclusions take into account the natural
variability in the data, therefore formal
inference relies on probability to describe
chance variation. - We will go over the two most prominent types of
formal statistical inference - Confidence Intervals for estimating the value of
a population parameter. - Tests of significance which asses the evidence
for a claim. - Both types of inference are based on the sampling
distribution of statistics.
3Inferential Statistics
- Since both methods of formal inference are based
on sampling distributions, they require
probability model for the data. - The model is most secure and inference is most
reliable when the data are produced by a properly
randomized design. - When we use statistical inference we assume that
the data come from a randomly selected sample or
a randomized experiment.
4Inferential Statistics
- A market research firm interviews a random sample
of 2500 adults. Results 66 find shopping for
cloths frustrating and time consuming. - That is the truth about the 2500 people in the
sample. - What is the truth about almost 210 million
American adults who make up the population? - Since the sample was chosen at random, it is
reasonable to think that these 2500 people
represent the entire population pretty well.
5Inferential Statistics
- Therefore, the market researchers turn the fact
that 66 of sample find shopping frustrating into
an estimate that about 66 of all adults feel
this way. - Using a fact about a sample to estimate the truth
about the whole population is called statistical
inference. - To think about inference, we must keep straight
whether a number describes a sample or a
population.
6Inferential Statistics
- Parameters and Statistics
- A parameter is a number that describes the
population. - A parameter is a fixed number, but in practice we
do not know its value. - A statistic is a number that describes a sample.
- The value of a statistic is known when we have
taken a sample, but it can change from sample to
sample. - We often use statistic to estimate an unknown
parameter.
7Inferential Statistics
- Changing consumer attitudes towards shopping are
of great interest to retailers and makers of
consumer goods. - One trend of concern to marketers is that fewer
people enjoy shopping than in the past. - A market research firm conducts an annual survey
of consumer attitudes. - The population is all Us residents aged 18 and
over.
8ExampleConsumer attitude towards shopping
- A recent survey asked a nationwide random sample
of 2500 adults if they agreed or disagreed that
I like buying new cloths, but shopping is often
frustrating and time consuming. - Of the respondents, 1650 said they agreed.
- The proportion of the sample who agreed that
cloths shopping is often frustrating is -
9ExampleConsumer attitude towards shopping
- The number .66 is a statistic.
- The corresponding parameter is the proportion
(call it P) of all adult U.S. residents who would
have said agree if asked the same question. - We dont know the value of parameter P, so we use
as its estimate.
10Inferential Statistics
- If the marketing firm took a second random sample
of 2500 adults, the new sample would have
different people in it. - It is almost certain that there would not be
exactly 1650 positive responses. - That is, the value of will vary from sample
to sample. - Random samples eliminate bias from the act of
choosing a sample, but they can still be wrong
because of the variability that results when we
choose at random.
11Inferential Statistics
- The first advantage of choosing at random is that
it eliminates bias. - The second advantage is that if we take lots of
random samples of the same size from the same
population, the variation from sample to sample
will follow a predictable pattern. - All statistical inference is based on one idea
to see how trustworthy a procedure is, ask what
would happen if we repeated it many times.
12Inferential Statistics
- Suppose that exactly 60 of adults find shopping
for cloths frustrating and time consuming. - That is, the truth about the population is that
P 0.6. - What if we select an SRS of size 100 from this
population and use the sample proportion to
estimate the unknown value of the population
proportion P?
13Inferential Statistics
- To answer this question
- Take a large number of samples of size 100 from
this population. - Calculate the sample proportion for each
sample. - Make a histogram of the values of .
- Examine the distribution displayed in the
histogram for shape, center, and spread, ass well
as outliers or other deviations.
14Inferential Statistics
- The result of many SRS have a regular pattern.
- Here we draw 1000 SRS of size 100 from the same
population. - The histogram shows the distribution of the 1000
sample proportions
15Inferential Statistics
- Sampling Distribution
- The sampling distribution of a statistic is the
distribution of values taken by the statistic in
all possible samples of the same size from the
same population.
16ExampleMean income of American households
- What is the mean income of households in the
United States? - The Bureau of Labor Statistics contacted a random
sample of 55,000 households in March 2001 for the
current population survey. - The mean income of the 55,000 households for the
year 2000 was - 57,045 is a statistic that describes the CPS
sample households.
17ExampleMean income of American households
- We use it to estimate an unknown parameter, the
mean income of all 106 million American
households. - We know that would take several different
values if the Bureau of Labor Statistics had
taken several samples in March 2001. - We also know that this sampling variability
follows a regular pattern that can tell us how
accurate the sample result is likely to be. - That pattern obeys the laws of probability.
18Normal Density Curve
- These density curves, called normal curves, are
- Symmetric
- Single peaked
- Bell shaped
- Normal curves describe normal distributions.
19Normal Density Curve
- The exact density curve for a particular normal
distribution is described by giving its mean ?
and its standard deviation ?. - The mean is located at the center of the
symmetric curve and it is the same as the median. - The standard deviation ? controls the spread of a
normal curve.
20Normal Density Curve
21The 68-95-99.7 Rule
- Although there are many normal curve, They all
have common properties. In particular, all Normal
distributions obey the following rule. - In a normal distribution with mean ? and standard
deviation ? - 68 of the observations fall within ? of the mean
?. - 95 of the observations fall within 2? of ?.
- 99.7 of the observations fall within 3? of ?.
22The 68-95-99.7 Rule
23The 68-95-99.7 Rule
24Inferential Statistics
- Standardizing and z-score
- If x is an observation that has mean ? and
standard deviation ?, the standardized value of x
is - A standardized value is often called z-score.
25Standard Normal Distribution
- The standard Normal distribution is the Normal
distribution N(0, 1) with mean - ? 0 and standard deviation ? 1.
26Standard Normal Distribution
- If a variable x has any normal distribution N(?,
?) with mean ? and standard deviation ?, then the
standardized variable - has the standard Normal distribution.
27The Standard Normal Table
- Table A is a table area under the standard Normal
curve. The table entry for each value z is the
area under the curve to the left of z.
28The Standard Normal Table
- What the area under the standard normal curve to
the right of - z - 2.15?
- Compact notation
- z lt -2.15
- P 1 - .0158 .9842
29The Standard Normal Table
- What is the area under the standard normal curve
between z 0 and z 2.3? - Compact notation
- 0 lt z lt 2.3
- P .9893 - .5 .4893
30ExampleAnnual rate of return on stock indexes
- The annual rate of return on stock indexes (which
combine many individual stocks) is approximately
Normal. Since 1954, the SP 500 stock index has
had a mean yearly return of about 12, with
standard deviation of 16.5. Take this Normal
distribution to be the distribution of yearly
returns over a long period. The market is down
for the year if the return on the index is less
than zero. In what proportion of years is the
market down?
31ExampleAnnual rate of return on stock indexes
- State the problem
- Call the annual rate of return for S P
500-stocks Index x. The variable x has the N(12,
16.5) distribution. We want the proportion of
years with X lt 0. - Standardize
- Subtract the mean, then divide by the standard
deviation, to turn x into a standard Normal z
32ExampleAnnual rate of return on stock indexes
- Draw a picture to show the standard normal curve
with the area of interest shaded. - Use the table
- The proportion of observations less than
- - 0.73 is .2327.
- The market is down on an annual basis about
23.27 of the time.
33ExampleAnnual rate of return on stock indexes
- What percent of years have annual return between
12 and 50? - State the problem
- Standardize
34ExampleAnnual rate of return on stock indexes
- Draw a picture.
- Use table.
- The area between 0 and 2.30 is the area below
2.30 minus the area below 0. - 0.9893- .50 .4893
35Estimating with Confidence
- Community banks are banks with less than a
billion dollars of assets. There are
approximately 7500 such banks in the United
States. In many studies of the industry these
banks are considered separately from banks that
have more than a billion dollars of assets. The
latter banks are called large institutions. The
community bankers Council of the American bankers
Association (ABA) conducts an annual survey of
community banks. For the 110 banks that make up
the sample in a recent survey, the mean assets
are 220 (in millions of dollars). What can
we say about ?, the mean assets of all community
banks?
36Estimating with Confidence
- The sample mean is the natural estimator of
the unknown population mean ?. - We know that
- is an unbiased estimator of ?.
- The law of large numbers says that the sample
mean must approach the population mean as the
size of the sample grows. - Therefore, the value 220 appears to be a
reasonable estimate of the mean assets ? for all
community banks. - But, how reliable is this estimate?
37Estimating with Confidence
- An estimate without an indication of its
variability is of limited value. - Questions about variation of an estimator is
answered by looking at the spread of its sampling
distribution. - According to Central Limit theorem
- If the entire population of community bank assets
has mean ? and standard deviation ?, then in
repeated samples of size 110 the sample mean
approximately follows the N(?, ???110)
distribution
38Estimating with Confidence
- Suppose that the true standard deviation ? is
equal to the sample standard deviation s 161. - This is not realistic, although it will give
reasonably accurate results for samples as large
as 100. Later on we will learn how to proceed
when ? is not known. - Therefore, by Central Limit theorem. In repeated
sampling the sample mean is approximately
normal, centered at the unknown population mean
??,with standard deviation
39Confidence Interval
- A level C confidence interval for a parameter has
two parts - An interval calculated from the data, usually of
the form - Estimate ? margin of error
- A confidence Level C, which gives the probability
that the interval will capture the true parameter
value in repeated samples.
40Confidence Interval
- We use the sampling distribution of the sample
mean to construct a level C confidence
interval for the mean ? of a population. - We assume that data are a SRS of size n.
- The sampling distribution is exactly N(
) when the population has the N(?, ?)
distribution. - The central Limit theorem says that this same
sampling distribution is approximately correct
for large samples whenever the population mean
and standard deviation are ? and ?.
41Confidence Interval for a Population Mean
- Choose a SRS of size n from a population having
unknown mean ? and known standard deviation ?. A
level C confidence interval for ? is - Here z is the critical value with area C
between z and z under the standard Normal
curve. The quantity -
- is the margin of error. The interval is exact
when the population distribution is normal and is
approximately correct when n is large in other
cases.
42Example Banks loan to-deposit ration
- The ABA survey of community banks also asked
about the loan-to-deposit ratio (LTDR), a banks
total loans as a percent of its total deposits.
The mean LTDR for the 110 banks in the sample is - and the standard deviation is s
12.3. This sample is sufficiently large for us to
use s as the population ? here. Find a 95
confidence interval for the mean LTDR for
community banks.
43Tests of Significance
- Confidence intervals are appropriate when our
goal is to estimate a population parameter. - The second type of inference is directed at
assessing the evidence provided by the data in
favor of some claim about the population. - A significance test is a formal procedure for
comparing observed data with a hypothesis whose
truth we want to assess. - The hypothesis is a statement about the
parameters in a population or model. - The results of a test are expressed in terms of a
probability that measures how well the data and
the hypothesis agree.
44Example Banks net income
- The community bank survey described in previously
also asked about net income and reported the
percent change in net income between the first
half of last year and the first half of this
year. The mean change for the 110 banks in the
sample is Because the sample size
is large, we are willing to use the sample
standard deviation s 26.4 as if it were the
population standard deviation ?. The large sample
size also makes it reasonable to assume that
is approximately normal.
45Example Banks net income
- Is the 8.1 mean increase in a sample good
evidence that the net income for all banks has
changed? - The sample result might happen just by chance
even if the true mean change for all banks is ?
0. - To answer this question we asks another
- Suppose that the truth about the population is
that ? 0 (this is our hypothesis) - What is the probability of observing a sample
mean at least as far from zero as 8.1?
46Example Banks net income
- The answer is
-
- Because this probability is so small, we see that
the sample mean is incompatible with
a population mean of ? 0. - We conclude that the income of community banks
has changed since last year.
47Example Banks net income
- The fact that the calculated probability is very
small leads us to conclude that the average
percent change in income is not in fact zero.
Here is why. - If the true mean is ? 0, we would see a sample
mean as far away as 8.1 only six times per 10000
samples. - So there are only two possibilities
- ? 0 and we have observed something very
unusual, or - ? is not zero but has some other value that makes
the observed data more probable
48Example Banks net income
- We calculated a probability taking the first of
these choices as true (? 0 ). That probability
guides our final choice. - If the probability is very small, the data dont
fit the first possibility and we conclude that
the mean is not in fact zero.
49Tests of Significance Formal details
- The first step in a test of significance is to
state a claim that we will try to find evidence
against. - Null Hypothesis H0
- The statement being tested in a test of
significance is called the null hypothesis. - The test of significance is designed to assess
the strength of the evidence against the null
hypothesis. - Usually the null hypothesis is a statement of no
effect or no difference. We abbreviate null
hypothesis as H0.
50Tests of Significance Formal details
- A null hypothesis is a statement about a
population, expressed in terms of some parameter
or parameters. - The null hypothesis in our bank survey example is
- H0 ? 0
- It is convenient also to give a name to the
statement we hope or suspect is true instead of
H0. - This is called the alternative hypothesis and is
abbreviated as Ha. - In our bank survey example the alternative
hypothesis states that the percent change in net
income is not zero. We write this as - Ha ? ? 0
51Tests of Significance Formal details
- Since Ha expresses the effect that we hope to
find evidence for we often begin with Ha and then
set up H0 as the statement that the Hoped-for
effect is not present. - Stating Ha is not always straight forward.
- It is not always clear whether Ha should be
one-sided or two-sided. - The alternative Ha ? ? 0 in the bank net income
example is two-sided. - In any give year, income may increase or
decrease, so we include both possibilities in the
alternative hypothesis.
52Tests of Significance Formal details
- Test statistics
- We will learn the form of significance tests in a
number of common situations. Here are some
principles that apply to most tests and that help
in understanding the form of tests - The test is based on a statistic that estimate
the parameter appearing in the hypotheses. - Values of the estimate far from the parameter
value specified by H0 gives evidence against H0.
53Example banks income
- The test statistic
- In our banking example The null hypothesis is
H0 ? 0, and a sample gave the
. The test statistic for this problem is the
standardized version of -
- This statistic is the distance between the sample
mean and the hypothesized population mean in the
standard scale of z-scores. -
54Tests of Significance Formal details
- The test of significance assesses the evidence
against the null hypothesis and provides a
numerical summary of this evidence in terms of
probability. - P-value
- The probability, computed assuming that H0 is
true, that the test statistic would take a value
extreme or more extreme than that actually
observed is called the P-value of the test. The
smaller the p-value, the stronger the evidence
against H0 provided by the data. - To calculate the P-value, we must use the
sampling distribution of the test statistic.
55Example banks income
- The P-value
- In our banking example we found that the test
statistic for testing H0 ? 0 versus Ha ? ?
0 is -
- If the null hypothesis is true, we expect z to
take a value not far from 0. - Because the alternative is two-sided, values of z
far from 0 in either direction count ass evidence
against H0. So the P-value is
56Example banks income
- The p-value for banks income.
- The two-sided p-value is the probability (when H0
is true) that takes a value at least as far
from 0 as the actually observed value.
57Tests of Significance Formal details
- We know that smaller P-values indicate stronger
evidence against the null hypothesis. - But how strong is strong evidence?
- One approach is to announce in advance how much
evidence against H0 we will require to reject H0. - We compare the P-value with a level that says
this evidence is strong enough. - The decisive level is called the significance
level. - It is denoted be the Greek letter ?.
58Tests of Significance Formal details
- If we choose ? 0.05, we are requiring that the
data give evidence against H0 so strong that that
it would happen no more than 5 of the time (1 in
20) when H0 is true. - Statistical significance
- If the p-value is as small or smaller than ?, we
say that the data are statistically significant
at level ?.
59Tests of Significance Formal details
- You need not actually find the p-value to asses
significance at a fixed level ?. - You need only to compare the observed statistic z
with a critical value that marks off area ? in
one or both tails of the standard Normal curve.
60Test for a Population Mean
- There are four steps in carrying out a
significance test - State the hypothesis.
- Calculate the test statistic.
- Find the p-value.
- State your conclusion in the context of your
specific setting.
61Test for a Population Mean
- Once you have stated your hypotheses and
identified the proper test, you can do steps 2
and 3 by following a recipe. Here is the recipe - We have a SRS of size n drawn from a normal
population with unknown mean ?. We want to test
the hypothesis that ? has a specified value. Call
the specified value ?0. The Null hypothesis is - H0 ? ?0
62Test for a Population Mean
- The test is based on the sample mean .
because Normal calculations require standardized
variable, we will use as our test statistic the
standardized sample mean - This one-sample z statistic has the standard
Normal distribution when H0 is true. - The P-value of the test is the probability that z
takes a value at least as extreme as the value
for our sample. - What counts as extreme is determined by the
alternative hypothesis Ha.
63Example Blood pressures of executives
- The medical director of a large company is
concerned about the effects of stress on the
companys younger executives. According to the
National Center for health Statistics, the mean
systolic blood pressure for males 35 to 44 years
of age is 128 and the standard deviation in this
population is 15. The medical director examines
the records of 72 executives in this age group
and finds that their mean systolic blood pressure
is . Is this evidence that the
mean blood pressure for all the companys young
male executives is higher than the national
average?
64Example Blood pressures of executives
- Hypotheses
- H0 ? 128
- Ha ? gt 128
- Test statistic
- P-value
-
65Example Blood pressures of executives
- Conclusion
- About 14 of the time, a SRS of size 72 from the
general male population would have a mean blood
pressure as high as that of executive sample. The
observed is not significantly
higher than the national average.
66The t-distribution
- Suppose we have a simple random sample of size n
from a Normally distributed population with mean
? and standard deviation ?. - The standardized sample mean, or one-sample z
statistic - has the standard Normal distribution N(0, 1).
- When we substitute the standard deviation of the
mean (standard error) s /?n for the ?/?n, the
statistic does not have a Normal distribution.
67The t-distribution
- It has a distribution called t-distribution.
- The t-distribution
- Suppose that a SRS of size n is drawn from a N(?,
?) population. Then the one sample t statistic - has the t-distribution with n-1 degrees of
freedom. - There is a different t distribution for each
sample size. - A particular t distribution is specified by
giving the degrees of freedom. -
68The t-distribution
- We use t(k) to stand for t distribution with k
degrees of freedom. - The density curves of the t-distributions are
symmetric about 0 and are bell shaped. - The spread of t distribution is a bit greater
than that of standard Normal distribution. - As degrees of freedom k increase, t(k) density
curve approaches the N(0, 1) curve.
69The one Sample t Confidence Interval
- Suppose that an SRS of size n is drawn from a
population having unknown mean ?. A level C
confidence interval for ? is - Where t is the value for the t (n-1) density
curve with area C between t and t. The margin
of error is - This interval is exact when the population
distribution is Normal and is approximately
correct for large n in other cases.