Transcript Slide 1
Z Test & T Test
PRESENTED BY : GROUP 1
MD SHAHIDUR RAHMAN ROLL# 003
MD AMINUL ISLAM
ROLL# 007
MRS ROZINA KHANAM ROLL# 038
Sometimes measuring every single piece of
item is just not practical
Statistical methods have been developed to
solve these problems
Most practical way is to measure a sample of
the population
Some methods test hypotheses by comparison
Two most familiar statistical hypothesis tests
are :
T-test
Z-test
Cont’d
Z-test and T-test are basically the same
They compare between two means to
suggest whether both samples come from
the same population
There are variations on the theme for the Ttest
Having a sample and wish to compare it with
a known mean, single sample T-test is
applied
Cont’d
Both samples not independent and have
some common factor (geo location, before after), the paired sample T-test is applied
Two variations on the two sample T-test:
The first uses samples with unequal
variances
The second uses samples with equal
variances
Use a Z-Test when you know the mean (µ) of
the population we are comparing our sample
to and the standard deviation () of the
population we are comparing our sample to.
Use T-test for dependant samples when
subjects tested are matched in some way or
use T-test for independent samples when
subjects are not matched.
The Z-test compares the mean from a research
sample to the mean of a population. Details
(μ, σ) of the population must be known.
The t-test compares the means from two
research samples. Used when the population
details (μ, σ) are unknown.
A T-test is a statistical hypothesis test
The test statistic follows a Student’s Tdistribution if the null hypothesis is true
The T-statistic was introduced by W.S.
Gossett under the pen name “Student”
T-test also referred to as the “Student T-test”
T-test is most commonly used Statistical Data
Analysis procedure for hypothesis testing
It is straightforward and easy to use
It is flexible and adaptable to a broad range of
circumstances
Cont’d
T-test is best applied when:
Limited sample size (n < 30)
Variables are approximately normally
distributed
Variation of scores in the two groups is not
reliably different
If the populations’ standard deviation is
unknown
If the standard deviation is known, best to
use Z-test
Cont’d
Various T-tests and two most commonly applied
tests are :
One-sample T-test : Used to compare a sample
mean with the known population mean.
Paired-sample T-tests : Used to compare two
population means in the case of two samples
that are correlated. Paired sample t-test is
used in ‘before after’ studies, or when the
samples are the matched pairs, or the case is
a control study.
Data sets should be independent from each
other except in the case of the paired-sample ttest
Where n<30 the t-tests should be used
The distributions should be normal for the
equal and unequal variance t-test
The variances of the samples should be the
same for the equal variance t-test
Cont’d
All individuals must be selected at random
from the population
All individuals must have equal chance of
being selected
Sample sizes should be as equal as possible
but some differences are allowed
Assumptions: Matched pair, normal distributions, same
variance and observations must be independent of each
other.
Steps in the calculation:
1. Set up hypothesis: Two hypotheses
H0=Assumes that mean of two paired samples =
H1=Assumes that means of two paired samples
2. Select the level of significance: Normally 5%
3. Calculate the parameter: t = d / s2 / n ,
n-1 is df
4. Decision making: Compare calculated value (cv) with
table value (tv). If cv tv, reject H0 , If cv tv, accept H0 and
say that there is no significant mean difference between the
two paired samples in the paired sample t-test.
The Z-test is also applied to compare sample
and population means to know if there’s a
significant difference between them.
Z-tests always use:
Normal distribution
Ideally applied if the standard deviation is
known
Cont’d
Z-tests are often applied if :
Other statistical tests like t-tests are applied in
substitute
Incase of large samples (n > 30)
When t-test is used in large samples, the t-test
becomes very similar to the Z-test
Fluctuations that may occur in t-tests sample
variances, do not exist in Z-tests
Data points should be independent from each
other
Z-test is preferable when n is greater than 30
The distributions should be normal if n is low,
if n>30 the distribution of the data does not
have to be normal
The variances of the samples should be the
same
Cont’d
All individuals must be selected at random
from the population
All individuals must have equal chance of
being selected
Sample sizes should be as equal as possible
but some differences are allowed
Question #1: Does the research sample come
from a population with a known mean?
Example: Does prenatal exposure to drugs affect
the birth weight of infants?
Question #2: Is the population mean really what it
is claimed to be?
Examples: Does this type of car really run 12 kpl?
Does this diet pill really let people lose an average
of 25 pounds in 6 weeks?
Research question: Do Dhaka College students differ in
IQ scores from the average college student of BD?
Data : National average, = 114, = 15, N=150, X = 117
Steps in Calculation:
1. Set null and alternative hypothesis:(From data)
H0: = 114 , mean of the population from which we
got our sample is equal to 114.
H1: 114 , mean of the population from which we
got our sample is not equal to 114.
2. Select level of significance, generally 5%
3. State decision rules : If zobs < +1.96 or zobs > -1.96,
reject H0
4. Compute standard error of mean: x = /N = 1.225
5. Calculate z-value: z = X - µ / x = + 2.45
Cont’d
6. Compare observed z to decision rules, and make
decision to reject or not reject null.
2.45 > 1.96, so reject H0. so, more likely that the
sample mean is from some other population.
Statistically significant difference between
sample mean and the population mean.
7. If H0 rejected, compare sample mean, and make a
conclusion about the research question:
Observed mean was statistically significantly
greater than the population mean we compared it
to 117 > 114.
So, it can be concluded that Dhaka College
students have higher IQ test scores than the
average college students of BD.
Z-test is a statistical hypothesis test that follows a
normal distribution while T-test follows a Student’s Tdistribution.
A T-test is appropriate when handling small samples
(n<30) while a Z-test is appropriate when handling
moderate to large samples (n > 30).
T-test is more adaptable than Z-test since Z-test will
often require certain conditions to be reliable.
Additionally, T-test has many methods that will suit any
need.
T-tests are more commonly used than Z-tests.
Z-tests are preferred than T-tests when standard
deviations are known.
Q&A