Statistical Hypotheses
& Hypothesis Testing
Statistical HypothesesThere are two types of statistical hypotheses.
Null Hypothesis The null hypothesis, denoted by H0, assumes the sample observations
result purely from chance. Alternative Hypothesis The alternative hypothesis, denoted by H1, states the counter-assumption that sample observations are influenced by some non-random cause.
Note:The Alternate Hypothesis is always the logical opposite of the Null Hypothesis.
Example: Suppose we wanted to determine whether a coin was fair and balanced.A null hypothesis might be that half the flips would be Heads andhalf of the flips would be Tails.
The alternative hypothesis would be that the number (percent) of Heads and Tails would be very different.
Symbolically, these hypotheses would be expressed as: H0: р = 0.5 where р = Probability of Heads H1: р ≠ 0.5
Hypothesis Testing Hypothesis testing is a decision making process about
accepting or rejecting a statement (assumption) regarding a
population parameter.
Frequently, hypothesis testing is applied to a assumption
about a population mean.
For example, test the assumption that the population
mean μ is equal to 120 versus μ is not equal to 120;
i.e., H0: μ = 120 versus H1: μ ≠ 120.
References
David Harper - Bionic Turtle
http://www.bionicturtle.com/learn/article/type_i_versus_type_ii_errors_9_minute_tutorial/
http://www.bionicturtle.com/learn/article/hypothesis_testing_9_minute_screencast/
http://www.bionicturtle.com/learn/article/hypothesis_testing_9_minute_screencast/
Null and Alternate Hypothesis
http://www.ganesha.org/spc/hyptest.html#hypothesis
Hypothesis Testing
Hypothesis TestingSuppose we believe the average systolic blood pressure of healthy
adults is normally distributedwith mean μ = 120 and variance σ2 = 50.
To test this assumption, we sample the blood pressure of 42
randomly selected adults. Sample statistics are
Mean ¿ = 122.4
Variance s2 = 50.3
Standard Deviation s = √50.3 = 7.09
Standard Error = s / √n = 7.09 / √42 = 1.09
Central Limit TheoremThe distribution of all sample means of sample size n from a
Normal Distribution (μ, σ2) is a normally distributed with Mean = μ Variance = σ2 / n
For our case:
Mean μ = 120Variance σ2 / n = 50 / 42 = 1.19
Note: Theoretically we can test the hypothesis regarding the mean and the hypothesis regarding the variance; however one usually presumes the sample variances are stable from sample to sample and any one sample variance is an unbiased estimator of the population variance. As such, hypothesis testing is most frequently associated with testing assumptions regarding the population mean.
Hypothesis TestingTest the assumption
H0: μ = 120 vs. H1: μ ≠ 120using a level of significance α = 5%
Note: If our sample came from the assumed population with mean μ = 120, then we would expect 95% of all sample means of sample size n = 42 to be within ± Zα/2 = ± 1.96
a / 2 = 2.5%a / 2 = 2.5%
Confidence Interval 95%Level of Significance a = 5%
+Za/2 = +1.96-Za/2 = -1.96
95%
Calculate Upper and Lower Bounds on ¿
¿Lower = μ – Zα/2 (s /√n) = 120 – 1.96(1.09) =117.9
¿Upper = μ + Zα/2 (s /√n) = 120 + 1.96(1.09) =122.1
a / 2 = 2.5%a / 2 = 2.5%
Confidence Interval 95%Level of Significance a = 5%
+Za/2 = +1.96-Za/2 = -1.96
¿ Lower = 117.9 ¿ Upper = 122.1
μ = 120
95%
Hypothesis Testing Comparisons
Compare our sample mean ¿ = 122.4
To the Upper and Lower Limits.
a / 2 = 2.5%a / 2 = 2.5%
Confidence Interval 95%Level of Significance a = 5%
+Za/2 = +1.96-Za/2 = -1.96
¿ Lower = 117.9 ¿ Upper = 122.1
μ = 120
95%
¿ = 122.4
Hypothesis Testing ConclusionsNote:
Sample mean ¿ = 122.4 falls outside of the 95% Confidence Interval.
We can reach one of two logical conclusions:
One, that we expect this to occur for 2.5% of the
samples from a population with mean μ = 120.
Two, our sample came from a population with a mean μ ≠ 120.
Since 2.5% = 1/40 is a rather “rare” event; we opt for the
conclusion that our original null hypothesis is false and
we reject H0: μ = 120 and therefore accept vs. H1: μ ≠ 120.
Confidence Interval 95%Level of Significance a = 5%
¿ = 122.4μ ≠ 120
Conclude μ ≠ 120
Alternate MethodRather than compare the sample mean to the 95% lower and
upper bounds, one can use the Z Transformation for the sample
mean and compare the results with ± Zα/2.
Z0 = ( ¿ – μ ) / (s / √n) = (122.4 – 120) / 1.09 = 2.20
a / 2 = 2.5%a / 2 = 2.5%
Confidence Interval 95%Level of Significance a = 5%
+Za/2 = +1.96-Za/2 = -1.96
95%
Z0 = 2.20
Alternate Method
Note: Since Z0= 2.20 value exceeds Zα/2 =1.96, we
reach the same conclusion as before;
Reject H0: μ = 120 and Accept H1: μ ≠ 120.
Alternate Method - ExtendedWe can quantify the probability (p-Value) of
obtaining a test statistic Z0 at least as large as our sample Z0.
P( |Z0| > Z ) = 2[1- Φ (|Z0|)]
p-Value = P( |2.20| > Z ) = 2[1- Φ (2.20)]
p-Value = 2(1 – 0.9861) = 0.0278 = 2.8%
Compare p-Value to Level of Significance
If p-Value < α, then reject null hypothesis
Since 2.8% < 5%, Reject H0: μ = 120 and conclude μ ≠ 120.
Hypothesis Testing Errors
Hypothesis TestingSuppose we believe the average systolic blood pressure of healthyadults is normally distributed with mean μ = 120 and variance σ2 = 50.To test this assumption, we sample the blood pressure of 42randomly selected adults. Sample statistics are
Mean ¿ = 122.4Variance s2 = 50.3Standard Deviation s = √50.3 = 7.09Standard Error = s / √n = 7.09 / √42 = 1.09
Z0 = ( ¿ – μ ) / (s / √n) = (122.4 – 120) / 1.09 = 2.20
a / 2 = 2.5%a / 2 = 2.5%
Confidence Interval 95%Level of Significance a = 5%
+Za/2 = +1.96-Za/2 = -1.96
95%
Z0 = 2.20
Conclusion (Critical Value)
Since Z0= 2.20 exceeds Zα/2 = 1.96,
Reject H0: μ = 120 and Accept H1: μ ≠ 120.
Conclusion (p-Value)We can quantify the probability (p-Value) of
obtaining a test statistic Z0 at least as large as our sample Z0.
P( |Z0| > Z ) = 2[1- Φ (|Z0|)]
p-Value = P( |2.20| > Z ) = 2[1- Φ (2.20)]
p-Value = 2(1 – 0.9861) = 0.0278 = 2.8%
Compare p-Value to Level of Significance
If p-Value < α, then reject null hypothesis
Since 2.8% < 5%, Reject H0: μ = 120 and conclude μ ≠ 120.
Confidence Interval = 99%Level of Significance α = 1%
Z0 = ( ¿ – μ ) / (s / √n) = (122.4 – 120) / 1.09 = 2.20
Zα/2 = +2.58
a / 2 = 0.5%a / 2 = 0.5%
Confidence Interval 99%Level of Significance a = 1%
+Za/2 = +2.58-Za/2 = -2.58
99%
Z0 = 2.20
Conclusion (Critical Value)
Since Z0= 2.20 is less than Zα/2 =2.58,
Fail to Reject H0: μ = 120 and conclude
there is insufficient evidence to say H1: μ ≠ 120.
Conclusion (p-Value)We can quantify the probability (p-Value) of
obtaining a test statistic Z0 at least as large as our sample Z0.
P( |Z0| > Z ) = 2[1- Φ (|Z0|)]
p-Value = P( |2.20| > Z ) = 2[1- Φ (2.20)]
p-Value = 2(1 – 0.9861) = 0.0278 = 2.8%
Compare p-Value to Level of Significance
If p-Value < α, then reject null hypothesis
Since 2.8% > 1%, Fail to Reject H0: μ = 120 and conclude
there is insufficient evidence to say H1: μ ≠ 120.
Hypothesis Testing Conclusions
As can be seen in the previous example, our conclusions
regarding the null and alternate hypotheses are
dependent upon the sample data and the level of
significance.
Given different values of sample mean and the sample
variance or given a different level of significance,
we may come to a different conclusion.
Null Hypotheses
And
Alternate Hypotheses
Hypothesis TestingHypotheses are always about the population and never about the sample.
The true value of a hypothesis can never be known or confirmed.
Conclusions regarding hypotheses are never absolute and as such are susceptible to some degree of definable/calculable risk of error.
Type I Error Rejecting H0 when H0 is True
Type II Error Failing to Reject H0 when H0 is False
Probability of Type I Error = αProbability of Type II Error = β
Power of the Test
Probability of Correctly Rejecting a False Null Hypothesis = 1 - β
Probability of Correctly Rejecting H0 when H1 is true = 1 - β
Probability of Rejecting H0 when H0 is False = 1 - β
Probability of Accepting H1 when H1 is True = 1 - β
Probability of Type I and Type II Errors
The Level of Significance α establishes the Probability of a Type I Error.
The Probability of a Type II Error depends on the magnitude of the
true mean and the sample size.
Probability of Type II Errors Consider
H0: μ = μ0
H1: μ ≠ μ0
Suppose the null hypothesis is false and the true magnitude of the mean is μ = μ0 + δ.
and therefore , that is to say
Z0 is normally distributed with mean and variance 1.
0 0 00
X X X ( ) nZ
n n n n
0
nZ N ,1
n
Probability of Type II Error
2 2
n nZ Z
Applied Statistics and Probability for Engineers, 3ed, Montgomery & Runger, Wiley 2003