AP Statistics Curriculum 2007 Infer 2Means Indep
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In the [[AP_Statistics_Curriculum_2007_Infer_2Means_Dep  previous section we discussed the inference on two paired random samples]]. Now, we show how to do inference on two independent samples.  In the [[AP_Statistics_Curriculum_2007_Infer_2Means_Dep  previous section we discussed the inference on two paired random samples]]. Now, we show how to do inference on two independent samples.  
  ===  +  ===Independent Samples Designs=== 
Independent samples designs refer to design of experiments or observations where all measurements are individually independent from each other within their groups and the groups are independent. The groups may be drawn from different populations with different distribution characteristics.  Independent samples designs refer to design of experiments or observations where all measurements are individually independent from each other within their groups and the groups are independent. The groups may be drawn from different populations with different distribution characteristics.  
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* '''Confidence Intervals''': <math>(1\alpha)100%</math> confidence interval for <math>\mu_1\mu_2</math> will be  * '''Confidence Intervals''': <math>(1\alpha)100%</math> confidence interval for <math>\mu_1\mu_2</math> will be  
  : <math>CI(\alpha): \overline{x}\overline{y} \pm z_{\alpha\over 2} SE(\overline{x}\overline{y})= \overline{x}\overline{y} \pm z_{\alpha\over 2} \sqrt{{1\over {n_1}} {\sum_{i=1}^{n_1}{(x_i\overline{x})^2\over n_11}} + {1\over {n_2}} {\sum_{i=1}^{n_2}{(y_i\overline{y})^2\over n_21}}}</math>. Note that the <math>SE(\overline{x} \overline{y})=\sqrt{SE(\overline{x})+SE(\overline{y})}</math>, as the samples are independent. Also, <math>z_{\alpha\over 2}</math> is the [[AP_Statistics_Curriculum_2007_Normal_Critical  critical value]] for a [[AP_Statistics_Curriculum_2007_Normal_Std Standard Normal]] distribution at <math>{\alpha\over 2}</math>.  +  : <math>CI(\alpha): \overline{x}\overline{y} \pm z_{\alpha\over 2} SE(\overline{x}\overline{y})= \overline{x}\overline{y} \pm z_{\alpha\over 2} \sqrt{{1\over {n_1}} {\sum_{i=1}^{n_1}{(x_i\overline{x})^2\over n_11}} + {1\over {n_2}} {\sum_{i=1}^{n_2}{(y_i\overline{y})^2\over n_21}}}</math>. Note that the <math>SE(\overline{x} \overline{y})=\sqrt{SE^2(\overline{x})+SE^2(\overline{y})}</math>, as the samples are independent. Also, <math>z_{\alpha\over 2}</math> is the [[AP_Statistics_Curriculum_2007_Normal_Critical  critical value]] for a [[AP_Statistics_Curriculum_2007_Normal_Std Standard Normal]] distribution at <math>{\alpha\over 2}</math>. 
====Small Samples====  ====Small Samples====  
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* '''Confidence Intervals''': <math>(1\alpha)100%</math> confidence interval for <math>\mu_1\mu_2</math> will be  * '''Confidence Intervals''': <math>(1\alpha)100%</math> confidence interval for <math>\mu_1\mu_2</math> will be  
  : <math>CI(\alpha): \overline{x}\overline{y} \pm t_{df, {\alpha\over 2}} SE(\overline{x}\overline{y})= \overline{x}\overline{y} \pm t_{df, {\alpha\over 2}} \sqrt{{1\over {n_1}} {\sum_{i=1}^{n_1}{(x_i\overline{x})^2\over n_11}} + {1\over {n_2}} {\sum_{i=1}^{n_2}{(y_i\overline{y})^2\over n_21}}}</math>. Note that the <math>SE(\overline{x} \overline{y})=\sqrt{SE(\overline{x})+SE(\overline{y})}</math>, as the samples are independent.  +  : <math>CI(\alpha): \overline{x}\overline{y} \pm t_{df, {\alpha\over 2}} SE(\overline{x}\overline{y})= \overline{x}\overline{y} \pm t_{df, {\alpha\over 2}} \sqrt{{1\over {n_1}} {\sum_{i=1}^{n_1}{(x_i\overline{x})^2\over n_11}} + {1\over {n_2}} {\sum_{i=1}^{n_2}{(y_i\overline{y})^2\over n_21}}}</math>. Note that the <math>SE(\overline{x} \overline{y})=\sqrt{SE^2(\overline{x})+SE^2(\overline{y})}</math>, as the samples are independent. 
: The ''degrees of freedom'' is: <math>df={( SE^2(\overline{x})+SE^2(\overline{y}))^2 \over {SE^4(\overline{x}) \over n_11} + {SE^4(\overline{y}) \over n_21} } \approx n_1+n_22.</math> Always round down the degrees of freedom to the next smaller integer. Also, <math>t_{df, {\alpha\over 2}}</math> is the [[AP_Statistics_Curriculum_2007_Normal_Critical  critical value]] for a [[AP_Statistics_Curriculum_2007_StudentsT Student's T]] distribution at <math>{\alpha\over 2}</math>.  : The ''degrees of freedom'' is: <math>df={( SE^2(\overline{x})+SE^2(\overline{y}))^2 \over {SE^4(\overline{x}) \over n_11} + {SE^4(\overline{y}) \over n_21} } \approx n_1+n_22.</math> Always round down the degrees of freedom to the next smaller integer. Also, <math>t_{df, {\alpha\over 2}}</math> is the [[AP_Statistics_Curriculum_2007_Normal_Critical  critical value]] for a [[AP_Statistics_Curriculum_2007_StudentsT Student's T]] distribution at <math>{\alpha\over 2}</math>.  
===Example===  ===Example===  
  Nine observations of surface soil [http://en.wikipedia.org/wiki/PH pH] were made at two different locations. Does the data suggest that the true mean soil [http://en.wikipedia.org/wiki/PH pH] values  +  Nine observations of surface soil [http://en.wikipedia.org/wiki/PH pH] were made at two different locations. Does the data suggest that the true mean soil [http://en.wikipedia.org/wiki/PH pH] values differs for the two locations? Formulate testable hypothesis and make inference about the effect of the treatment at <math>\alpha=0.05</math>. Check any necessary assumptions for the validity of your test. 
====Data in row format====  ====Data in row format====  
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: <math>t_o = {7.93227.4600 \over 0.081}=5.829</math>.  : <math>t_o = {7.93227.4600 \over 0.081}=5.829</math>.  
  : <math>pvalue=P(T_{(df=11)}>T_o=5.  +  : <math>pvalue=P(T_{(df=11)}>T_o=5.829)=0.00003</math> for this (twosided) test. Therefore, we '''can reject''' the null hypothesis at <math>\alpha=0.05</math>! The left white area at the tails of the T(df=11) distribution depicts graphically the probability of interest, which represents the strength of the evidence (in the data) against the Null hypothesis. In this case, this area is 0.00003, which is much smaller than the initially set [[AP_Statistics_Curriculum_2007_Hypothesis_Basics  Type I]] error <math>\alpha = 0.05</math> and we reject the null hypothesis. 
<center>[[Image:SOCR_EBook_Dinov_Infer_2Means_Indep_020908_Fig4.jpg600px]]</center>  <center>[[Image:SOCR_EBook_Dinov_Infer_2Means_Indep_020908_Fig4.jpg600px]]</center>  
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Both the confidence intervals and the hypothesis testing methods in the independentsample design require Normality of both samples. If the sample sizes are large (say >50), Normality is not as critical, as the [[AP_Statistics_Curriculum_2007_Limits_CLT  CLT]] implies the sampling distributions of the means are approximately Normal. If these parametric assumptions are invalid we must use a [[AP_Statistics_Curriculum_2007_NonParam_2MedianIndep  nonparametric (distribution free test)]], even if the latter is less powerful.  Both the confidence intervals and the hypothesis testing methods in the independentsample design require Normality of both samples. If the sample sizes are large (say >50), Normality is not as critical, as the [[AP_Statistics_Curriculum_2007_Limits_CLT  CLT]] implies the sampling distributions of the means are approximately Normal. If these parametric assumptions are invalid we must use a [[AP_Statistics_Curriculum_2007_NonParam_2MedianIndep  nonparametric (distribution free test)]], even if the latter is less powerful.  
  The plots below indicate that Normal assumptions are not unreasonable for these data, and hence we may be justified in using the two independent sample T  +  The plots below indicate that Normal assumptions are not unreasonable for these data, and hence we may be justified in using the two independent sample Ttests in this case. 
* [[AP_Statistics_Curriculum_2007_Normal_Prob#Assessing_Normality  QQNormal plot]] of the first sample:  * [[AP_Statistics_Curriculum_2007_Normal_Prob#Assessing_Normality  QQNormal plot]] of the first sample:  
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<hr>  <hr>  
+  
+  ===Detailed specifications for independentsample design studies===  
+  There are several different situations that arise in studies involving independent samples inference. These cases are separated by whether the sample sizes are equal and the sample variances (approximately) '''equivalent''' (i.e., <math>\frac{\sigma_1}{2}\le \sigma_2 \le 2\sigma_1</math>). The table below illustrates the differences in the statistical inference in each of these situations. This table uses the following notation:  
+  : Indexes 1 and 2 denote group one and group two, respectively  
+  : ''T'' is the test statistics  
+  : ''S'' is the standard error of the difference between two means  
+  : df = degrees of freedom  
+  : <math>n_1</math> and <math>n_2</math> are the number of observations in each group.  
+  <center>  
+  { class="wikitable" style="textalign:center; width:55%" border="1"  
+    
+  ! colspan="2" rowspan="2"Design  colspan="2"Sample Size  
+    
+  ! Equal  Unequal (different)  
+    
+   rowspan="2"Population Variance  Equivalent   
+  <math>T = \frac{\bar {X}_1  \bar{X}_2}{S_{X_1X_2} \cdot \sqrt{\frac{2}{n}}}</math>  
+  where  
+  <math>\ S_{X_1X_2} = \sqrt{\frac{1}{2}(S_{X_1}^2+S_{X_2}^2)}</math> is the [http://en.wikipedia.org/wiki/Pooled_standard_deviation pooled standard deviation] and df =2<math>n_1</math>−2  
+    
+  <math>T = \frac{\bar {X}_1  \bar{X}_2}{S_{X_1X_2} \cdot \sqrt{\frac{1}{n_1}+\frac{1}{n_2}}}</math>, where <math> S_{X_1X_2} = \sqrt{\frac{(n_11)S_{X_1}^2+(n_21)S_{X_2}^2}{n_1+n_22}}</math> is an estimator of the common standard deviation of the two samples and df=''n''<sub>1</sub> + ''n''<sub>2</sub> − 2  
+    
+   Nonequivalent (different)  colspan="2"  
+  <math>T = {\overline{X}_1  \overline{X}_2 \over s_{\overline{X}_1  \overline{X}_2}}</math>, where <math>s_{\overline{X}_1  \overline{X}_2} = \sqrt{{s_1^2 \over n_1} + {s_2^2 \over n_2}}  
+  </math> (not a pooled variance), <math> \mathrm{df} = \frac{(s_1^2/n_1 + s_2^2/n_2)^2}{(s_1^2/n_1)^2/(n_11) + (s_2^2/n_2)^2/(n_21)}</math>, which is called the [http://en.wikipedia.org/wiki/Welch%E2%80%93Satterthwaite_equation Welch–Satterthwaite equation]  
+  }  
+  </center>  
+  
+  ===EffectSizes===  
+  Effect size refers to a statistic calculated from a sample of data and are most commonly estimated with their corresponding errors. Sampledriven estimates of effect sizes are different from test statistics used in hypothesis testing as the former evaluate the strength of an apparent relationship and the latter assign a significance level reflecting whether the relationship could be due to chance. The effect size does not determine the significance level, or viceversa. Given a large enough sample size, a statistical comparison will always show a significant difference unless the population effect size is trivial (i.e., zero). For example, a sample Pearson correlation coefficient of 0.1 would be strongly statistically significant when the sample size is 1000, but would be insignificant if the sample size is just 10. Reporting only the significant pvalue from this analysis could be misleading if a correlation of 0.1 is too small to be of interest in a particular application.  
+  
+  ===Cohen's d===  
+  Cohen's ''d'' is the normalized difference between two means, i.e., the difference of means divided by a standard deviation for the data, i.e.,  
+  : \(d = \frac{\bar{x}_1  \bar{x}_2}{s}\).  
+  
+  Cohen's ''d'' is frequently used in estimating sample sizes.  
+  * A lower Cohen's ''d'' indicates the necessity of larger sample sizes, i.e., need to have larger cohorts to be able to assess/detect if there are betweengroup differences in the observed data.  
+  * The standard deviation \(s\) represents the population standard deviation (assuming the [[AP_Statistics_Curriculum_2007_Infer_BiVar#Comparing_Two_Variances_.28.5C.28.5Csigma_1.5E2_.3D_.5Csigma_2.5E2.5C.29.3F.29groups have approximately the same variances]]).  
+  : \(s = \sqrt{\frac{(n_11)s^2_1 + (n_21)s^2_2}{n_1+n_22}}\), where  
+  : \(s_1^2 = \frac{1}{n_11} \sum_{i=1}^{n_1} (x_{1,i}  \bar{x}_1)^2\) and \(s_2^2 = \frac{1}{n_21} \sum_{i=1}^{n_2} (x_{2,i}  \bar{x}_2)^2\).  
+  This is referred to as the maximum likelihood estimator "Cohen's ''d''", and it is related to [http://en.wikipedia.org/wiki/Effect_size#Hedges.27s_g Hedges's g] by a scaling factor.  
+  
+  * Example: observing the heights of male and female visitors in England, the data ([http://www.ic.nhs.uk/pubs/hlthsvyeng2004upd Aaron,Kromrey,& Ferron, 1998, November] from a 2004 UK representative sample of 2436 men and 3311 women): '''Men''': mean height = 1.75m; standard deviation = 89.9mm, and '''Women''': mean height = 1.61m; standard deviation = 69.0mm. The effect size (using Cohen's ''d'') would equal 1.72 (95% confidence interval: 1.66 – 1.78). This effectsize is large indicating that there is a consistent height difference, on average, between men and women visiting England.  
===[[EBook_Problems_Infer_2Means_IndepProblems]]===  ===[[EBook_Problems_Infer_2Means_IndepProblems]]=== 
Current revision as of 23:17, 14 February 2014
Contents

General AdvancePlacement (AP) Statistics Curriculum  Inferences about Two Means: Independent Samples
In the previous section we discussed the inference on two paired random samples. Now, we show how to do inference on two independent samples.
Independent Samples Designs
Independent samples designs refer to design of experiments or observations where all measurements are individually independent from each other within their groups and the groups are independent. The groups may be drawn from different populations with different distribution characteristics.
Background
 Recall that for a random sample {} of the process, the population mean may be estimated by the sample average, .
 The standard error of is given by .
Analysis Protocol for Independent Designs
To study independent samples, we would like to examine the differences between two group means. Suppose {} and {} represent the two independent samples. Then we want to study the differences of the two group means relative to the internal sample variations. If the two samples were drawn from populations that had different centers, then we would expect that the two sample averages will be distinct.
Large Samples
 Significance Testing: We have a standard nullhypothesis H_{o}:μ_{X} − μ_{Y} = μ_{o} (e.g., μ_{o} = 0). Then the test statistics is:
 .
 Confidence Intervals: (1 − α)100% confidence interval for μ_{1} − μ_{2} will be
 . Note that the , as the samples are independent. Also, is the critical value for a Standard Normal distribution at .
Small Samples
 Significance Testing: Again, we have a standard nullhypothesis H_{o}:μ_{X} − μ_{Y} = μ_{o} (e.g., μ_{o} = 0). Then the test statistics is:
 .
 The degrees of freedom (df) is: Always round down the degrees of freedom to the next smaller integer.
 Confidence Intervals: (1 − α)100% confidence interval for μ_{1} − μ_{2} will be
 . Note that the , as the samples are independent.
 The degrees of freedom is: Always round down the degrees of freedom to the next smaller integer. Also, is the critical value for a Student's T distribution at .
Example
Nine observations of surface soil pH were made at two different locations. Does the data suggest that the true mean soil pH values differs for the two locations? Formulate testable hypothesis and make inference about the effect of the treatment at α = 0.05. Check any necessary assumptions for the validity of your test.
Data in row format
Location 1  8.1,7.89,8,7.85,8.01,7.82,7.99,7.8,7.93 
Location 2  7.85,7.3,7.73,7.27,7.58,7.27,7.5,7.23,7.41 
Data in column format
Index  Location 1  Location 2 

1  8.10  7.85 
2  7.89  7.30 
3  8.00  7.73 
4  7.85  7.27 
5  8.01  7.58 
6  7.82  7.27 
7  7.99  7.50 
8  7.80  7.23 
9  7.93  7.41 
Mean  7.9322  7.4600 
SD  0.1005  0.2220 
Exploratory Data Analysis
We begin first by exploring the data visually using various SOCR EDA Tools.
 Line Chart of the two samples
 BoxAndWhisker Plot of the two samples
Inference
 Null Hypothesis: H_{o}:μ_{1} − μ_{2} = 0
 (Twosided) alternative Research Hypotheses: .
 Test statistics: We can use the sample summary statistics to compute the degrees of freedom and the Tstatistic
 The degrees of freedom is: So, we round down df=11.
 .
 p − value = P(T_{(df = 11)} > T_{o} = 5.829) = 0.00003 for this (twosided) test. Therefore, we can reject the null hypothesis at α = 0.05! The left white area at the tails of the T(df=11) distribution depicts graphically the probability of interest, which represents the strength of the evidence (in the data) against the Null hypothesis. In this case, this area is 0.00003, which is much smaller than the initially set Type I error α = 0.05 and we reject the null hypothesis.
 You can also use the SOCR Analyses (TwoIndependent Samples TTest) to carry out these calculations as shown in the figure below.
 This SOCR TwoSample Independent Ttest Activity provides additional handson demonstrations of the twosample hypothesis testing.
 95% = (1 − 0.05)100% (α = 0.05) Confidence interval:
 CI(μ_{1} − μ_{2}):
Conclusion
These data show that there is a statistically significant mean difference in the pH of Location 1 and Location 2 (p < 0.001).
Independent Ttest Validity
Both the confidence intervals and the hypothesis testing methods in the independentsample design require Normality of both samples. If the sample sizes are large (say >50), Normality is not as critical, as the CLT implies the sampling distributions of the means are approximately Normal. If these parametric assumptions are invalid we must use a nonparametric (distribution free test), even if the latter is less powerful.
The plots below indicate that Normal assumptions are not unreasonable for these data, and hence we may be justified in using the two independent sample Ttests in this case.
 QQNormal plot of the first sample:
 QQNormal plot of the second sample:
Detailed specifications for independentsample design studies
There are several different situations that arise in studies involving independent samples inference. These cases are separated by whether the sample sizes are equal and the sample variances (approximately) equivalent (i.e., ). The table below illustrates the differences in the statistical inference in each of these situations. This table uses the following notation:
 Indexes 1 and 2 denote group one and group two, respectively
 T is the test statistics
 S is the standard error of the difference between two means
 df = degrees of freedom
 n_{1} and n_{2} are the number of observations in each group.
Design  Sample Size  

Equal  Unequal (different)  
Population Variance  Equivalent 
where is the pooled standard deviation and df =2n_{1}−2 
, where is an estimator of the common standard deviation of the two samples and df=n_{1} + n_{2} − 2 
Nonequivalent (different) 
, where (not a pooled variance), , which is called the Welch–Satterthwaite equation 
EffectSizes
Effect size refers to a statistic calculated from a sample of data and are most commonly estimated with their corresponding errors. Sampledriven estimates of effect sizes are different from test statistics used in hypothesis testing as the former evaluate the strength of an apparent relationship and the latter assign a significance level reflecting whether the relationship could be due to chance. The effect size does not determine the significance level, or viceversa. Given a large enough sample size, a statistical comparison will always show a significant difference unless the population effect size is trivial (i.e., zero). For example, a sample Pearson correlation coefficient of 0.1 would be strongly statistically significant when the sample size is 1000, but would be insignificant if the sample size is just 10. Reporting only the significant pvalue from this analysis could be misleading if a correlation of 0.1 is too small to be of interest in a particular application.
Cohen's d
Cohen's d is the normalized difference between two means, i.e., the difference of means divided by a standard deviation for the data, i.e.,
 \(d = \frac{\bar{x}_1  \bar{x}_2}{s}\).
Cohen's d is frequently used in estimating sample sizes.
 A lower Cohen's d indicates the necessity of larger sample sizes, i.e., need to have larger cohorts to be able to assess/detect if there are betweengroup differences in the observed data.
 The standard deviation \(s\) represents the population standard deviation (assuming the groups have approximately the same variances).
 \(s = \sqrt{\frac{(n_11)s^2_1 + (n_21)s^2_2}{n_1+n_22}}\), where
 \(s_1^2 = \frac{1}{n_11} \sum_{i=1}^{n_1} (x_{1,i}  \bar{x}_1)^2\) and \(s_2^2 = \frac{1}{n_21} \sum_{i=1}^{n_2} (x_{2,i}  \bar{x}_2)^2\).
This is referred to as the maximum likelihood estimator "Cohen's d", and it is related to Hedges's g by a scaling factor.
 Example: observing the heights of male and female visitors in England, the data (Aaron,Kromrey,& Ferron, 1998, November from a 2004 UK representative sample of 2436 men and 3311 women): Men: mean height = 1.75m; standard deviation = 89.9mm, and Women: mean height = 1.61m; standard deviation = 69.0mm. The effect size (using Cohen's d) would equal 1.72 (95% confidence interval: 1.66 – 1.78). This effectsize is large indicating that there is a consistent height difference, on average, between men and women visiting England.
Problems
 SOCR Home page: http://www.socr.ucla.edu
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