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Hypotheses for a statistical test are given, followed by several possible confidence intervals for different samples. In each case, use the confidence interval to state a conclusion of the test for that sample and give the significance level used. Hypotheses: \(H_{0}: \rho=0\) vs \(H_{a}: \rho \neq 0\). In addition, in each case for which the results are significant, give the sign of the correlation. (a) \(95 \%\) confidence interval for \(\rho: 0.07\) to 0.15 . (b) \(90 \%\) confidence interval for \(\rho:-0.39\) to -0.78 . (c) \(99 \%\) confidence interval for \(\rho:-0.06\) to 0.03 .

Short Answer

Expert verified
At a 95% confidence level, the correlation is significantly positive. At a 90% confidence level, the correlation is significantly negative. At a 99% confidence level, there is no significant correlation.

Step by step solution

01

Interpretation of case (a)

For the 95% confidence interval from 0.07 to 0.15, since the null hypothesis \(H_{0}: \rho = 0\) falls outside this interval, the null hypothesis is rejected and the alternative hypothesis \(H_{a}: \rho \neq 0\) is accepted. The 95% confidence level implies a 5% significance level. The positive interval indicates a positive correlation.
02

Interpretation of case (b)

For the 90% confidence interval from -0.39 to -0.78, since the null hypothesis \(H_{0}: \rho = 0\) falls outside this interval, the null hypothesis is rejected and the alternative hypothesis \(H_{a}: \rho \neq 0\) is accepted. The 90% confidence level implies a 10% significance level. The negative interval indicates a negative correlation.
03

Interpretation of case (c)

For the 99% confidence interval from -0.06 to 0.03, since the null hypothesis \(H_{0}: \rho = 0\) falls within this interval, the null hypothesis is not rejected. The 99% confidence level implies a 1% significance level.

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Key Concepts

These are the key concepts you need to understand to accurately answer the question.

Confidence Interval
Understanding the concept of a confidence interval is essential in statistics, as it gives us a range of values within which we expect the true population parameter, such as the mean or a correlation coefficient, to lie. The confidence interval is constructed using sample data and provides an estimated range that is likely to contain this true parameter. For instance, a 95% confidence interval for a correlation coefficient suggests that if we were to take 100 different samples and calculate a confidence interval for each, we would expect about 95 of those intervals to contain the true correlation coefficient.

Notably, the wider the confidence interval, the less precise is our estimate, while a narrower interval indicates a more precise estimate. However, confidence levels can't be chosen arbitrarily; they are tied to the significance level, which represents the probability of rejecting a true null hypothesis. So, a 95% confidence interval corresponds to a 5% significance level. This concept underscores the balance between confidence and precision in statistical hypothesis testing.
Null Hypothesis
The null hypothesis (\(H_0\)) in statistical testing is a statement postulating the absence of a relationship or effect. In the context of correlation, the null hypothesis typically claims that there is no association between two variables, which means the correlation coefficient (\rho) is zero. The purpose of the null hypothesis is to provide a baseline or standard that observed data can be tested against.

When we look at our exercise case (a), we see that the null hypothesis suggests there is no correlation (\rho = 0). It is only when the evidence is strong enough that we reject this hypothesis in favor of the alternative hypothesis. In contrast, if the confidence interval includes zero, as in case (c), we do not have sufficient evidence to reject the null hypothesis, implying that the observed correlation could be due to random chance.
Alternative Hypothesis
The alternative hypothesis (\(H_a\) or \(H_1\) is the opposite of the null hypothesis (\(H_0\) and represents a new theory or belief we're testing for. It proposes that a true effect or relationship exists; for correlation, it would imply that there is an actual association between the variables being studied (\rho eq 0).

In our case study, the alternative hypothesis is accepted in scenarios where the confidence interval does not include zero (as in cases a and b). This leads us to conclude that there is indeed a significant correlation, positive or negative, between the variables. Acceptance of the alternative hypothesis often prompts further research or action based on the newfound association.
Significance Level
The significance level is a threshold that determines when to reject the null hypothesis. It's denoted by alpha (\(\alpha\) and commonly set at 0.05, 0.01, or 0.10. The significance level corresponds inversely to the confidence level: for example, a 95% confidence interval has a 5% significance level.

A smaller significance level indicates a stricter criterion to reject the null hypothesis, requiring stronger evidence against it. However, setting a very low significance level increases the risk of not detecting a true effect (Type II error). In our example, case (a) uses a 5% significance level associated with a 95% confidence interval, indicating we have strong evidence against the null hypothesis, while case (c)'s 1% significance level means we require more substantial evidence to reject the null hypothesis.
Correlation Coefficient
The correlation coefficient, often represented by \(\rho\) in population studies or r in sample studies, is a measure of the strength and direction of the linear relationship between two variables. It ranges from -1 to 1, where values closer to -1 indicate a strong negative linear correlation, values closer to 1 indicate a strong positive linear correlation, and values near zero suggest no linear correlation.

Through the exercise cases, we can determine signs of the correlation: case (a) has a positive correlation as the confidence interval lies above zero, while case (b) indicates a negative correlation because the interval is entirely below zero. The magnitude of these intervals is also telling; the further away from zero, the stronger the correlation.

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Most popular questions from this chapter

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