centrail limit theorem Flashcards

1
Q

Multiple Choice Questions:

  1. Type 1 error is also known as:
    a) False positive
    b) False negative
    c) True positive
    d) True negative
  2. Type 2 error is also known as:
    a) False positive
    b) False negative
    c) True positive
    d) True negative
  3. Which error occurs when the null hypothesis is mistakenly rejected?
    a) Type 1 error
    b) Type 2 error
    c) Both type 1 and type 2 errors
    d) Neither type 1 nor type 2 error

Fill in the Blanks:

  1. Type 1 error is the incorrect rejection of a _______ hypothesis.
  2. Type 2 error is the failure to reject a _______ hypothesis when it is false.

Critical Questions:

  1. Why is type 1 error also referred to as a false positive? How does it impact the interpretation of results?
  2. What are some potential consequences of making a type 2 error in a scientific study or research?
  3. Can you provide real-world examples where type 1 and type 2 errors can have significant implications? How can these errors be minimized or controlled in such scenarios?
A

Answers:

Multiple Choice Questions:

  1. Answer: a) False positive
  2. Answer: b) False negative
  3. Answer: a) Type 1 error

Fill in the Blanks:

  1. Type 1 error is the incorrect rejection of a null hypothesis.
  2. Type 2 error is the failure to reject a null hypothesis when it is false.

Critical Questions:

  1. Type 1 error is referred to as a false positive because it occurs when a significant effect is detected, suggesting that something is present or true when it is not. This can lead to incorrect conclusions and potentially misleading results, especially in scientific research or medical studies where the implications can be significant.
  2. Making a type 2 error in a scientific study or research means failing to detect a true effect or relationship that actually exists. This can result in missed opportunities, incorrect conclusions, and potential harm, such as failing to identify an effective treatment or intervention.
  3. Examples of type 1 and type 2 errors can be found in various fields, including medicine, criminal justice, and quality control. For instance, in medical testing, a type 1 error can occur when a healthy person is incorrectly diagnosed as having a disease. On the other hand, a type 2 error can occur when a sick person is mistakenly labeled as healthy. To minimize these errors, researchers often use rigorous study designs, appropriate sample sizes, and robust statistical methods to ensure reliable and accurate conclusions.
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2
Q

Multiple Choice Questions:

  1. The Central Limit Theorem states that the distribution of sample means, calculated from multiple random samples, will approximate a:
    a) Uniform distribution
    b) Exponential distribution
    c) Normal distribution
    d) Poisson distribution
  2. The Central Limit Theorem applies to samples that are:
    a) Dependent on each other
    b) Selected using convenience sampling
    c) Random and independent
    d) Determined by stratified sampling
  3. The Central Limit Theorem allows us to make inferences about a population based on the:
    a) Mode of the sample data
    b) Median of the sample data
    c) Mean of the sample data
    d) Range of the sample data

Subjective Questions:

  1. Explain the practical significance of the Central Limit Theorem in statistical analysis. How does it help researchers make conclusions about a population based on sample data?
  2. Discuss the conditions required for the Central Limit Theorem to apply. What happens if these conditions are not met?
  3. Provide a real-life example where the Central Limit Theorem can be applied. Explain how the theorem helps in analyzing and interpreting the data.
  4. The Central Limit Theorem states that the sample means will approximate a normal distribution regardless of the original population distribution. Discuss the implications of this theorem in hypothesis testing and confidence interval estimation.
A

Answers:

Multiple Choice Questions:
1. Answer: c) Normal distribution
2. Answer: c) Random and independent
3. Answer: c) Mean of the sample data

Subjective Questions:
1. The Central Limit Theorem is significant in statistical analysis as it allows researchers to make conclusions about a population based on sample data. It states that when multiple random samples are taken from any population, the distribution of the sample means will approximate a normal distribution. This enables the use of properties associated with the normal distribution, such as constructing confidence intervals and performing hypothesis testing. It provides a reliable method for generalizing findings from a sample to a larger population.

  1. The Central Limit Theorem applies under certain conditions: the samples must be random and independent, and the sample size should be sufficiently large. If these conditions are not met, the theorem may not hold, and the distribution of sample means may not approximate a normal distribution. Violations of independence or small sample sizes
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3
Q
  1. A random sample of 100 students has a sample mean of 85 and a standard deviation of 10. What is the 90% confidence interval for the population mean (𝜇) if the critical value (Z) is 1.645?
  2. A random sample of 75 employees has a sample mean of $500 and a standard deviation of $50. What is the 99% confidence interval for the population mean (𝜇) if the critical value (Z) is 2.576?
  3. A random sample of 60 patients has a sample mean of 72 and a standard deviation of 6.5. What is the 95% confidence interval for the population mean (𝜇) if the critical value (Z) is 1.96?
  4. A random sample of 80 cars has a sample mean of 25 mpg and a standard deviation of 2.5 mpg. What is the 98% confidence interval for the population mean (𝜇) if the critical value (Z) is 2.33?

Subjective Question:

Explain the concept of a confidence interval and its interpretation in the context of estimating the population mean. Use the given sample mean, standard deviation, and the critical value to calculate a 95% confidence interval for the population mean in the provided example.

A

Answers:

  1. The 90% confidence interval for the population mean (𝜇) is calculated as follows:
    Lower bound = sample mean - (critical value * standard deviation) = 85 - (1.645 * 10) = 68.55
    Upper bound = sample mean + (critical value * standard deviation) = 85 + (1.645 * 10) = 101.45
    Therefore, the 90% confidence interval is (68.55, 101.45).
  2. The 99% confidence interval for the population mean (𝜇) is calculated as follows:
    Lower bound = sample mean - (critical value * standard deviation) = 500 - (2.576 * 50) = 376.2
    Upper bound = sample mean + (critical value * standard deviation) = 500 + (2.576 * 50) = 623.8
    Therefore, the 99% confidence interval is (376.2, 623.8).
  3. The 95% confidence interval for the population mean (𝜇) is calculated as follows:
    Lower bound = sample mean - (critical value * standard deviation) = 72 - (1.96 * 6.5) = 59.06
    Upper bound = sample mean + (critical value * standard deviation) = 72 + (1.96 * 6.5) = 84.94
    Therefore, the 95% confidence interval is (59.06, 84.94).
  4. The 98% confidence interval for the population mean (𝜇) is calculated as follows:
    Lower bound = sample mean - (critical value * standard deviation) = 25 - (2.33 * 2.5) = 19.175
    Upper bound = sample mean + (critical value * standard deviation) = 25 + (2.33 * 2.5) = 30.825
    Therefore, the 98% confidence interval is (19.175, 30.825).

Subjective Question:
A confidence interval provides a range of values within which we estimate the population mean to lie. In this case, with a 95% confidence level, it means that if we were to repeatedly sample from the population and construct confidence intervals, approximately 95% of these intervals would contain the true population mean. In the given example, the 95% confidence interval for the population mean is (59.06, 84.94) based on the sample mean of 72, standard deviation of 6.5, and a critical value of 1.96. This means that we are 95% confident that the true population mean falls within this range.

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4
Q

Frame multiple choice, fill in the blanks, and analytical questions for the concept of significance level:

  1. The significance level (α) represents:
    A) The probability of committing a Type II error
    B) The probability of committing a Type I error
    C) The probability of correctly rejecting the null hypothesis
    D) The probability of obtaining a statistically significant result
  2. The standard significance level commonly used in research is:
    A) α = 0.10
    B) α = 0.05
    C) α = 0.01
    D) α = 0.001
  3. Researchers accept a 5% chance of committing a Type I error, which means:
    A) They accept a 5% chance of finding a false positive
    B) They accept a 5% chance of finding a false negative
    C) They accept a 5% chance of correctly rejecting the null hypothesis
    D) They accept a 5% chance of incorrectly accepting the null hypothesis
  4. Using a more conservative significance level (e.g., α = 0.01), compared to α = 0.05, would:
    A) Decrease the Type II error rate
    B) Increase the Type II error rate
    C) Increase the Type I error rate
    D) Decrease the power of the statistical test

Fill in the blanks:

  1. The probability of committing a Type I error is denoted by ________ (symbol).
  2. Researchers typically accept a ________ (value) chance of committing a Type I error.
  3. The significance level is defined before ________.

Subjective question:

Explain the concept of significance level and its role in hypothesis testing. Discuss the trade-off between Type I and Type II errors and how the choice of significance level can impact these errors. Provide an example to illustrate your explanation.

A

Answers:

Multiple Choice:

  1. B) The probability of committing a Type I error
  2. B) α = 0.05
  3. A) They accept a 5% chance of finding a false positive
  4. C) Increase the Type I error rate

Fill in the blanks:

  1. α (alpha)
  2. 5%
  3. sampling

Subjective question:
The significance level (α) is the threshold chosen by researchers to determine the probability of committing a Type I error. A Type I error occurs when the null hypothesis is rejected incorrectly, leading to a false positive result. By convention, a significance level of 0.05 (5%) is commonly used, indicating that researchers accept a 5% chance of finding a false positive.

The significance level is determined before the sampling process begins to ensure objectivity in hypothesis testing. It helps researchers control the balance between Type I and Type II errors. While a smaller significance level (e.g., α = 0.01) reduces the risk of Type I errors, it increases the risk of Type II errors, which occur when the null hypothesis is incorrectly accepted.

For example, suppose a researcher conducts a hypothesis test to determine if a new drug is effective in treating a certain condition. Using a significance level of α = 0.05, if the p-value obtained from the statistical analysis is less than 0.05, the researcher would reject the null hypothesis and conclude that the drug is effective. However, if α were set to a more stringent level, such as α = 0.01, the researcher would require stronger evidence to reject the null hypothesis and claim effectiveness.

The choice of significance level depends on the research context, the consequences of Type I and Type II errors, and the desired level of confidence in the study findings.

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5
Q

Frame multiple choice, fill in the blanks, and analytical questions for the concept of statistical decision:

  1. The calculated p-value represents:
    A) The probability of committing a Type II error
    B) The probability of committing a Type I error
    C) The probability of correctly rejecting the null hypothesis
    D) The probability of obtaining a statistically significant result
  2. If the p-value is less than or equal to the significance level (α), it indicates:
    A) There is sufficient evidence to reject the null hypothesis
    B) There is insufficient evidence to reject the null hypothesis
    C) The null hypothesis is proven to be true
    D) The alternative hypothesis is proven to be true
  3. The term “statistical significance” refers to:
    A) The certainty of the research findings
    B) The magnitude of the effect size
    C) The reliability of the statistical test used
    D) The rejection of the null hypothesis based on the p-value

Fill in the blanks:

  1. The calculated p-value is compared to the significance level (α) to make a ________ decision.
  2. If the p-value is greater than the significance level (α), it indicates ________ evidence to reject the null hypothesis.
  3. Rejecting the null hypothesis based on the p-value does not prove that the null hypothesis is ________.

Subjective question:

Explain the process of making a statistical decision based on the calculated p-value. Discuss the role of the significance level (α) and the interpretation of the results. Provide an example to illustrate your explanation.

A

Answers:

Multiple Choice:

  1. B) The probability of committing a Type I error
  2. A) There is sufficient evidence to reject the null hypothesis
  3. D) The rejection of the null hypothesis based on the p-value

Fill in the blanks:

  1. The calculated p-value is compared to the significance level (α) to make a decision.
  2. If the p-value is greater than the significance level (α), it indicates insufficient evidence to reject the null hypothesis.
  3. Rejecting the null hypothesis based on the p-value does not prove that the null hypothesis is true.

Subjective question:
The process of making a statistical decision based on the calculated p-value involves comparing the p-value to the significance level (α). If the p-value is less than or equal to α, typically set at 0.05, there is sufficient evidence to reject the null hypothesis. This means that the observed data is unlikely to have occurred by chance under the assumption of the null hypothesis. On the other hand, if the p-value is greater than α, there is insufficient evidence to reject the null hypothesis, and we fail to find statistically significant evidence to support the alternative hypothesis.

For example, let’s consider a study that investigates whether a new teaching method improves student performance. The null hypothesis (H0) states that there is no difference in performance between the new teaching method and the conventional method. The alternative hypothesis (H1) suggests that the new method leads to better performance. After collecting and analyzing the data, a p-value of 0.03 is obtained. Since the p-value is less than the significance level (α = 0.05), we would reject the null hypothesis and conclude that there is sufficient evidence to support the alternative hypothesis. This implies that the new teaching method is likely to have a positive effect on student performance.

It’s important to note that rejecting the null hypothesis based on the p-value does not prove that the null hypothesis is true. It simply means that the evidence against the null hypothesis is statistically significant. The interpretation of the results should consider the context, effect size, and other relevant factors in drawing meaningful conclusions.

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6
Q

Multiple Choice:

  1. In a population of adult men’s heights, random samples of size 50 have means ranging from 175 cm to 181 cm. Assuming the true population mean is 178 cm, what is the probability of drawing a sample with a mean of 176.5 cm or less? (Assume s = 7 cm)
    A) 0.1587
    B) 0.3413
    C) 0.5000
    D) 0.8413
  2. The means of random samples (n = 50) from a population of adult men’s heights ranged from 175 cm to 181 cm. If the true population mean is assumed to be 178 cm, what is the probability of obtaining a sample mean of 176.5 cm or less? (Assume s = 7 cm)
    A) 0.1587
    B) 0.3413
    C) 0.5000
    D) 0.8413

Fill in the blanks:

  1. In a population of adult men’s heights, if the true population mean is 178 cm and the standard deviation is 7 cm, the probability of drawing a sample with a mean of 176.5 cm or less can be calculated using the ___________ distribution.
  2. The area under the curve to the left of 176.5 cm represents the probability of obtaining a sample mean ___________ or less.

Answers:

A

Multiple Choice:

  1. A) 0.1587
  2. A) 0.1587

Fill in the blanks:

  1. normal
  2. 176.5 cm
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