Questions

What are the characteristics of the T distribution?

What are the characteristics of the T distribution?

The T distribution, also known as the Student’s t-distribution, is a type of probability distribution that is similar to the normal distribution with its bell shape but has heavier tails. T distributions have a greater chance for extreme values than normal distributions, hence the fatter tails.

What assumption must you make about the population distribution in order to conduct the t-test in A and B )?

Most parametric tests start with the basic assumption on the distribution of populations. The conditions required to conduct the t-test include the measured values in ratio scale or interval scale, simple random extraction, normal distribution of data, appropriate sample size, and homogeneity of variance.

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What are the assumptions underlying the test of significance?

The assumptions underlying the test of significance are: There is a linear relationship in the population that models the average value of y for varying values of x. In other words, the expected value of y for each particular value lies on a straight line in the population.

What is the assumption made for performing the hypothesis test with T distribution?

What is the assumption made for performing the hypothesis test with T distribution? Explanation: For testing of Hypothesis with T distribution it is assumed that the distribution follows a normal distribution. Hence if the Alternative Hypothesis is true and Null Hypothesis is rejected then no error occurs.

What is the use of t-distribution?

The t-distribution is used when data are approximately normally distributed, which means the data follow a bell shape but the population variance is unknown. The variance in a t-distribution is estimated based on the degrees of freedom of the data set (total number of observations minus 1).

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What is a t-distribution in psychology?

Student’s t-distribution. Student’s t-distribution is a family of distributions that have a similar appearance as the normal distribution. This leads to a distribution that is more “spread out” than the normal distribution. As the degrees of freedom increases, the t-distribution approaches the normal distribution.

What assumption must you make about the population distribution?

The core element of the Assumption of Normality asserts that the distribution of sample means (across independent samples) is normal. In technical terms, the Assumption of Normality claims that the sampling distribution of the mean is normal or that the distribution of means across samples is normal.

How do you find assumptions in statistics?

Assumptions for Statistical Tests

  1. Normality: Data have a normal distribution (or at least is symmetric)
  2. Homogeneity of variances: Data from multiple groups have the same variance.
  3. Linearity: Data have a linear relationship.
  4. Independence: Data are independent.

Does t-test assume normal distribution?

The t-test assumes that the means of the different samples are normally distributed; it does not assume that the population is normally distributed. By the central limit theorem, means of samples from a population with finite variance approach a normal distribution regardless of the distribution of the population.

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What are the assumptions of a normal distribution?

If your data comes from a normal distribution, the box will be symmetrical with the mean and median in the center. If the data meets the assumption of normality, there should also be few outliers. A normal probability plot showing data that’s approximately normal.

What are the assumptions of a two sample t-test?

Two-sample t-test assumptions Data in each group must be obtained via a random sample from the population. Data in each group are normally distributed. Data values are continuous. The variances for the two independent groups are equal.

Which of the following is one of the assumptions of a one sample t-test?

The assumptions of the one-sample t-test are: 1. The data are continuous (not discrete). 2. The data follow the normal probability distribution.