Central Limit Theorem - Complete

Subject: Business Statistics

Overview

The central limit components, examples of them, and various types will be taught to the students here.

No matter how the population distribution is shaped, the Central Limit Theorem essentially just states that as the sample size increases, the sampling distribution of all sampling means tends to resemble a normal distribution. This statement is particularly accurate for sample sizes greater than 30. All of this simply implies that as samples are collected, especially large samples, the sample means graph will begin to resemble a normal distribution.
Here is a graphic and mathematical representation of what the Central Limit Theorem says. One of the most basic test kinds is demonstrated in the image below: fair dice rolling. The probability that the shape of the distribution of the means will now resemble a normal distribution graph increases with the number of times you roll the dice.

The Central Limit Theorem and Means

The fact that the population mean will be the average of our sample means is a crucial part of the Central Limit Theorem. In plainer language, sum the means from each of your samples, get the average, and the result is the mean for our actual population. The true standard deviation for our population can be determined by averaging all of the standard deviations in our sample. It's an incredibly helpful phenomena that enables us to precisely forecast population characteristics.

Central Limit Theorem Examples

It is quite likely that a Central Limit Theorem word challenge or problem will include the phrase "assuming the variable is normally distributed" or something very similar. You will receive the following examples of central limit theorems:

  • A population (i.e. 29-year-old females, seniors between 78 and 80, all registered vehicles, all dog owners)
  • An average (i.e. 125 kilograms, 22 hours, 15 years, $15.76)
  • A standard deviation (i.e. 14..4 kilograms, 6 hours, 122 months, $195.42)
  • A sample size (i.e. 18fe males, 19 seniors, 99 cars, 120 households)

There are basically two distinct cases of examples of central limit theorem:

  • To determine the likelihood that the mean is larger than a specific value
  • To determine the likelihood that the mean is smaller than a specific value

Central Limit Theorem Examples: Greater than

For word puzzles or problems involving the Central Limit Theorem that might include the term "more than" (or a phrase similar to it, like expressed "above")

General Steps:

  • Step 1: Determine the specific issue. What is provided in the question should be stated in your query.

    • The mean mentioned (average or μ)
    • The standard deviation mentioned (σ)
    • The population size
    • The sample size (n)
    • Number associated with “greater than” (\(\overline {X}\)). Note: this is sample mean. In other words, the problem is asking you to solve “What may be the probability that sample mean of x items will be greater than this number?
  • Step 2: Make a graph (as shown below). The mean should be written in the graph's middle. Shade the region we previously discussed as being "more than," or roughly just above (overline X). Although this step is optional, it could aid improve your understanding of what we are seeking.

  • Step 3: To determine the z-score, use the following formula, which is listed below: Value of z formula

    • Now Subtract the 'greater than' value (the (overlined X) in step 1) from the mean (the in step 1). We must now put this number aside for the time being.
    • Now Subtract the standard deviation (the in step 1) from the sample's square root (the n in step 1). For instance, if your sample contains 35 dogs and your standard deviation is 4, then 4/35=0.676.
    • Step 1/Step 2: Subtract our result from Step 1 from our result in Step 2
  • Step 4: Now Look up at the z-score we have calculated in step 3 in the z-table. If you don’t exactly remember how to actually look up z-scores, you can find an explanation in step 1 of this: Area to the right of a z-score.

  • Step 5: Now Subtract our z-score from 0.5. For example, if your score is 0.2554, then 0.5 – 0.2554 = 0.2446.

  • Step 6: Convert the decimal we got in Step 5 to a percentage. In our example, 0.2446 = 24.46%.

That is it!

Now an specific example:

Q. A certain group of welfare award recipients receives SNAP benefits of Rs.110 per week with a standard deviation of Rs.20. If we take a random sample of 25 people , what is the probability that their mean benefit will be greater than Rs,120 per week?

Step 1: USE the information into the z-formula:

= (120-110)/20 √25 = 10/ (20/5) = 10/4 = 2.5.

Step 2: Now Look at the z-score in a table (or calculate it using internet). A z-score of 2.5 has an area just roughly of 49.39%.Now Adding 50% (for the left half of the curve), we get 99.39%.

Central Limit Theorem Examples: For Less than

Completing activities or word problems involving the Central Limit Theorem that involve the phrase "less than" (or a phrase of a similar nature, such as "lower").

General Steps:

  • Step 1: First Identify the parts of the problem. Your question should state the following:
    • The mean (average or μ)
    • The standard deviation (σ)
    • The population size
    • The sample size (n)
    • And finally a number associated with “less than” ( (\(\overline{X}\))
  • Step 2: Create a graph now and indicate the mean in the center. Shade the region that generally lies below ((overlineX), also known as the "less than" region. Although this step is optional, it could still aid in finding what we're looking for.

  • Step 3: Use the z-score along with the calculation provided below. Enter the figures from step 1 here. This formula only requires you to:

    • Subtract the mean (μ we got in step 1) from the less than’ value ((\(\overline{X}\)we got in step 1). Now again we need to Set this number aside for a moment.
    • Now Divide the standard deviation (σ we got in step 1) by the square root of our sample (n we got in step 1). For example, if thirty five children are in your sample and your standard deviation is 4, then 4/√35=0.676
    • Now Divide your result from step 1 with your result from step 2 (i.e. step 1/step2)
  • Step 4: Now Look up in the z-table at the z-score that we determined in step 4. If you can't recall how to look up the z-scores, step 1 at the beginning of this note provides instructions.

  • Step 5: Now To 0.5, multiply your z-score. If your z-score is 0.2554, for instance, 0.5 plus 0.2554 equals 0.7554.

  • Step 6: The decimal from Step 6 should now be converted to a percentage. In our illustration, 0.7554 Equals 75.54%.

That’s it!

Now time for a example: Specific Example

The mean annual pay for women in this age group is Rs. 29,321, while the standard deviation is Rs. 2,120. What is the likelihood that the mean salaries of 100 men in the sample will be less than Rs. 29,000?
Step 1: first Insert the values into the z-formula:

=(29,000-29,321)/2,120/√100 = -321/212 = -1.51.

Step 2: Now Look up at the z-score in the left-hand z-table (or use internet). -1.51 has an approximate area of 93.45%.

This, however, is not the correct response because we are aware that the question is asking for LESS THAN, and 93.45% is the area that is "more than," thus we must deduct from 100%.
100% - 93.45% equals 6.55%, or around 0.07.

Things to remember
  • No matter how the population distribution is shaped, the Central Limit Theorem simply states that as the sample size increases, the sampling distribution of all sampling means tends to resemble a normal distribution.
  • The fact that the population mean will be the average of our sample means is a crucial part of the Central Limit Theorem.
  • The phrase "assuming the variable is regularly distributed" will most likely appear in a Central Limit Theorem word task or problem.

© 2021 Saralmind. All Rights Reserved.