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Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET PDF Download

Now that we have an intuitive feel for the Central Limit Theorem, let's use it in two different examples. In the first example, we use the Central Limit Theorem to describe how the sample mean behaves, and then use that behavior to calculate a probability. In the second example, we take a look at the most common use of the CLT, namely to use the theorem to test a claim. 

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Example

Take a random sample of size n = 15 from a distribution whose probability density function is:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

for −1 < x < 1. What is the probability that the sample mean falls between −2/5 and 1/5?

Solution. The expected value of the random variable X is 0, as the following calculation illustrates:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

The variance of the random variable X is 3/5, as the following calculation illustrates:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Therefore, the CLT tells us that the sample mean Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET is approximately normal with mean:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

and variance:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Therefore the standard deviation of Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET is 1/5. Drawing a picture of the desired probability:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

we see that:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Therefore, using the standard normal table, we get:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

That is, there is an 81.85% chance that a random sample of size 15 from the given distribution will yield a sample mean between −2/5 and 1/5.

 

 

Example

Let Xi denote the wating time (in minutes) for the ith customer. An assistant manager claims that μ, the average waiting time of the entire population of customers, is 2 minutes. The manager doesn't believe his assistant's claim, so he observes a random sample of 36 customers. The average waiting time for the 36 customers is 3.2 minutes. Should the manager reject his assistant's claim (... and fire him)?

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Solution.  It is reasonable to assume that Xi is an exponential random variable. And, based on the assistant manager's claim, the mean of Xi is:

μ = θ = 2.

Therefore, knowing what we know about exponential random variables, the variance of Xi is:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Now, we need to know, if the mean μ really is 2, as the assistant manager claims, what is the probability that the manager would obtain a sample mean as large as (or larger than) 3.2 minutes? Well, the Central Limit Theorem tells us that the sample mean Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET is approximately normally distributed with mean:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

and variance:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

Here's a picture, then, of the normal probability that we need to determine:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

That is:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

The Z value in this case is so extreme that the table in the back of our text book can't help us find the desired probability. But, using statistical software, such as Minitab, we can determine that:

Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET

That is, if the population mean μ really is 2, then there is only a 16/100,000 chance (0.016%) of getting such a large sample mean. It would be quite reasonable, therefore, for the manager to reject his assistant's claim that the mean μ is 2. The manager should feel comfortable concluding that the population mean μ really is greater than 2. We will leave it up to him to decide whether or not he should fire his assistant!

By the way, this is the kind of example that we'll see when we study hypothesis testing in Stat 415. In general, in the process of performing a hypothesis test, someone makes a claim (the assistant, in this case), and someone collects and uses the data (the manager, in this case) to make a decision about the validity of the claim. It just so happens to be that we used the CLT in this example to help us make a decision about the assistant's claim.

The document Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics | Physics for IIT JAM, UGC - NET, CSIR NET is a part of the Physics Course Physics for IIT JAM, UGC - NET, CSIR NET.
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FAQs on Central Limit Theorem : Example 2 - Mathematical Methods of Physics, UGC - NET Physics - Physics for IIT JAM, UGC - NET, CSIR NET

1. What is the Central Limit Theorem?
Ans. The Central Limit Theorem states that, regardless of the shape of the original population distribution, the distribution of the sample means will approach a normal distribution as the sample size increases. This theorem is a fundamental concept in statistics and is widely used in hypothesis testing and confidence interval estimation.
2. How does the Central Limit Theorem apply to mathematical methods in physics?
Ans. In mathematical methods of physics, the Central Limit Theorem is often used to justify the assumption of normality for various physical phenomena. By considering the sum or average of a large number of independent random variables, the Central Limit Theorem allows physicists to approximate the distribution of these variables as normal. This simplifies the mathematical analysis and enables the application of powerful statistical techniques.
3. Can you provide an example of how the Central Limit Theorem is used in physics?
Ans. Sure! Let's consider a situation where we are measuring the decay time of radioactive particles. The decay times can be considered as random variables with a certain distribution. By repeatedly measuring the decay times and calculating their means, the Central Limit Theorem allows us to approximate the distribution of the mean decay time as normal. This approximation can then be used to make statistical inferences or predictions about the decay process.
4. What are the key assumptions of the Central Limit Theorem?
Ans. The Central Limit Theorem relies on three key assumptions: (1) the random variables being averaged or summed are independent, (2) the random variables have the same distribution, and (3) the random variables have a finite variance. Violating any of these assumptions may lead to the Central Limit Theorem not holding or requiring modifications.
5. How does the Central Limit Theorem benefit UGC - NET Physics exam preparation?
Ans. Understanding the Central Limit Theorem is crucial for UGC - NET Physics exam preparation as it is a fundamental concept in statistics and mathematical methods of physics. Questions related to hypothesis testing, confidence intervals, and statistical analysis often require knowledge of the Central Limit Theorem. By familiarizing oneself with this theorem, candidates can effectively solve such problems and enhance their overall performance in the exam.
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