Function of a random gaussian variable

In summary, a random gaussian variable is a type of random variable that follows a normal distribution and is commonly used in statistics and probability. Its function is calculated using the probability density function of a normal distribution, and it is essentially the same as a normal variable. In hypothesis testing, it is used to determine the likelihood of obtaining a certain result based on a given hypothesis. While it can technically take on any value, the probability of extreme values occurring is very low.
  • #1
Jply
3
0
I'm having trouble showing the following relation:

E(exp(z)) = exp(E(z^2)/2)

where z is a zero-mean gaussian variable and E() is the avg

anyone can help?
 
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  • #2
Wasn't this posted just recently?

For the standard Gaussian Normal distribution,
[tex]E(f(z))= \int_{-\inf}^{\inf}{f(z)e^{-\frac{z^2}{2}}}dz[/tex]

In this case,
[tex] f(x)= e^{\frac{z^2}{2}} [/tex]
so the integral becomes
[tex]E(e^{\frac{z^2}{2}} )= \int_{-\inf}^{\inf}{e^{\frac{z^2}{2}} e^{-\frac{z^2}{2}}}dz[/tex]

can you do that?
 
  • #3


The function of a random Gaussian variable is to model the behavior of a continuous random variable that follows a normal distribution. This type of variable is commonly used in statistical analysis and is characterized by its mean and standard deviation. The equation you are having trouble with, E(exp(z)) = exp(E(z^2)/2), is known as the moment generating function for a Gaussian random variable.

To understand this relation, it is important to first understand what the moment generating function represents. The moment generating function is a mathematical function that characterizes the entire probability distribution of a random variable. It is defined as the expected value of the exponential function raised to the power of the random variable, i.e. E(exp(z)). This means that when we plug in different values of z into this function, we get the expected value of the corresponding exponential function.

Now, let's break down the equation E(exp(z)) = exp(E(z^2)/2). The left side represents the expected value of the exponential function, while the right side represents the exponential of the expected value of z squared divided by 2. This may seem confusing at first, but we can understand it better by looking at the properties of a Gaussian random variable.

One of the key properties of a Gaussian random variable is that its moment generating function is given by the exponential function raised to the power of the mean plus half the variance, i.e. exp(μ + σ^2/2). In this case, μ is the mean and σ is the standard deviation of the variable. This means that when we plug in the value of z into the moment generating function, we get exp(μ + σ^2/2). This is equivalent to the right side of the equation, where E(z^2)/2 is the same as σ^2/2.

So, in summary, the relation E(exp(z)) = exp(E(z^2)/2) holds true because of the properties of a Gaussian random variable. It may seem confusing at first, but understanding the properties of the variable and the moment generating function can help to make it clearer. I hope this explanation has helped to clarify the relation for you.
 

1. What is a random gaussian variable?

A random gaussian variable is a type of random variable that follows a normal distribution, also known as a gaussian distribution. This means that the values of the variable tend to cluster around a central mean value, with fewer values occurring further away from the mean. It is commonly used in statistics and probability to model real-world data.

2. How is the function of a random gaussian variable calculated?

The function of a random gaussian variable is calculated using the probability density function (PDF) of a normal distribution. This function takes in the mean, standard deviation, and a specific value as inputs and outputs the probability of that value occurring in the distribution. The formula for the PDF is f(x) = (1/σ√2π)e-(x-μ)²/2σ², where μ is the mean and σ is the standard deviation.

3. What is the difference between a gaussian variable and a normal variable?

A gaussian variable and a normal variable are essentially the same thing. The term "gaussian" is often used in mathematical and scientific contexts, while "normal" is more commonly used in everyday language. Both terms refer to a random variable that follows a normal distribution.

4. How is a random gaussian variable used in hypothesis testing?

In hypothesis testing, a random gaussian variable is used to determine the likelihood of obtaining a certain result based on a given hypothesis. The variable is often used to model the distribution of data and calculate the probability of obtaining a sample mean or proportion that is equal to or more extreme than the one observed. This helps determine if the observed result is statistically significant.

5. Can a random gaussian variable take on any value?

Technically, a random gaussian variable can take on any value, although the probability of extreme values occurring is very low. The majority of values will be clustered around the mean, with the probability decreasing as the values move further away from the mean. However, in practical applications, the range of values may be limited by physical constraints or the nature of the data being modeled.

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