Calculating Additive Probabilities: A Normal Distribution Approach

In summary: However, if the distributions are not normal, then the formulas will not be accurate and instead an extended version of the normal c.f. must be used.
  • #1
natski
267
2
Hi all,

I am having trouble finding information on a certain problem.

Consider you have a probability that $x_1 = x_a$ (in my case, the probability distribution is a normal distribution centred about 0). So:

$dp(x_1=x_a) = P(x_a) dx_a $

Also consider you have a second variable, $x_2$ for which you have:

$dp(x_2 = x_b) = P(x_b) dx_b$

So we know the probabilities of $x_1$ being $x_a$ and the probability of $x_2$ being $x_b$.

Now, what is the probability that $x_1 + x_2 = x_a + x_b = x_{tot}$?

My first thought was to double integrate dp(x_1=x_a)*dp(x_2 = x_b) with limits from -inf to +inf in both cases, but I think this will overestimate the probability.
 
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  • #2
In general, the prob. density of the sum of two independent random variables is given by the convolution of the densities of the individual r,v,'s.

If they are both normal, then the distribution of the sum is normal with mean=sum of means and variance=sum of variances.
 
  • #3
Ok, I've found that if the mean and variance of the two distributions are the same then one simply puts the distribution\s characteristic function to the power of N, where N is the number of distributions you wish to sum, and then taken the inverse FT of this with Fourier parameters a=b=1.

What if you have N normal distributions of identical mean=0 but different standard deviations? It would appear that this method would no longer work...?
 
  • #4
As mathman said, the sum of two normal r.v. is again normal, and the same holds by induction for any finite sum of normal r.v.
 
  • #5
natski said:
Ok, I've found that if the mean and variance of the two distributions are the same then one simply puts the distribution\s characteristic function to the power of N, where N is the number of distributions you wish to sum, and then taken the inverse FT of this with Fourier parameters a=b=1.

What if you have N normal distributions of identical mean=0 but different standard deviations? It would appear that this method would no longer work...?

the general form of a normal c.f. is exp(-imt-vt2), where m is the mean and v the variance. So when you multipy the c.f.'s, you can see immediately the means and variances add.
 
  • #6
Ok thanks...What about more non-normal distributions? For example a chi-squared?
 
  • #7
mathman said:
the general form of a normal c.f. is exp(-imt-vt2), where m is the mean and v the variance. So when you multipy the c.f.'s, you can see immediately the means and variances add.

Small error, should be vt2/2 for variance term.

For other (not normal) distributions involving sums of independent variables, the general formulas still apply. The c.f. is the product of the individual c.f., while the distribution is obtained by the convolution formula.
 

1. What is the definition of additive probabilities?

Additive probabilities, also known as disjoint or mutually exclusive probabilities, refer to the probability of two or more events occurring simultaneously. In other words, they are the probabilities of events that cannot happen at the same time.

2. How do you calculate the probability of additive events?

The probability of additive events can be calculated by adding the individual probabilities of each event. This is represented by the formula P(A or B) = P(A) + P(B).

3. What is the difference between additive probabilities and non-additive probabilities?

Additive probabilities refer to events that cannot occur at the same time, while non-additive probabilities refer to events that can occur simultaneously. Additive probabilities follow the rule of addition, while non-additive probabilities follow the rule of multiplication.

4. Can the probability of two disjoint events be greater than 1?

No, the probability of two mutually exclusive events cannot be greater than 1. This is because the probability of an event occurring ranges from 0 to 1, where 0 means the event is impossible and 1 means the event is certain to occur. When adding probabilities, the maximum value that can be obtained is 1.

5. How are additive probabilities used in real-life situations?

Additive probabilities are commonly used in risk assessment and insurance. For example, the probability of a person being in a car accident and the probability of them having a house fire are disjoint events, and their combined probability can help determine insurance premiums. They are also used in genetics and medical testing, where the probability of having a certain genetic disorder and the probability of testing positive for it are additive events.

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