Conditional PDF and Expectation: How to Calculate Them?

  • Thread starter Thread starter de1337ed
  • Start date Start date
  • Tags Tags
    Conditional Pdf
Click For Summary
SUMMARY

The discussion focuses on calculating the conditional probability density function (PDF) and expectation for a random variable X with the PDF defined as fX(x) = 2x^-2 for 1 < x < 2. Participants confirmed that the value of c is 2 and discussed the calculation of P(A) for the event where fX > 1.5, concluding that P(A) = 1/3. The conditional expectation E[X|A] was derived using the formula E[X|A] = ∫x * fX|A(x|A) dx, with the correct range established as 1.5 < x < 2. The variance was calculated as var(X) = 0.0205, ensuring it remains non-negative.

PREREQUISITES
  • Understanding of probability density functions (PDFs)
  • Familiarity with conditional probability formulas, specifically P(B|A) = P(A & B) / P(A)
  • Knowledge of expectation calculations, including E[X] = ∫P(x) x dx
  • Ability to perform integration over specified intervals
NEXT STEPS
  • Learn how to derive the cumulative distribution function (CDF) from a given PDF
  • Study the properties of conditional expectations and variances in probability theory
  • Explore the implications of changing the range of integration in expectation calculations
  • Practice solving problems involving conditional PDFs and expectations with various distributions
USEFUL FOR

Students and professionals in statistics, data science, and mathematics who are looking to deepen their understanding of conditional probability and expectation calculations.

de1337ed
Messages
10
Reaction score
0
The random variable X has the PDF
fX(x) = cx^-2 if 1 < x < 2;
0 otherwise:
(a) Determine the value c
(b) Let A be the event fX > 1.5. Calculate the conditional expectation and the
conditional variance of X given A.

I'm not understanding the concept of conditional pdf's. Can someone show me the step by step?
Also what would be the ranges for the conditional expectation. I know that fX(x) is from 1<x<2, and E[x] is taken from >1.5, so its range 0<x<0.5?
Also, because we want to calculate the even fX > 1.5, does that involve using the CDF?
Thank you.
 
Last edited:
Physics news on Phys.org
de1337ed said:
I'm not understanding the concept of conditional pdf's. Can someone show me the step by step?

Someone posting the step by step will do little to help your understanding. How far have you got?

Also this probably belongs in the Homework and Coursework forum and not here.
 
Welcome to PF, de1337ed! :smile:

Did you already find the value for c?

As for conditional pdf's, do you know the formula P(B|A)=P(A & B) / P(A)?
And the formula for expectation E[X] = ∫P(x) x dx?

The conditional expectation given A would be: \int P(X=x|A) x dx = {\int P(X=x \&amp; A) x dx \over P(A)}.

For starters, can you calculate P(A)?
 
I like Serena said:
Welcome to PF, de1337ed! :smile:

Did you already find the value for c?

As for conditional pdf's, do you know the formula P(B|A)=P(A & B) / P(A)?
And the formula for expectation E[X] = ∫P(x) x dx?

The conditional expectation given A would be: \int P(X=x|A) x dx = {\int P(X=x \&amp; A) x dx \over P(A)}.

For starters, can you calculate P(A)?

Ya I found the value of c to be 2. And ya, I know that is the formula, but I didn't know how to calculate P(A)... Is it simply the ∫fX(x)dx from 1.5 to 2?
 
de1337ed said:
Ya I found the value of c to be 2. And ya, I know that is the formula, but I didn't know how to calculate P(A)... Is it simply the ∫fX(x)dx from 1.5 to 2?

You know that \int_{1}^{2} f_{X} \left(x\right)dx=1 right?

But \int_{1}^{2} 2x^{2}dx \neq 1. So what you need is some c such that \int_{1}^{2}cx^{2}dx = 1. Can you see how to do that?
 
Oh shoot, copied the problem down wrong, its actually cx^-2
 
Sorry my bad you actually copied it correctly! It's been a long day! 2 is correct then. And yes that is the correct way to get the probability of A.
 
Good! :)

So what is P(A)?

And what would the range of x be for which P(X=x & A) has a non-zero value?
 
So basically, I got that P(A) = 1/3.
And fX|A(x|a) = 6x^-2, 0<x<0.5. (This range confuses me, I'm not sure about this)
and 0 otherwise

Then E[x] = ∫x*6x-2dx. From 1.5 to 2.
And then Variance would be E[x2] - (E[x])2

Am I right?
 
  • #10
Except for the range you are right.

The range for fX is 1<x<2.
With A given, you get that x>1.5, so the relevant range of fX|A is 1.5<x<2.

This is what you used in your formula for E[x], so I don't get why you'd think it is 0<x<0.5.
 
  • #11
Hmm, i see, okay. I think I'm doing something wrong,

I'm getting the fact that E[x] = 1.726...
E[x2] = ∫x2*2x-2dx from 1.5 to 2. This gives me 1

As a result, I get the variance to be 1-(1.726)2 = -1.979. Which doesn't make sense because isn't the variance supposed to be ≥0?

EDIIITTT::: NVM, i might be an idiot. Haven't slept, I'm using the wrong PDF, lol

So what I ended up doing was var(x) = ∫(x-1.726)2*6x-2dx = 0.0205

Seem good?
 
Last edited:
  • #12
E[X|A] is good. :)

For you variance you have used the original pdf instead of the pdf of X|A.

And yes, the variance is supposed to be at least zero.
 

Similar threads

  • · Replies 14 ·
Replies
14
Views
3K
  • · Replies 9 ·
Replies
9
Views
2K
Replies
29
Views
2K
  • · Replies 17 ·
Replies
17
Views
3K
Replies
0
Views
893
  • · Replies 7 ·
Replies
7
Views
2K
  • · Replies 1 ·
Replies
1
Views
2K
  • · Replies 23 ·
Replies
23
Views
5K
  • · Replies 1 ·
Replies
1
Views
2K
Replies
3
Views
2K