Compute the marginal distributions p(y). Notes: Marginal probabilities are the building blocks for more complex probability ideas like Bayes Theorem which is used throughout machine learnin O [13/30, 7/30, 11/30] O [10/30, 5/30, 10/30] O [13/30, 7/30, 10/30] O [13/30, 10/30, 7/30]

A First Course in Probability (10th Edition)
10th Edition
ISBN:9780134753119
Author:Sheldon Ross
Publisher:Sheldon Ross
Chapter1: Combinatorial Analysis
Section: Chapter Questions
Problem 1.1P: a. How many different 7-place license plates are possible if the first 2 places are for letters and...
icon
Related questions
Question
From the following bivariate distribution p(x, y) of two discrete random
variables X and Y,
5
Y1
Y2
Y3
p(x)
X1
5
4
1
X2
3
2
0
O [13/30, 7/30, 11/30]
O [10/30, 5/30, 10/30]
O [13/30, 7/30, 10/30]
O [13/30, 10/30, 7/30]
X3
4
1
5
X4 p(y)
1
0
4
30/30
Compute the marginal distributions p(y).
Notes: Marginal probabilities are the building blocks for more complex
probability ideas like Bayes Theorem which is used throughout machine learning.
Transcribed Image Text:From the following bivariate distribution p(x, y) of two discrete random variables X and Y, 5 Y1 Y2 Y3 p(x) X1 5 4 1 X2 3 2 0 O [13/30, 7/30, 11/30] O [10/30, 5/30, 10/30] O [13/30, 7/30, 10/30] O [13/30, 10/30, 7/30] X3 4 1 5 X4 p(y) 1 0 4 30/30 Compute the marginal distributions p(y). Notes: Marginal probabilities are the building blocks for more complex probability ideas like Bayes Theorem which is used throughout machine learning.
From the following bivariate distribution p(x, y) of two discrete random
variables X and Y,
Y1
Y2
Y3
p(x)
X1
5
4
1
X2
3
2
0
O [4/13,2/13, 1/13, 0]
O [5/10, 4/10, 1/10]
O [5/13, 3/13, 4/13, 1/13]
O [3/5, 2/5, 0]
x3
4
1
5
X4
1
0
4
p(y)
30/30
Compute the conditional distributions p(x | Y = y₁).
Notes: Additionally, conditional probabilities are more building blocks we need
to understand complex probability ideas like Bayes Theorem which is used
throughout machine learning.
Transcribed Image Text:From the following bivariate distribution p(x, y) of two discrete random variables X and Y, Y1 Y2 Y3 p(x) X1 5 4 1 X2 3 2 0 O [4/13,2/13, 1/13, 0] O [5/10, 4/10, 1/10] O [5/13, 3/13, 4/13, 1/13] O [3/5, 2/5, 0] x3 4 1 5 X4 1 0 4 p(y) 30/30 Compute the conditional distributions p(x | Y = y₁). Notes: Additionally, conditional probabilities are more building blocks we need to understand complex probability ideas like Bayes Theorem which is used throughout machine learning.
Expert Solution
trending now

Trending now

This is a popular solution!

steps

Step by step

Solved in 4 steps

Blurred answer
Similar questions
  • SEE MORE QUESTIONS
Recommended textbooks for you
A First Course in Probability (10th Edition)
A First Course in Probability (10th Edition)
Probability
ISBN:
9780134753119
Author:
Sheldon Ross
Publisher:
PEARSON
A First Course in Probability
A First Course in Probability
Probability
ISBN:
9780321794772
Author:
Sheldon Ross
Publisher:
PEARSON