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'''NOTE: Wiki has been migrated from wikicoursenote.com to wiki.math.uwaterloo.ca/statwiki''' | |||
== [[stat940F24 | Deep Learning (STAT 940- Fall 2024) ]] == | |||
== [[stat940F21 | Deep Learning (STAT 940- Fall 2021) ]] == | |||
== [[stat441F21 | Statistical Learning - Classification (STAT 441/841 CM 763- Fall 2021) ]] == | |||
== | |||
'''Archive | |||
''' == | |||
== [[stat946F18 | Deep Learning (STAT 946- Fall 2018) ]] == | |||
== [[stat441F18 | Statistical Learning - Classification (STAT 441/841 CM 763- Fall 2018) ]] == | |||
== [[stat946w18 | Deep Learning (STAT 946- Winter 2018) ]] == | |||
== [[stat441w18 | Statistical Learning - Classification (STAT 441/841 CM 763- Winter 2018) ]] == | |||
== [[stat946f17 | Deep Learning (STAT 946- Fall 2017) ]] == | |||
== [[stat946f15 | Deep Learning (STAT 946- Fall 2015) ]] == | |||
== [[stat841f14 | Data Visualization (Stat 442 / 842, CM 762 - Fall 2014) ]] == | |||
== [[stat340s13 | Computer Simulation of Complex Systems (Stat 340 - Spring 2013) ]] == | == [[stat340s13 | Computer Simulation of Complex Systems (Stat 340 - Spring 2013) ]] == | ||
== [[stat946s13 | Dimensionality Reduction and Metric Learning (Stat 946 - Spring 2013) ]] == | == [[stat946s13 | Dimensionality Reduction and Metric Learning (Stat 946 - Spring 2013) ]] == | ||
== [[stat841f11|Classification (Stat441/841 & CM 463/763-Fall 2011)]] == | == [[stat841f11|Classification (Stat441/841 & CM 463/763-Fall 2011)]] == | ||
== [[stat946f11|Probabilistic Graphical Models (Stat946-Fall 2011)]] == | == [[stat946f11|Probabilistic Graphical Models (Stat946-Fall 2011)]] == | ||
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x=u^(1/12) | x=u^(1/12) | ||
3. output x | 3. output x | ||
we need to show that [[Pi]] si the stationary distribution of this Markov Chain, | |||
[pi]=[pi]P | |||
detailed balance | |||
Remark 1; | |||
A common choice for q(y|x) is a normal distribution centered at X with standard deviation b q(y|x)= N (x, b^2) in this case q(y|x) is symmetric. |
Latest revision as of 09:57, 18 September 2024
NOTE: Wiki has been migrated from wikicoursenote.com to wiki.math.uwaterloo.ca/statwiki
Deep Learning (STAT 940- Fall 2024)
Deep Learning (STAT 940- Fall 2021)
Statistical Learning - Classification (STAT 441/841 CM 763- Fall 2021)
==
Archive
==
Deep Learning (STAT 946- Fall 2018)
Statistical Learning - Classification (STAT 441/841 CM 763- Fall 2018)
Deep Learning (STAT 946- Winter 2018)
Statistical Learning - Classification (STAT 441/841 CM 763- Winter 2018)
Deep Learning (STAT 946- Fall 2017)
Deep Learning (STAT 946- Fall 2015)
Data Visualization (Stat 442 / 842, CM 762 - Fall 2014)
Computer Simulation of Complex Systems (Stat 340 - Spring 2013)
Dimensionality Reduction and Metric Learning (Stat 946 - Spring 2013)
Classification (Stat441/841 & CM 463/763-Fall 2011)
Probabilistic Graphical Models (Stat946-Fall 2011)
Computational Statistics and Data Analysis (Stat 341 & CM 361- Fall 2011)
Probabilistic Graphical Models (Stat946-Fall 2011) -- Material Pool
Go to Stat441/841 & CM 463/763-Fall 2010
Go to stat946-Fall 2010
Go to Stat441/841 & CM 463-Fall 2009
Go to stat946-Spring 2009
Go to Stat341 & CM 361
Go to Stat441/841 & CM 463/763-Fall 2011
HowTo Use Wiki
You can take a look to Simple Editing Howto to learn quickly how you should edit a wiki.
For writing formulae in wikicoursenote, please take a look at Help:Displaying a formula. It will definitely help you.
A solution to a common problem (New)
You may have faced the situation when the math formulas in the body of wikinotes appears extraordinary small (compared to usual font for math formulas). Sometimes this small font helps and sometimes it hurts! One solution to correct this is to simply insert a \, at the beginning of the formula. This will solve the problem without having any effect on the rest of the formula. For example you should write <mth>\,p_{x,y}</math> instead of <mth>p_{x,y}</math>, to see [math]\displaystyle{ \,\!p_{x,y} }[/math] instead of [math]\displaystyle{ p_{x,y} }[/math].
Examples
According to scientists, the Sun is pretty big.<ref>E. Miller, The Sun, (New York: Academic Press, 2005), 23-5.</ref> The Moon, however, is not so big.<ref>R. Smith, "Size of the Moon", Scientific American, 46 (April 1978): 44-6.</ref>
[math]\displaystyle{ \sqrt{x^2+2x+1}=|x+1| - \left(\left(\frac{2x^2}{x}\right)^2\right)^2 }[/math]
Summary During the lecture on May 9th, we have introduced the concepts of pseudo-random variables. We have used the example of “mod” to clarify the basic idea of generating random variable of uniform (0,1). Also, we have used the example of convertible cdf to show how to generate random variables from uniform(0,1). For each of the example in class, the instructor has used Matlab to show how to reach the desired results in Matlab.
Multiplicative Congruential Algorithm We use the operator “mod” e.g. (10 mod 3) = 1
if using the recursive form, (a*x+b mod m) = y Let a=2, b=1, m=3
If x=10 (2*10+1 mod 3) =0 (2*0+1 mod 3) = 1 (2*1+1 mod 3) = 0
Example a=13 b=0 m=31 The first 30 numbers in the sequence are a permutation of integers from 1 to 30 and then the sequence repeats itself. Values are between 0 and m-1. If the values are normalized by dividing by m-1, then the results is numbers uniformly distributed in the interval [0,1]. There is only a finite number of values—30 in this case.
Question: How to generate exp (lambda) from uniform [0,1]?
Inverse Transform Method
Theorem
Take u~U(0,1), let x=F-1(u) Then x has distribution function F( ), where F(x)= Pr(X<=x), F-1( ) denotes the inverse function of F( ).
Proof
F(x) = Pr(X<=x) =Pr (F-1(u)<=x) =Pr(F(F-1(u))<=F(x)) =Pr(u<=F(x)) =F(x) (since U~U(0,1))
Example 1
Let f(x)=a*exp^(-a*x) F(x)=1-exp^(-a*x) u=1-exp^(-a*x) x= -1/a*ln(1-u) F-1(x)= -1/a*ln(1-u)
Therefore, the algorithm is: 1. Draw u~U(0,1) 2. Let x= -1/a*ln(1-u)
Additional Example: Write an algorithm to generate a random variable from F(x)=x^12, 0<x<1 Solution: 1. Generate u~U(0,1) 2. u=x^12
x=u^(1/12)
3. output x we need to show that Pi si the stationary distribution of this Markov Chain, [pi]=[pi]P detailed balance Remark 1; A common choice for q(y|x) is a normal distribution centered at X with standard deviation b q(y|x)= N (x, b^2) in this case q(y|x) is symmetric.