Project 3: invertible probability function In a normalizing flow model, the decoding function is


Project 3: invertible probability function

In a normalizing flow model, the decoding function is designed to be the exact inverse of the encoding function and quick to calculate, giving normalizing flows the property of tractability. However, neural networks are not by default invertible functions. This project is about creating an invertible process. Suppose we have a probability distribution  

· p(x_1,x_2) = (x_1-1) * x_2 / 9  

· ‘p’ is defined over a rectangle [1 4] and [0 2] 

· ‘p’ integrates to 1 over the domain of the distribution 

Submit the following: 

1. show and explain the equations that are used for technique known as change of variables, that enable creation of an invertible process

2. show the final transformed function that has proper probability distribution

3. explain in short, the meaning of each equation under 1. and the meaning of final equation under 2 

Share This Post

Email
WhatsApp
Facebook
Twitter
LinkedIn
Pinterest
Reddit

Order a Similar Paper and get 15% Discount on your First Order

Related Questions

IfSuccessful_Status GA_Status_Icon SAM_Logotruefalse

IfSuccessful_Status GA_Status_Icon SAM_Logo true false ID FirstName LastName AssignmentGUID UserID false rohan maharjan {308B14B0-E32E-42D1-BE7D-54EE2E09B8CD} {308B14B0-E32E-42D1-BE7D-54EE2E09B8CD} ID FirstName LastName ProjectName SubmissionNum MaxScore Score EngineVersion ID StepNumber Description IfSuccessful StepScore StepMaxScore ErrorText ActionName StepActionOrder ConsultantID FirstName Last 110345 Jenette Masterson 110347 Victorina Hogg 110349 Marguerite Hathcock 110351 Sid Ortiz 110352 Glenn Testani

can you complete cis 120 assigment access

can you complete cis 120 assigment access assignment Sheet1 PolicyNumber CustomerID Premium Coverage U20011 11005 215 1,000,000 U21145 11022 226 1,000,000 U22138 11041 278 2,000,000 U22269 11042 301 2,000,000 U20771 11048 315 2,000,000