subject

Suppose we have a large number of symbol sequences emitted from an HMM that has a particular transition probability ai!j! = 0 for some single value of i# and j#. We use such sequences to train a new HMM, one that happens also to start with its ai!j! = 0. Prove that this parameter will remain 0 throughout training by the Forward-backward algorithm. In other words, if the topology of the trained model (pattern of non-zero connections) matches that of the generating HMM, it will remain so after training.

ansver
Answers: 1

Another question on Computers and Technology

question
Computers and Technology, 22.06.2019 07:00
Idon understand these and need some ! ?
Answers: 2
question
Computers and Technology, 23.06.2019 00:30
Quick pl which one of the following is considered a peripheral? a software b mouse c usb connector d motherboard
Answers: 1
question
Computers and Technology, 23.06.2019 11:00
What is the name of the sound effect that danny hears
Answers: 1
question
Computers and Technology, 24.06.2019 04:30
Write and test a python program to find and print the largest number in a set of real (floating point) numbers. the program should first read a single positive integer number from the user, which will be how many numbers to read and search through. after reading in all of the numbers, the largest of the numbers input (not considering the count input) should be printed.
Answers: 1
You know the right answer?
Suppose we have a large number of symbol sequences emitted from an HMM that has a particular transit...
Questions
question
Mathematics, 22.04.2020 02:01
question
English, 22.04.2020 02:01
question
Mathematics, 22.04.2020 02:01
question
English, 22.04.2020 02:01
question
Mathematics, 22.04.2020 02:01