Hidden Markov Model | Clearly Explained

  Рет қаралды 14,943

LiquidBrain Bioinformatics

LiquidBrain Bioinformatics

3 жыл бұрын

First described by Andrey Andreyevich Markov in 1877, Markov Chain and Markov Process have been one of the most famous method in the study of Stochastic process. Markov Process is a type of stochastic model that assume the current observation relies only on the previous events with a certain probability and can be visualized as a Markov Chain.
The Hidden Markov Model add onto the original Markov Model with the assumption that another "Hidden" state are present in the system that have direct consequences to the outcome of the current events. With that, this model have been successfully implement into many research field including Bioinformatics, Artificial Intelligent and many more
With that, I hope that this video can be a non-mathematical introduction to people wanting to understand the concept but do not need to know the exact calculation involve in the matrix multiplication of the modeling process, or maybe want to learnt about those later.
Please do leave a comment if you have any question :)
Slides: bit.ly/Brandon_Yeo
Email: liquidbrain.r@gmail.com
Github: github.com/brandonyph
Twitter: / brandon_yeoph

Пікірлер: 10
@reshmamanoj5641
@reshmamanoj5641 6 ай бұрын
Finally,able to understand hidden Markov model after so many videos! Thank you so much....
@mahakmansoori8030
@mahakmansoori8030 6 ай бұрын
Me too
@kobedierckx2918
@kobedierckx2918 5 ай бұрын
Thanks for this video! I had so much trouble understanding hidden markov models because in my course slides and textbook it is explained just in the mathematical way. A story always makes things more understandable and memorable.
@oguzcangokce6959
@oguzcangokce6959 2 жыл бұрын
Many thanks for this clear explanation :)
@carloslazcano98
@carloslazcano98 Жыл бұрын
wow, you are really good at explaining this. Thank you!
@vitortarghetta418
@vitortarghetta418 2 жыл бұрын
Man, this is really good. Thanks for uploading it!
@somekid3893
@somekid3893 3 жыл бұрын
This is amazing work, thanks! Could you go over de Bruijn graphs some time? That concept seems to elude me...
@LiquidBrain
@LiquidBrain 3 жыл бұрын
Thanks, I have actually touch on de Brujin on the Trinity algorithm explanation ~ have a look and let me know what you think :)
@tragozedd
@tragozedd Жыл бұрын
You are incredible! ❤❤❤❤❤
@litkikivvi5656
@litkikivvi5656 2 жыл бұрын
great intro video
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