Hidden Markov Modelling (HMM) is a popular approach to automatic part-of-speech tagging. A bigram HMM taggerโs estimate of the best tag sequence ๐ก1๐ or a given words sequence ๐ค1๐. Derive the equations for bi-gram HMM tagger defining symbols and assumptions.
To be frank, it seems like you just copy-pasted an exam question and didn't even check to see if it retained important formatting elements, like bullet points
I'm not an employee of Stack Overflow or anything, so I don't have any real obligations of duty
My formatting criticisms aside, I don't actually know what the answer is. I have a surface-level understanding of Markov Chains, but I don't know how you'd formally describe one