# What are the ways of deciding probabilities in hidden markov models?

I am starting to learn hidden markov models and on the wiki page, as well as on github there are alot of examples but most of the probabilities are already there(70% change of rain, 30% chance of changing state, etc..). The spell checking or sentences examples, seem to study books and then rank the probabilities of words.

So does the markov model include a way of figuring out the probabilities or are we suppose to some other other model to pre-calculate it?

Sorry if this question is off. I think its straightforward how the hidden markov model selects probable sequences but the probability part is a bit grey to me(because its often provided). Examples or any info would be great.

For those not familiar with markov models, here's an example(from wikipedia) http://en.wikipedia.org/wiki/Viterbi_algorithm and http://en.wikipedia.org/wiki/Hidden_Markov_model

``````#!/usr/bin/env python

states = ('Rainy', 'Sunny')

observations = ('walk', 'shop', 'clean')

start_probability = {'Rainy': 0.6, 'Sunny': 0.4}

transition_probability = {
'Rainy' : {'Rainy': 0.7, 'Sunny': 0.3},
'Sunny' : {'Rainy': 0.4, 'Sunny': 0.6},
}

emission_probability = {
'Rainy' : {'walk': 0.1, 'shop': 0.4, 'clean': 0.5},
'Sunny' : {'walk': 0.6, 'shop': 0.3, 'clean': 0.1},
}

#application code
# Helps visualize the steps of Viterbi.
def print_dptable(V):
print "    ",
for i in range(len(V)): print "%7s" % ("%d" % i),
print

for y in V[0].keys():
print "%.5s: " % y,
for t in range(len(V)):
print "%.7s" % ("%f" % V[t][y]),
print

def viterbi(obs, states, start_p, trans_p, emit_p):
V = [{}]
path = {}

# Initialize base cases (t == 0)
for y in states:
V[0][y] = start_p[y] * emit_p[y][obs[0]]
path[y] = [y]

# Run Viterbi for t > 0
for t in range(1,len(obs)):
V.append({})
newpath = {}

for y in states:
(prob, state) = max([(V[t-1][y0] * trans_p[y0][y] * emit_p[y][obs[t]], y0) for y0 in states])
V[t][y] = prob
newpath[y] = path[state] + [y]

# Don't need to remember the old paths
path = newpath

print_dptable(V)
(prob, state) = max([(V[len(obs) - 1][y], y) for y in states])
return (prob, path[state])

#start trigger
def example():
return viterbi(observations,
states,
start_probability,
transition_probability,
emission_probability)
print example()
``````
-