# How can I incorporate hidden markov chains/Viterbi algo into a directed graph?

I'm struggling with the logic of this so any tips/suggestions would be great. Basically I have new data sets everyday, these sets are added as nodes into a graph. The next day when I add a new dataset, I create edges from yesterdays nodes to todays(based on how similar they are, its a bit domain specific but each nodes, which is a int, is connected to the nextday's node if its within 5% similar). So far, we have a nodes(states) that are connected to the nextday's nodes(states) based on how similar they are. The problem is only one of the states in a given state set is correct, the rest are just possibilities.

Now what I want to do is make an inference on the correct states on a previous dataset(say T-1, or T-2) using the structure of the graph. I think this is a nice hidden markov model(hierarchical Dirichlet Processes version I think because new states are being added/removed with each set). I want to code this feature but I'm having trouble visualizing how to do it.

This maybe incorrect but here's how I'm thinking about it(there's more nodes but I'm showing only the ones that matter in this example, if they are not 5% similar they do not get loaded into the graph):

``````set1    set2    % difference    set3    % difference    set4    % difference
100     95      -5.00%          98      -4.85%          102     -4.67%
100     96      -4.00%          99      -3.88%          103     -3.74%
100     97      -3.00%          100     -2.91%          104     -2.80%
100     98      -2.00%          101     -1.94%          105     -1.87%
100     99      -1.00%          102     -0.97%          106     -0.93%
100     100     0.00%           103     0.00%           107     0.00%
100     101     1.00%           104     0.97%           108     0.93%
100     102     2.00%           105     1.94%           109     1.87%
100     103     3.00%           106     2.91%           110     2.80%
100     104     4.00%           107     3.88%           111     3.74%
100     105     5.00%           108     4.85%           112     4.67%
Correct:103             Correct:107
``````

You see by dataset4, 95 & 105 from dataset2 are no longer possible because for 95 to go to 107 would have been 12% change and overtime I somehow should get better at making an inference on a previous state. I'm just not sure how to maintain a state between nodes and think of this problem.

I'm using networkx(python package) but I'm not sure if there' native code to maintain state information, if someone can help me understand this logic it would be helpful.

Another question I have(somewhat related), if I'm using pagerank on the graph is it already accounting for maintaining state probabilities? I thought this because as nodes get more influential(higher pagerank), they pass it on to other nodes which in turn keep spreading it.