# Implementing markov Chain Example - java

There are plenty of Markov Chain examples for text simulations, however for a state change (for ex weather change based on probability over time) I couldn't find any examples. For ex, lets say

``````Sunny --> Sunny = probability is 0.8
Sunny --> Rainy = probability is 0.2
``````

what I am looking is a way to write an algorithm which will display the current weather till n no of steps.

for e.g: `f(3) => S,S,R`

I guess what I am really finding it difficult is how to put the randomness to the algorithm.

This algorithm generate a sentence based on the probability of given words in a phrase, but I am unable to map it into my requirement.( I am not good in maths)

And pls let me know how can I extend the algorithm, for ex if the probability of a sunny day with high humidity is 0.3, the function should produce something like

`````` f(4) -> [S,Low Hu],[S, Low Hu],[R,High Hu] etc..
``````

Please let me know whether this approach is good for my requirement. pseudo code would be enough.

• pls leave a comment if you are down voting something, so the person who ask the question know why he got down voted. Commented Aug 17, 2017 at 12:28
• 0.8 + 0.4 = 1.2... Commented Aug 17, 2017 at 12:30
• corrected. my bad :( Commented Aug 17, 2017 at 12:32
• What exactly are you looking to have answered here? If your question is about what's the best approach, that heads into opinion-based territory which is off-topic. You also seem to have multiple questions (though i'm not sure) and that leads into being too broad.
– Lexi
Commented Aug 17, 2017 at 12:32
• I guess I can create the transition matrix, but what I am finding it difficult is how to get the randomness in place. What I try to say is I want to get the result as the output instead of the probability after n no of steps. Commented Aug 17, 2017 at 12:40

## 1 Answer

You can use `mockNeat.probabilities()` method from the library with the same name, if you don't want to implement the same functionality by yourself. Or you can take a look on how it's implemented.

• Thank you. Actually I got confused, for my requirement I never need to implement a markov chain, All I had to do is to generate a random number between 0 and 1 and consider the option based on the generated number. So I did that. However the answer you provided(the util) does exactly that. Thank you and +1 for not only giving me a correct answer but also trying to understand what I was asking about. Stackoverflow need more ppl like you. Commented Aug 23, 2017 at 5:38