Impact the Temperature of Bangladesh: An Application of Markov Model
DOI:
https://doi.org/10.18034/apjee.v7i1.269Keywords:
Temperature, Bangladesh, Markov ModelAbstract
Markov chain model has been used to analyze the temperature of Bangladesh. Different order Markov chain model has constructed and their significance has been tested. Using Cramer’s , strength the association of temperature with the order of Markov chain has been measured. Stationary probability has been calculated, and there have been employed whether the temperature is stationary or not.
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References
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