Markov Chain
马尔科夫链是一个具备马尔科夫性的随机过程。马尔科夫性是指:系统在下一步所处状态的条件概率仅与系统当前的状态相关,与系统以前的状态无关。
A Markov chain is a sequence of random variables X1, X2, X3, ... with the Markov property, namely that, given the present state, the future and past states are independent. Formally,
The possible values of Xi form a countable set S called the state space of the chain.
一个典型的马尔科夫例子:
Another example is the dietary habits of a creature who eats only grapes, cheese or lettuce, and whose dietary habits conform to the following rules:
- It eats exactly once a day.
- If it ate cheese today, tomorrow it will eat lettuce or grapes with equal probability.
- If it ate grapes today, tomorrow it will eat grapes with probability 1/10, cheese with probability 4/10 and lettuce with probability 5/10.
- If it ate lettuce today, it will not eat lettuce again tomorrow but will eat grapes with probability 4/10 or cheese with probability 6/10.
其实这与小时候玩的大富翁游戏很相似。
to be continue...