We survey information-theoretic approaches to the reduction of Markov chains. Our survey is structured in two parts: The first part considers Markov chain coarse graining, which focuses on projecting the Markov chain to a process on a smaller state space that is informative}about certain quantities of interest. The second part considers Markov chain model reduction, which focuses on replacing the original Markov model by a simplified one that yields similar behavior as the original Markov model. We discuss the practical relevance of both approaches in the field of knowledge discovery and data mining by formulating problems of unsupervised machine learning as reduction problems of Markov chains. Finally, we briefly discuss the concept of lumpability, the phenomenon when a coarse graining yields a reduced Markov model.
翻译:我们调查了减少Markov链条的信息理论方法,我们的调查分为两部分:第一部分考虑Markov链条粗粗谷物,其重点是将Markov链条投射到一个较小国家空间上的过程,该过程能提供一定数量的有关信息。第二部分考虑Markov链条模型的减少,其重点是用一个简化模式取代最初的Markov模式,该模式产生与最初的Markov模式相似的行为。我们讨论了两种方法在知识发现和数据挖掘领域的实际相关性,方法是提出未受监督的机器学习问题,作为Markov链条的减少问题。最后,我们简要地讨论了可合并性概念,即粗质谷物产生一个减少的Markov模式时的现象。