Change Detection of Markov Kernels with Unknown Post Change Kernel using Maximum Mean Discrepancy

Chen, Hao, Tang, Jiacheng, Gupta, Abhishek

arXiv.org Machine Learning 

In this paper, we develop a new change detection algorithm for detecting a change in the Markov kernel over a metric space in which the post-change kernel is unknown. Under the assumption that the pre- and post-change Markov kernel is geometrically ergodic, we derive an upper bound on the mean delay and a lower bound on the mean time between false alarms.