Continual Learning For Infinite Hierarchical Change-Point Detection
Pablo Moreno-Muñoz, David Ram´?rez, Antonio Artés-RodrÃguez
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 13:52
Change-point detection (CPD) aims to locate abrupt transitions in the generative model of a sequence of observations. When Bayesian methods are considered, the standard practice is to infer the posterior distribution of the location of change points. However, for complex models (high-dimensional or heterogeneous), it is not possible to perform reliable detection. To circumvent this problem, we propose to use a hierarchical model, which yields observations that belong to a lower-dimensional manifold. Concretely, we consider a latent-class model with an unbounded number of categories, which is based on the chinese-restaurant process (CRP). Then, we derive a continual learning mechanism that is based on the sequential construction of the CRP and the expectation-maximization (EM) algorithm with a stochastic maximization step. Our numerical results show that the proposed method is able to recursively infer the unbounded number of underlying latent classes and perform CPD in a reliable manner.