Clustering Time Series and the Surprising Robustness of HMMs

05/09/2016
by   Mark Kozdoba, et al.
0

Suppose that we are given a time series where consecutive samples are believed to come from a probabilistic source, that the source changes from time to time and that the total number of sources is fixed. Our objective is to estimate the distributions of the sources. A standard approach to this problem is to model the data as a hidden Markov model (HMM). However, since the data often lacks the Markov or the stationarity properties of an HMM, one can ask whether this approach is still suitable or perhaps another approach is required. In this paper we show that a maximum likelihood HMM estimator can be used to approximate the source distributions in a much larger class of models than HMMs. Specifically, we propose a natural and fairly general non-stationary model of the data, where the only restriction is that the sources do not change too often. Our main result shows that for this model, a maximum-likelihood HMM estimator produces the correct second moment of the data, and the results can be extended to higher moments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/07/2017

Parameter-driven models for time series of count data

This paper considers a general class of parameter-driven models for time...
research
12/16/2021

Consistency of the maximum likelihood estimator in hidden Markov models with trends

A hidden Markov model with trends is a hidden Markov model whose emissio...
research
02/20/2018

Consistency of the maximum likelihood estimator in seasonal hidden Markov models

In this paper, we introduce a variant of hidden Markov models in which t...
research
02/06/2017

Hierarchical Symbolic Dynamic Filtering of Streaming Non-stationary Time Series Data

This paper proposes a hierarchical feature extractor for non-stationary ...
research
01/22/2021

Flexible estimation of the state dwell-time distribution in hidden semi-Markov models

Hidden semi-Markov models generalise hidden Markov models by explicitly ...
research
01/10/2019

Penalized estimation of flexible hidden Markov models for time series of counts

Hidden Markov models are versatile tools for modeling sequential observa...
research
10/23/2017

Modeling rainfalls using a seasonal hidden markov model

In order to reach the supply/demand balance, electricity providers need ...

Please sign up or login with your details

Forgot password? Click here to reset