Filtering for Aggregate Hidden Markov Models with Continuous Observations

11/04/2020
by   Qinsheng Zhang, et al.
0

We consider a class of filtering problems for large populations where each individual is modeled by the same hidden Markov model (HMM). In this paper, we focus on aggregate inference problems in HMMs with discrete state space and continuous observation space. The continuous observations are aggregated in a way such that the individuals are indistinguishable from measurements. We propose an aggregate inference algorithm called continuous observation collective forward-backward algorithm. It extends the recently proposed collective forward-backward algorithm for aggregate inference in HMMs with discrete observations to the case of continuous observations. The efficacy of this algorithm is illustrated through several numerical experiments.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/24/2021

Inference of collective Gaussian hidden Markov models

We consider inference problems for a class of continuous state collectiv...
research
11/23/2020

Learning Hidden Markov Models from Aggregate Observations

In this paper, we propose an algorithm for estimating the parameters of ...
research
02/10/2021

Temporal Parallelization of Inference in Hidden Markov Models

This paper presents algorithms for parallelization of inference in hidde...
research
02/04/2011

Evidence Feed Forward Hidden Markov Model: A New Type of Hidden Markov Model

The ability to predict the intentions of people based solely on their vi...
research
06/26/2020

Incremental inference of collective graphical models

We consider incremental inference problems from aggregate data for colle...
research
10/17/2017

Estimate exponential memory decay in Hidden Markov Model and its applications

Inference in hidden Markov model has been challenging in terms of scalab...
research
04/14/2020

Learning from Aggregate Observations

We study the problem of learning from aggregate observations where super...

Please sign up or login with your details

Forgot password? Click here to reset