In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hidden Markov Models (HMM) with finite-discrete states. The objective of risk-sensitive filtering is to minimise the expectation of the exponential of the squared estimation error weighted by a risk-sensitive parameter. We use the so-called Reference Probability Method in solving this problem. We achieve finite-dimensional linear recursions in the information state, and thereby the state estimate that minimises the risk-sensitive cost index. Also, fixed-interval smoothing results are derived. We show that L2 or risk-neutral filtering for HMMs can be extracted as a limiting case of the risk-sensitive filtering problem when the risk-sensitive par...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
A risk-sensitive generalization of the Maximum A Posterior Probability (MAP) estimationfor partially...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this paper, we consider the filtering and smoothing recursions in nonparametric finite state spac...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this thesis, risk-sensitive estimation for Hidden Markov Models isstudied from a dynamical system...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
A risk-sensitive generalization of the Maximum A Posterior Probability (MAP) estimationfor partially...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this paper, we consider the filtering and smoothing recursions in nonparametric finite state spac...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this paper, we address the risk-sensitive filtering problem which is minimizing the expectation ...
In this thesis, risk-sensitive estimation for Hidden Markov Models isstudied from a dynamical system...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, the risk-sensitive nonlinear stochastic filtering problem is addressed in both contin...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...
In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models...