In this paper, we propose a risk-sensitive approach to parameter estimation for hidden Markov models (HMMs). The parameter estimation approach considered exploits estimation of various functions of the state, based on model estimates. We propose certain practical suboptimal risk-sensitive filters to estimate the various functions of the state during transients, rather than optimal risk-neutral filters as in earlier studies. The estimates are asymptotically optimal, if asymptotically risk neutral, and can give significantly improved transient performance, which is a very desirable objective for certain engineering applications. To demonstrate the improvement in estimation simulation studies are presented that compare parameter estimation bas...
In this thesis, risk-sensitive estimation for Hidden Markov Models isstudied from a dynamical system...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...
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 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 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...
This paper investigates the use of risk-senstive filtering for state and parameter estimation in sys...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper we derive recursive risk-sensitive filters which may be used for both on-line and off-...
A risk-sensitive generalization of the Maximum A Posterior Probability (MAP) estimationfor partially...
In this thesis, risk-sensitive estimation for Hidden Markov Models isstudied from a dynamical system...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...
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 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 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...
This paper investigates the use of risk-senstive filtering for state and parameter estimation in sys...
In this paper, we address the problem of risk-sensitive filtering and smoothing for discrete-time Hi...
In this paper we derive recursive risk-sensitive filters which may be used for both on-line and off-...
A risk-sensitive generalization of the Maximum A Posterior Probability (MAP) estimationfor partially...
In this thesis, risk-sensitive estimation for Hidden Markov Models isstudied from a dynamical system...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...
International audienceIn this paper we propose algorithms for parameter estimation of fast-sampled h...