Recently Markov-modulated compound Poisson models have gained its popularity in modelling insurance claims in the actuarial science literature. A Markov-modulated compound Poisson model can provide a realistic and flexibile way to model aggregate insurance claims by incorporating the impact of hidden states of an economy on claim frequencies and claim sizes. However, in practice, the Markov chain in the model is not observable. It is of practical interest to develop some methods to estimate the hidden state of the Markov chain and other unknown model parameters of the Markov- modulated compound Poisson model. This paper considers this important issue. We shall develop filters and smoothers for the hidden state of the economy underlying the ...
A continuous-time Markov chain which is partially observed in Poisson noise is considered, where a s...
We describe a new approach to estimate the pure premium for automobile insurance. Using the theory o...
We consider the risk process (Xx(t)) defined by Xx(t) = x+ pt − S(t) where x> 0 is the initial c...
Recently Markov-modulated compound Poisson models have gained its popularity in modelling insurance ...
We develop a new exact filter when a hidden Markov chain influences both the sizes and times of a ma...
Abstract—We develop a new exact filter when a hidden Markov chain influences both the sizes and time...
We suggest the use of Poisson hidden Markov models (PHMMs) in non life insurance. PHMMs are an exten...
We develop a new exact filter when a hidden Markov chain influences both the sizes and times of a ma...
The Markov-modulated Poisson process is utilised for count modelling in a variety of areas such as q...
Cette thèse est divisée en deux parties indépendantes. Dans une première partie, on introduit et on ...
A hidden Markov regime is a Markov process that governs the time or space dependent distributions of...
In this paper, we propose an approach for modeling claim dependence, with the assumption that the cl...
ADInternational audienceMotivated by seasonality and regime-switching features of some insurance cla...
In this paper, we consider the compound Poisson risk model influenced by an external Markovian envir...
A class of doubly stochastic Poisson processes, which is termed a Markov-modulated Poisson process, ...
A continuous-time Markov chain which is partially observed in Poisson noise is considered, where a s...
We describe a new approach to estimate the pure premium for automobile insurance. Using the theory o...
We consider the risk process (Xx(t)) defined by Xx(t) = x+ pt − S(t) where x> 0 is the initial c...
Recently Markov-modulated compound Poisson models have gained its popularity in modelling insurance ...
We develop a new exact filter when a hidden Markov chain influences both the sizes and times of a ma...
Abstract—We develop a new exact filter when a hidden Markov chain influences both the sizes and time...
We suggest the use of Poisson hidden Markov models (PHMMs) in non life insurance. PHMMs are an exten...
We develop a new exact filter when a hidden Markov chain influences both the sizes and times of a ma...
The Markov-modulated Poisson process is utilised for count modelling in a variety of areas such as q...
Cette thèse est divisée en deux parties indépendantes. Dans une première partie, on introduit et on ...
A hidden Markov regime is a Markov process that governs the time or space dependent distributions of...
In this paper, we propose an approach for modeling claim dependence, with the assumption that the cl...
ADInternational audienceMotivated by seasonality and regime-switching features of some insurance cla...
In this paper, we consider the compound Poisson risk model influenced by an external Markovian envir...
A class of doubly stochastic Poisson processes, which is termed a Markov-modulated Poisson process, ...
A continuous-time Markov chain which is partially observed in Poisson noise is considered, where a s...
We describe a new approach to estimate the pure premium for automobile insurance. Using the theory o...
We consider the risk process (Xx(t)) defined by Xx(t) = x+ pt − S(t) where x> 0 is the initial c...