We develop novel methods for estimation and filtering of continuous-time models with stochastic volatility and jumps using so-called Approximate Bayesian Computation which build likelihoods based on limited information. The proposed estimators and filters are computationally attractive relative to standard likelihood-based versions since they rely on low-dimensional auxiliary statistics and so avoid computation of high-dimensional integrals. Despite their computational simplicity, we find that estimators and filters perform well in practice and lead to precise estimates of model parameters and latent variables. We show how the methods can incorporate intra-daily information to improve on the estimation and filtering. In particular, the avai...
In this paper we exploit some recent computational advances in Bayesian inference, coupled with data...
This thesis examines the performance and implementation of the stochastic volatility model with jump...
Using the Efficient Method of Moments we estimate a continuous time diffusion for the stochastic vol...
Altres ajuts: RC-2012-StG 312474We develop novel methods for estimation and filtering of continuous-...
In this paper, the problem of sequentially learning parameters governing discretely observed jump-di...
1 This paper provides an optimal filtering methodology in discretely observed continuous-time jump-d...
In this article we use a partial integral-differential approach to construct and extend a non-linear...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
(The thesis contains 264310 characters incl. spaces, which corresponds to 106 normal pages) Continuo...
This paper introduces and studies the econometric properties of a general new class of models, which...
In this paper I analyze a broad class of continuous-time jump diffusion models of asset returns. In ...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
This dissertation addresses various aspects of estimation and inference for multivariate stochastic ...
In this paper we exploit some recent computational advances in Bayesian inference, coupled with data...
This thesis examines the performance and implementation of the stochastic volatility model with jump...
Using the Efficient Method of Moments we estimate a continuous time diffusion for the stochastic vol...
Altres ajuts: RC-2012-StG 312474We develop novel methods for estimation and filtering of continuous-...
In this paper, the problem of sequentially learning parameters governing discretely observed jump-di...
1 This paper provides an optimal filtering methodology in discretely observed continuous-time jump-d...
In this article we use a partial integral-differential approach to construct and extend a non-linear...
Discrete-time stochastic volatility (SV) models have generated a considerable literature in financia...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
(The thesis contains 264310 characters incl. spaces, which corresponds to 106 normal pages) Continuo...
This paper introduces and studies the econometric properties of a general new class of models, which...
In this paper I analyze a broad class of continuous-time jump diffusion models of asset returns. In ...
In this paper we provide a unified methodology in order to conduct likelihood-based inference on the...
This dissertation addresses various aspects of estimation and inference for multivariate stochastic ...
In this paper we exploit some recent computational advances in Bayesian inference, coupled with data...
This thesis examines the performance and implementation of the stochastic volatility model with jump...
Using the Efficient Method of Moments we estimate a continuous time diffusion for the stochastic vol...