In this paper we propose a novel self-exciting jump-diffusion model for oil price dynamics based on a Hawkes-type process. In particular, the jump intensity is stochastic and path dependent, implying that the occurrence of a jump will increase the probability of observing a new jump and this feature of the model aims at explaining the jumps clustering effect. Moreover, volatility is described by a stochastic process, which can jump simultaneously with prices. The model specification is completed by a stochastic convenience yield. In order to estimate the model we apply the two-stage Sequential Monte Carlo (SMC) sampler (Fulop and Li, 2019) to both spot and futures quotations. From the estimation results we find evidence of self-excitation i...
This study proposes a new Markov switching process with clustering effects. In this approach, a hidd...
We examine the clustering behaviour of price and variance jumps using high frequency data, modelled ...
For decades, geometric Brownian motion has proved a great success in describing the price process, b...
In this paper we propose a novel self-exciting jump-diffusion model for oil price dynamics based on ...
A way to model the clustering of jumps in asset prices consists in combining a diffusion process wit...
Although crude oil is a major source of energy throughout the world, unexpected jumps in its price c...
This paper investigates the dynamic behaviour of jumps in financial prices and volatility. The propo...
Oil markets are subject to extreme shocks (e.g. Iraq’s invasion of Kuwait), causing the oil market p...
The objective of this research is to model the behavior of oil returns. The volatility of oil return...
Effective hedging strategies on oil spot and future markets are relevant in reducing price volatilit...
December 2012The paper proposes a new class of continuous-time asset pricing models where whenever t...
In many natural resources price, the intrinsic stochastic element driving the pricing process is the...
This thesis investigates models of stochastic volatility which are able to accommodate the clusterin...
We evaluate alternative models of the volatility of commodity futures prices based on high-frequency...
This study proposes a new Markov switching process with clustering effects. In this approach, a hidd...
We examine the clustering behaviour of price and variance jumps using high frequency data, modelled ...
For decades, geometric Brownian motion has proved a great success in describing the price process, b...
In this paper we propose a novel self-exciting jump-diffusion model for oil price dynamics based on ...
A way to model the clustering of jumps in asset prices consists in combining a diffusion process wit...
Although crude oil is a major source of energy throughout the world, unexpected jumps in its price c...
This paper investigates the dynamic behaviour of jumps in financial prices and volatility. The propo...
Oil markets are subject to extreme shocks (e.g. Iraq’s invasion of Kuwait), causing the oil market p...
The objective of this research is to model the behavior of oil returns. The volatility of oil return...
Effective hedging strategies on oil spot and future markets are relevant in reducing price volatilit...
December 2012The paper proposes a new class of continuous-time asset pricing models where whenever t...
In many natural resources price, the intrinsic stochastic element driving the pricing process is the...
This thesis investigates models of stochastic volatility which are able to accommodate the clusterin...
We evaluate alternative models of the volatility of commodity futures prices based on high-frequency...
This study proposes a new Markov switching process with clustering effects. In this approach, a hidd...
We examine the clustering behaviour of price and variance jumps using high frequency data, modelled ...
For decades, geometric Brownian motion has proved a great success in describing the price process, b...