924 research outputs found

    On a family of test statistics for discretely observed diffusion processes

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    We consider parametric hypotheses testing for multidimensional ergodic diffusion processes observed at discrete time. We propose a family of test statistics, related to the so called ϕ\phi-divergence measures. By taking into account the quasi-likelihood approach developed for studying the stochastic differential equations, it is proved that the tests in this family are all asymptotically distribution free. In other words, our test statistics weakly converge to the chi squared distribution. Furthermore, our test statistic is compared with the quasi likelihood ratio test. In the case of contiguous alternatives, it is also possible to study in detail the power function of the tests. Although all the tests in this family are asymptotically equivalent, we show by Monte Carlo analysis that, in the small sample case, the performance of the test strictly depends on the choice of the function ϕ\phi. Furthermore, in this framework, the simulations show that there are not uniformly most powerful tests

    Divergences Test Statistics for Discretely Observed Diffusion Processes

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    In this paper we propose the use of ϕ\phi-divergences as test statistics to verify simple hypotheses about a one-dimensional parametric diffusion process \de X_t = b(X_t, \theta)\de t + \sigma(X_t, \theta)\de W_t, from discrete observations {Xti,i=0,...,n}\{X_{t_i}, i=0, ..., n\} with ti=iΔnt_i = i\Delta_n, i=0,1,>...,ni=0, 1, >..., n, under the asymptotic scheme Δn0\Delta_n\to0, nΔnn\Delta_n\to\infty and nΔn20n\Delta_n^2\to 0. The class of ϕ\phi-divergences is wide and includes several special members like Kullback-Leibler, R\'enyi, power and α\alpha-divergences. We derive the asymptotic distribution of the test statistics based on ϕ\phi-divergences. The limiting law takes different forms depending on the regularity of ϕ\phi. These convergence differ from the classical results for independent and identically distributed random variables. Numerical analysis is used to show the small sample properties of the test statistics in terms of estimated level and power of the test

    Change point estimation for the telegraph process observed at discrete times

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    The telegraph process models a random motion with finite velocity and it is usually proposed as an alternative to diffusion models. The process describes the position of a particle moving on the real line, alternatively with constant velocity +v+ v or v-v. The changes of direction are governed by an homogeneous Poisson process with rate λ>0.\lambda >0. In this paper, we consider a change point estimation problem for the rate of the underlying Poisson process by means of least squares method. The consistency and the rate of convergence for the change point estimator are obtained and its asymptotic distribution is derived. Applications to real data are also presented

    Invariant and Metric Free Proximities for Data Matching: An R Package

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    Data matching is a typical statistical problem in non experimental and/or observational studies or, more generally, in cross-sectional studies in which one or more data sets are to be compared. Several methods are available in the literature, most of which based on a particular metric or on statistical models, either parametric or nonparametric. In this paper we present two methods to calculate a proximity which have the property of being invariant under monotonic transformations. These methods require at most the notion of ordering. An open-source software in the form of a R package is also presented.

    Least squares volatility change point estimation for partially observed diffusion processes

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    A one dimensional diffusion process X={Xt,0tT}X=\{X_t, 0\leq t \leq T\}, with drift b(x)b(x) and diffusion coefficient σ(θ,x)=θσ(x)\sigma(\theta, x)=\sqrt{\theta} \sigma(x) known up to θ>0\theta>0, is supposed to switch volatility regime at some point t(0,T)t^*\in (0,T). On the basis of discrete time observations from XX, the problem is the one of estimating the instant of change in the volatility structure tt^* as well as the two values of θ\theta, say θ1\theta_1 and θ2\theta_2, before and after the change point. It is assumed that the sampling occurs at regularly spaced times intervals of length Δn\Delta_n with nΔn=Tn\Delta_n=T. To work out our statistical problem we use a least squares approach. Consistency, rates of convergence and distributional results of the estimators are presented under an high frequency scheme. We also study the case of a diffusion process with unknown drift and unknown volatility but constant
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