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1.
Reduced rank regression (RRR) models with time varying heterogeneity are considered. Standard information criteria for selecting cointegrating rank are shown to be weakly consistent in semiparametric RRR models in which the errors have general nonparametric short memory components and shifting volatility provided the penalty coefficient Cn→∞Cn and Cn/n→0Cn/n0 as n→∞n. The AIC criterion is inconsistent and its limit distribution is given. The results extend those in Cheng and Phillips (2009a) and are useful in empirical work where structural breaks or time evolution in the error variances is present. An empirical application to exchange rate data is provided.  相似文献   

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In a seminal contribution, Ross (1976) showed that a static finite state-space market can be completed by supplementing the primitive securities with ordinary call and put options. Galvani (2009) extends this result to norm separable LpLp-spaces, with 1≤p<∞1p<. This study concludes that options maintain the same spanning power in the space of bounded payoffs topologized by the duality with the space of the state price densities. In particular, under mild assumptions on the probability space, options written on a claim that is a.s. equal to an injective function complete the market.  相似文献   

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In this paper we show that the Quasi ML estimation method yields consistent Random and Fixed Effects estimators for the autoregression parameter ρρ in the panel AR(1) model with arbitrary initial conditions and possibly time-series heteroskedasticity even when the error components are drawn from heterogeneous distributions. We investigate both analytically and by means of Monte Carlo simulations the properties of the QML estimators for ρρ. The RE(Q)MLE for ρρ is asymptotically at least as robust to individual heterogeneity and, when the data are i.i.d. and normal, at least as efficient as the FE(Q)MLE for ρρ. Furthermore, the QML estimators for ρρ only suffer from a ‘weak moment conditions’ problem when ρρ is close to one if the cross-sectional average of the variances of the errors is (almost) constant over time, e.g. under time-series homoskedasticity. However, in this case the QML estimators for ρρ are still consistent when ρρ is local to or equal to one although they converge to a non-normal possibly asymmetric distribution at a rate that is lower than N1/2N1/2 but at least N1/4N1/4. Finally, we study the finite sample properties of two types of estimators for the standard errors of the QML estimators for ρρ, and the bounds of QML based confidence intervals for ρρ.  相似文献   

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This paper is about how to estimate the integrated covariance X,YTX,YT of two assets over a fixed time horizon [0,T][0,T], when the observations of XX and YY are “contaminated” and when such noisy observations are at discrete, but not synchronized, times. We show that the usual previous-tick covariance estimator is biased, and the size of the bias is more pronounced for less liquid assets. This is an analytic characterization of the Epps effect. We also provide the optimal sampling frequency which balances the tradeoff between the bias and various sources of stochastic error terms, including nonsynchronous trading, microstructure noise, and time discretization. Finally, a two scales covariance estimator is provided which simultaneously cancels (to first order) the Epps effect and the effect of microstructure noise. The gain is demonstrated in data.  相似文献   

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Classical estimation techniques for linear models either are inconsistent, or perform rather poorly, under αα-stable error densities; most of them are not even rate-optimal. In this paper, we propose an original one-step R-estimation method and investigate its asymptotic performances under stable densities. Contrary to traditional least squares, the proposed R-estimators remain root-nn consistent (the optimal rate) under the whole family of stable distributions, irrespective of their asymmetry and tail index. While parametric stable-likelihood estimation, due to the absence of a closed form for stable densities, is quite cumbersome, our method allows us to construct estimators reaching the parametric efficiency bounds associated with any prescribed values (α0,b0)(α0,b0) of the tail index αα and skewness parameter bb, while preserving root-nn consistency under any (α,b)(α,b) as well as under usual light-tailed densities. The method furthermore avoids all forms of multidimensional argmin computation. Simulations confirm its excellent finite-sample performances.  相似文献   

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We propose a test for the slope of a trend function when it is a priori unknown whether the series is trend-stationary or contains an autoregressive unit root. The procedure is based on a Feasible Quasi Generalized Least Squares method from an AR(1) specification with parameter αα, the sum of the autoregressive coefficients. The estimate of αα is the OLS estimate obtained from an autoregression applied to detrended data and is truncated to take a value 1 whenever the estimate is in a T−δTδ neighborhood of 1. This makes the estimate “super-efficient” when α=1α=1 and implies that inference on the slope parameter can be performed using the standard Normal distribution whether α=1α=1 or |α|<1|α|<1. Theoretical arguments and simulation evidence show that δ=1/2δ=1/2 is the appropriate choice. Simulations show that our procedure has better size and power properties than the tests proposed by [Bunzel, H., Vogelsang, T.J., 2005. Powerful trend function tests that are robust to strong serial correlation with an application to the Prebish–Singer hypothesis. Journal of Business and Economic Statistics 23, 381–394] and [Harvey, D.I., Leybourne, S.J., Taylor, A.M.R., 2007. A simple, robust and powerful test of the trend hypothesis. Journal of Econometrics 141, 1302–1330].  相似文献   

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In this paper, we derive two shrinkage estimators for minimum-variance portfolios that dominate the traditional estimator with respect to the out-of-sample variance of the portfolio return. The presented results hold for any number of assets d≥4d4 and number of observations n≥d+2nd+2. The small-sample properties of the shrinkage estimators as well as their large-sample properties for fixed dd but n→∞n and n,d→∞n,d but n/d→q≤∞n/dq are investigated. Furthermore, we present a small-sample test for the question of whether it is better to completely ignore time series information in favor of naive diversification.  相似文献   

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In production theory and efficiency analysis, we estimate the production frontier, the locus of the maximal attainable level of an output (the production), given a set of inputs (the production factors). In other setups, we estimate rather an input (or cost) frontier, the minimal level of the input (cost) attainable for a given set of outputs (goods or services produced). In both cases the problem can be viewed as estimating a surface under shape constraints (monotonicity, …). In this paper we derive the theory of an estimator of the frontier having an asymptotic normal distribution. It is based on the order-mm partial frontier where we let the order mm to converge to infinity when n→∞n but at a slow rate. The final estimator is then corrected for its inherent bias. We thus can view our estimator as a regularized frontier. In addition, the estimator is more robust to extreme values and outliers than the usual nonparametric frontier estimators, like FDH and than the unregularized order-mnmn estimator of Cazals et al. (2002) converging to the frontier with a Weibull distribution if mn→∞mn fast enough when n→∞n. The performances of our estimators are evaluated in finite samples and compared to other estimators through some Monte-Carlo experiments, showing a better behavior (in terms of robustness, bias, MSE and achieved coverage of the resulting confidence intervals). The practical implementation and the robustness properties are illustrated through simulated data sets but also with a real data set.  相似文献   

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An infinite-order asymptotic expansion is given for the autocovariance function of a general stationary long-memory process with memory parameter d∈(−1/2,1/2)d(1/2,1/2). The class of spectral densities considered includes as a special case the stationary and invertible ARFIMA(p,d,qp,d,q) model. The leading term of the expansion is of the order O(1/k1−2d)O(1/k12d), where kk is the autocovariance order, consistent with the well known power law decay for such processes, and is shown to be accurate to an error of O(1/k3−2d)O(1/k32d). The derivation uses Erdélyi’s [Erdélyi, A., 1956. Asymptotic Expansions. Dover Publications, Inc, New York] expansion for Fourier-type integrals when there are critical points at the boundaries of the range of integration - here the frequencies {0,2π}{0,2π}. Numerical evaluations show that the expansion is accurate even for small kk in cases where the autocovariance sequence decays monotonically, and in other cases for moderate to large kk. The approximations are easy to compute across a variety of parameter values and models.  相似文献   

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In a sample-selection model with the ‘selection’ variable QQ and the ‘outcome’ variable YY, YY is observed only when Q=1Q=1. For a treatment DD affecting both QQ and YY, three effects are of interest: ‘participation  ’ (i.e., the selection) effect of DD on QQ, ‘visible performance  ’ (i.e., the observed outcome) effect of DD on Y≡QYYQY, and ‘invisible performance  ’ (i.e., the latent outcome) effect of DD on YY. This paper shows the conditions under which the three effects are identified, respectively, by the three corresponding mean differences of QQ, YY, and Y|Q=1Y|Q=1 (i.e., Y|Q=1Y|Q=1) across the control (D=0D=0) and treatment (D=1D=1) groups. Our nonparametric estimators for those effects adopt a two-sample framework and have several advantages over the usual matching methods. First, there is no need to select the number of matched observations. Second, the asymptotic distribution is easily obtained. Third, over-sampling the control/treatment group is allowed. Fourth, there is a built-in mechanism that takes into account the ‘non-overlapping support problem’, which the usual matching deals with by choosing a ‘caliper’. Fifth, a sensitivity analysis to gauge the presence of unobserved confounders is available. A simulation study is conducted to compare the proposed methods with matching methods, and a real data illustration is provided.  相似文献   

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Most panel unit root tests are designed to test the joint null hypothesis of a unit root for each individual series in a panel. After a rejection, it will often be of interest to identify which series can be deemed to be stationary and which series can be deemed nonstationary. Researchers will sometimes carry out this classification on the basis of nn individual (univariate) unit root tests based on some ad hoc significance level. In this paper, we suggest and demonstrate how to use the false discovery rate (FDR)(FDR) in evaluating I(1)/I(0)I(1)/I(0) classifications.  相似文献   

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