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31.
希尔柏脱和阿克曼试图导出一个普遍可行的判定标准 ,判定一联合演算公式是否永真。克劳斯用这个标准来论证传统推论式并排除不正确的推理式。但是 ,由希尔柏脱和阿克曼提出并经克劳斯转述的所谓联合演算的“判定标准”并不是一个十分可靠的标准。联合演算的最特殊的方面是 ,其演算不可能在单一的层次上进行 ,必须在两个层次上同时进行。第一个层次是命题逻辑的层次 ,第二个层次是谓词逻辑或类逻辑的层次。希尔柏脱和阿克曼试图在笫一个层次上解决问题 ,克劳斯则承袭其思路 ,总是想把一联合演算的公式化为使其竖号在公式最外面的形式 ,然后在判定过程中脱去竖号。忽视联合演算的两个层次 ,正是现行联合演算出现混乱和错误的根源  相似文献   
32.
In this article, we investigate the nonparametric estimation of the conditional density of a scalar response variable Y, given the explanatory variable X taking value in a Hilbert space when the observations are linked with a single index structure. The goal of this article is to present the asymptotic results such as pointwise almost complete consistency and the uniform almost complete convergence of the kernel estimation with rate for the conditional density in the setting of the α-mixing functional data, which extend the i.i.d case in Attaoui et al. (2011 Attaoui , S. , Laksaci , A. , Ould-Said , E. ( 2011 ). A note on the conditional density estimate in the single functional index model . Statist. Probab. Lett. 81 ( 1 ): 4553 .[Crossref], [Web of Science ®] [Google Scholar]) to the dependence setting. As an application, the convergence rate of the kernel estimation for the conditional mode is also obtained.  相似文献   
33.
Two general multivariate distributions in a real separable Hilbert space H are introduced in this article, one is multivariate Weibull distribution (denoted by GMWH), the other is multivariate Pareto distribution (denoted by GMPH). They are more general than the existing references. Some characterization theorems of the GMWH and GMPH via an intensively monotone operator are proved. The limiting behaviors and the interrelationship between the GMW and GMP in Euclidean space are also studied.  相似文献   
34.
Technical advances in many areas have produced more complicated high‐dimensional data sets than the usual high‐dimensional data matrix, such as the fMRI data collected in a period for independent trials, or expression levels of genes measured in different tissues. Multiple measurements exist for each variable in each sample unit of these data. Regarding the multiple measurements as an element in a Hilbert space, we propose Principal Component Analysis (PCA) in Hilbert space. The principal components (PCs) thus defined carry information about not only the patterns of variations in individual variables but also the relationships between variables. To extract the features with greatest contributions to the explained variations in PCs for high‐dimensional data, we also propose sparse PCA in Hilbert space by imposing a generalized elastic‐net constraint. Efficient algorithms to solve the optimization problems in our methods are provided. We also propose a criterion for selecting the tuning parameter.  相似文献   
35.
In this article, we propose a novel approach to fit a functional linear regression in which both the response and the predictor are functions. We consider the case where the response and the predictor processes are both sparsely sampled at random time points and are contaminated with random errors. In addition, the random times are allowed to be different for the measurements of the predictor and the response functions. The aforementioned situation often occurs in longitudinal data settings. To estimate the covariance and the cross‐covariance functions, we use a regularization method over a reproducing kernel Hilbert space. The estimate of the cross‐covariance function is used to obtain estimates of the regression coefficient function and of the functional singular components. We derive the convergence rates of the proposed cross‐covariance, the regression coefficient, and the singular component function estimators. Furthermore, we show that, under some regularity conditions, the estimator of the coefficient function has a minimax optimal rate. We conduct a simulation study and demonstrate merits of the proposed method by comparing it to some other existing methods in the literature. We illustrate the method by an example of an application to a real‐world air quality dataset. The Canadian Journal of Statistics 47: 524–559; 2019 © 2019 Statistical Society of Canada  相似文献   
36.
Measures of association between two sets of random variables have long been of interest to statisticians. The classical canonical correlation analysis (LCCA) can characterize, but also is limited to, linear association. This article introduces a nonlinear and nonparametric kernel method for association study and proposes a new independence test for two sets of variables. This nonlinear kernel canonical correlation analysis (KCCA) can also be applied to the nonlinear discriminant analysis. Implementation issues are discussed. We place the implementation of KCCA in the framework of classical LCCA via a sequence of independent systems in the kernel associated Hilbert spaces. Such a placement provides an easy way to carry out the KCCA. Numerical experiments and comparison with other nonparametric methods are presented.  相似文献   
37.
By considering the solution to a linear approximation of a nonlinear regression problem, a procedure for developing a para¬meter estimator, based upon a nonpammetric estimator of a para¬metric function, is given. The resulting estimators, which are determinable in closed form, are asymptotically normally distri¬buted and are optimal among the class of estimators based upon the function estimator. Further, in many cases, the estimator will have the same asymptotic distribution theory as the correspond¬ing maximum likelihood estimator. Estimators based upon the Kaplan-Meier quantile function are developed for randomly censored samples.  相似文献   
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39.
关于Hilbert-代数的两点注记   总被引:1,自引:0,他引:1  
Diego在文[2]中提出了Hilbert代数的概念。本文讨论了Hilbert代数的若干性质,探讨了BCI-代数与Hilbert代数之间的关系。  相似文献   
40.
Nonparametric functional model with functional responses has been proposed within the functional reproducing kernel Hilbert spaces (fRKHS) framework. Motivated by its superior performance and also its limitations, we propose a Gaussian process model whose posterior mode coincide with the fRKHS estimator. The Bayesian approach has several advantages compared to its predecessor. We also use the predictive process models adapted from the spatial statistics literature to overcome the computational limitations. Modifications of predictive process models are nevertheless critical in our context to obtain valid inferences. The numerical results presented demonstrate the effectiveness of the modifications.  相似文献   
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