999精品在线视频,手机成人午夜在线视频,久久不卡国产精品无码,中日无码在线观看,成人av手机在线观看,日韩精品亚洲一区中文字幕,亚洲av无码人妻,四虎国产在线观看 ?

A CONSISTENT TEST FOR CONDITIONAL SYMMETRY AND ITS ASYMPTOTICAL NORMALITY

2019-04-13 03:59:30CHENMinqiong
數學雜志 2019年2期

CHEN Min-qiong

(School of Economics and Trade,Xinhua College of Sun Yat-Sen University,Guangzhou 510520,China)

(School of Mathematics,Sun Yat-Sen University,Guangzhou 510275,China)

Abstract:In this paper,we investigate the problem of testing the conditional symmetry of a random vector given another random vector.We propose a new test based on the concept of conditional energy distance.The test statistic has the form of a U-statistic with random kernel.By using the theory of U-statistic,we prove that the test statistic is asymptotically normal under the null hypothesis of conditional symmetry and consistent against any conditional asymmetric distribution.

Keywords: conditional symmetry test;conditional energy distance;U-statistic with random kernel;consistent;asymptotical normality

1 Introduction

In many regression models,specially the econometric models,for the purpose of identification,some distributional assumptions are often imposed on the error term.The assumptions are conditional moment restrictions,independence between observations,and conditional symmetry around zero given the independent variables.There were a few semiparametric estimators proposed under conditional symmetry.Manski[1]and Newey[2]estimated regression models under conditional symmetry.Powell[3]and Newey[4]proposed semiparametric estimations for Tobit models under conditional symmetry.

Despite the wide use of the property of conditional symmetry,tests for conditional symmetry were not addressed very much in the literature.The first tests were proposed by Powell[5]for censored regression models and by Newey and Powell[6]for linear regression models via asymmetric least squares estimation.However these tests are unlikely to be consistent against all conditional asymmetric distributions.Zheng[7]proposed a consistent test of conditional symmetry using a kernel method,but the test statistic contains integral term and is hard to implement.Bai and Ng[8]proposed an alternative test for conditional symmetry for time series models.The test relied on the correct specification of both conditional mean and conditional variance.Hyndman and Yao[9]developed a bootstrap test for the symmetry of conditional density functions based on their improved methods for conditional density estimation,but they didn’t discuss the asymptotic properties of the test statistic,so it is not clear whether the test be consistent or not.Su[10]gave a simple consistent nonparametric test of conditional symmetry based on the principle of conditional characteristic functions,and he[11]also gave an unconditional method by transforming the conditional symmetry test problem to a unconditional test one.Both of the test statistics he presented in paper need a given characteristic function of the probability measure for the value space of the conditional variable.

In this paper,we propose a simple test for conditional symmetry based on the concept of conditional energy distance.The test is shown to be asymptotically normal under the null hypothesis of conditional symmetry and consistent against any conditional asymmetric distribution.Our test statistic only contains the Euclidean distances and kernel function,so it is easy to compute.

2 The Test Statistic for Conditional Symmetry

Székely[12]introduced a new concept named energy distance to measure the difference between two independent probability distributions.If X and Y are independent random vectors in Rpwith cumulative distribution functions(cdf)F and G respectively,then the energy distance between the distributions F and G is defined as

where X0is an i.i.d.copy of X and Y0is an i.i.d.copy of Y,E is the expected value,and|.|denotes the Euclidean norm.One can also write ε(F,G)as ε(X,Y),and call it the energy distance of X and Y.Székely[12]proved that for real-valued random variables this distance is exactly twice Harald Cramér’s distance,that is

In higher dimensions,however,the two distances are different because the energy distance is rotation invariant while Cramér’s distance is not.The equality becomes

where φX(t)is X’s characteristic function and φY(t)is Y ’s characteristic function,cp=.Thus ε(F,G)≥ 0 with equality to zero if and only if F=G.This property makes it2possible to use ε(F,G)for testing goodness-of- fit,homogeneity,etc.in a consistent way.We shall draw the consistent test statistic for conditional symmetry from the thought of energy distance.

Let X be a p dimensional random vector in Euclidean space Rp,Z be a r dimensional random vector in Euclidean space Rr.Denote f(x|z)as the conditional density function of X given Z.Consider the hypothesis

where S(Z)denotes the support of the density function of Z.Note that the null hypothesis(2.3)can be expressed equivalently as

Analogous to the concept of energy distance for two independent vectors,we can also define the conditional energy distance between X and?X given Z as follows.

Definition 2.1 The conditional energy distance?(X,?X|Z)between X and ?X with finite first moment given Z is defined as the square root of

where φX|Z(t)is the conditional characteristic function of X given Z.Therefore H0holds if and only if?(X,?X|Z)=0.

Let Wi=(Xi,Zi),i=1,2,···,n be a sample from the distribution of(X,Z)and denote W=(X,Z)={W1,W2,···,Wn}.Then for the specific value of ε2(X,?X|Z)when given Z=z,?(X,?X|Z)can be rewritten as the form of expectation by the following lemma.

Lemma 2.1 ε2(X,?X|Z=z)can be rewritten as the form of

Therefore,X|Z=zD=?X|Z=z for any z if and only if

Proof Given the event Z=z,we consider

According to the equation[12],

we have

Let

where f(Z)is the density function of Z.Consequently,X|ZD=?X|Z if and only if Sa=0.Naturally,we can choose test statistic for H0as

where Kik=K(H?1(Zi?Zk)).

The test statistic Unhas the advantage that it has zero mean under H0and hence it does not have a finite sample bias term.We show the consistent of Unand its asymptotical normality under H0.

Here,we choose the Gaussian kernel

in Rr,where H is a diagonal matrix diag{h,h,···,h}determined by bandwidth h.With the Gaussian kernel,Piωi(Z)/n is known to be consistent under the following regularity conditions.

(C1)

(C2)hr?→ 0 and nhr?→ ∞ as n?→ ∞.This requires h to be chosen appropriately according to n.

(C3)The density function of Z and the conditional density function f(·|z)are twice differentiable and all of the derivatives are bounded.

3 Asymptotical Normality of Ununder Null Hypothesis

Using the theory of U-statistic discussed by Fan and Li[13]and Lee[14],we have the following asymptotical normality.

Theorem 3.1(Weak convergence)Assume that conditions(C1)–(C3)hold and the second moment of X exists,if the conditional density of X given Z is symmetric and if h?→0 and nhr?→∞ as n?→∞,we have,where σ2is given in(3.5).

Proof Let Pn(W1,W2,W3)=(|X1+X2|?|X1?X2|)K13K23.Note that Pn(W1,W2,W3)is not symmetric with respect to W1,W2,W3,so we symmetrize Pnas

then Uncan be expressed as a U-statistic of degree 3 with random kernel,

Denote that

and

We use Lemma B.4 in Fan and Li[13]to obtain the asymptotical distribution of Ununder H0in the following steps.

Step 1 Under H0,EPn(W1,W2,W3)=0.Note that

Step 2 Under H0,E[Pn(W1,W2,W3)|W1]=0.Because

which also implies that E[Pn(W1,W3,W2)|W1]=0.Moreover,note that

implies E[Pn(W3,W2,W1)|W1]=0.By the definition of Pn(W1,W2,W3),we have

where

with

Similarly,we can prove the rest three terms in(3.4)are all Op(h2r),which implies that=EP2(W1,W2,W3)=Op(h2r).Thus==o(n)holds.

Step 4 We need to prove that,when n?→∞,

where

Moreover,

Therefore

Therefore,under the conditions nhr?→ ∞ and hr?→ 0,we obtain that

According to Lemma B.4 in Fan and Li[13],it follows that

where

with

and

Therefore,we finally obtain thatwith

4 Consistency of Un

The following result provides the consistency of Un.

Theorem 4.1(Consistency)Assume that conditions(C1)–(C3)hold and the second moment of X exists,then as n?→∞,we have

Proof We will complete this proof by two steps.

Step 1 Un=E[Un]+op(1).

We follow the notation in(3.1)and(3.2).According to Lee[14],we have

where

Therefore,we get

So Un=E[Un]+op(1)by the Chebyshev’s inequality.

Due to the definition of Pn(W1,W2,W3),it’s easy to verify that

Consider E[(|X1+X2|?|X1?X2|)K13K23]as follows

Thus,we get

Combining the results in Step 1 and Step 2,we can finally obtain that

主站蜘蛛池模板: 午夜老司机永久免费看片| 高清久久精品亚洲日韩Av| 久久久久久国产精品mv| 国产精品永久免费嫩草研究院| 成年A级毛片| 亚洲欧美成人在线视频| 无码AV高清毛片中国一级毛片| 成人免费一区二区三区| 女人18毛片久久| 成色7777精品在线| 香蕉久久国产超碰青草| 免费国产黄线在线观看| 亚洲福利片无码最新在线播放| 91综合色区亚洲熟妇p| 福利在线不卡一区| 色网站免费在线观看| 伊在人亚洲香蕉精品播放| 亚洲一区二区视频在线观看| 最新国产精品鲁鲁免费视频| 91久久国产热精品免费| www.日韩三级| 久久综合国产乱子免费| 精品视频91| 亚洲系列中文字幕一区二区| 97青草最新免费精品视频| 88av在线| 免费A级毛片无码免费视频| 激情国产精品一区| 特级aaaaaaaaa毛片免费视频| 国产成人精品男人的天堂下载 | 国产精品va免费视频| 国产理论一区| 青青青国产视频| 热思思久久免费视频| 日韩欧美国产另类| 欧美在线三级| 国内毛片视频| 久久精品亚洲热综合一区二区| 国产成人综合欧美精品久久| 九色在线观看视频| 国产一区亚洲一区| 国产91麻豆视频| 色综合国产| 18禁高潮出水呻吟娇喘蜜芽| 亚洲高清中文字幕在线看不卡| 亚洲精品天堂在线观看| 国产亚洲精品97在线观看| 九九九久久国产精品| 免费看a级毛片| 久996视频精品免费观看| 永久免费精品视频| 国产成人精品一区二区| 亚洲精品欧美日本中文字幕| 3344在线观看无码| 成人伊人色一区二区三区| 国产成人综合久久精品下载| 自偷自拍三级全三级视频| 免费无码在线观看| 人妻中文久热无码丝袜| 99热这里只有精品5| 久久亚洲国产一区二区| 在线一级毛片| 欧美综合一区二区三区| 片在线无码观看| 免费国产高清视频| 中国毛片网| 亚洲人成网站色7777| 一级香蕉视频在线观看| 91美女视频在线观看| 国产高清毛片| 狠狠色狠狠色综合久久第一次| 国产成人精品一区二区三在线观看| 91精品人妻互换| 亚洲高清在线播放| 亚洲美女高潮久久久久久久| 婷婷成人综合| 日韩精品欧美国产在线| 91麻豆精品国产高清在线| 国产特一级毛片| 亚洲嫩模喷白浆| 国产精品福利一区二区久久| 久久精品免费看一|