有什么区别?

IF 0.1 0 ARCHITECTURE
Lars Aagaard-Mogensen
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引用次数: 225

摘要

每天晚上的新闻中,我们都会听到道琼斯工业平均指数的水平以及“第一个差值”,即今天的价格加权平均值减去昨天的。每天晚上,正是这一系列最初的差异让我们兴奋或沮丧,因为它反映了当天股票是赚钱还是亏损。此外,这些差异形成了具有最多可寻址统计特征的数据序列。特别地,差异具有平稳性要求,这证明了标准分布结果的合理性,例如参数估计的渐近正态分布。差异出现在许多实际的时间序列中,因为它们似乎有所谓的“单位根”,这在数学上表明需要取差异。1976年,Dickey和Fuller开发了第一个众所周知的测试来决定是否需要差异。除了许多其他时间序列分析产品外,这些测试也是SAS/ETS®中的by SAS®ARIMA程序的一部分。我将回顾一下当时的开发和所需的计算是什么样的,谈谈为什么这是一个重要的问题,并重点介绍示例。引言时间序列建模和预测中使用的大多数方法要么是自回归综合移动平均模型(ARIMA)的直接应用,要么是这些模型的变体或特例。一个例子是指数平滑,这是一种预测方法,其中时间序列的第一个差值Yt-Yt-1被建模为独立误差项等的移动平均值et–θet-1。时间序列建模中涉及的大多数已知理论都是基于二阶平稳性的假设。这一概念是由以下要求定义的:Y的期望值是常数,并且任何两个观测值之间的协方差仅是它们在时间上的分离的函数。这意味着方差(时间间隔0)随时间是恒定的。在ARIMA模型的特定情况下,由自回归系数构建的多项式的根决定序列是否平稳。例如,如果Yt–1.2Yt-1+0.2Yt-2=et,这个所谓的“特征多项式”是m2-1.2m+.2=(m-.2)(m-1),根m=0.2,m=1(单位根)。单位根意味着级数不是静止的,但它的第一个差异是只要只有一个单位根,其余的都小于1。自单位根测试发展以来,单位根测试已成为时间序列分析师工具包的标准组成部分,其中第一个是以Wayne a.Fuller教授和我自己的名字命名的所谓Dickey Fuller测试。在这篇论文中,我将展示一些应用单位根测试的情况的信息示例,并将回忆一些测试的发展和70年代中期我和富勒教授在这方面工作时的计算状态。这篇论文的目的是向读者展示如何以及何时使用单位根检验,以及这些检验与回归t检验等标准检验有何不同,尽管它们使用相同的t检验公式。结果只会被审查。没有提供数学理论或证明,只有结果和如何使用它们以及一点历史。简介示例第一个示例由旧金山巨人队的获胜百分比组成,一直到1883年他们以纽约哥谭市开始的时候。图1是一张图表。竖线标志着从哥谭市到纽约巨人队,再到旧金山巨人队的过渡。数据看起来是静止的吗?从视觉上看,数据中似乎没有任何长期趋势,而且随着时间的推移,方差看起来相当恒定。猜测可能是这些是固定数据。我们能用一个正式的统计测试来支持这一点吗?
本文章由计算机程序翻译,如有差异,请以英文原文为准。
WHAT’S THE DIFFERENCE?
Each night on the news we hear the level of the Dow Jones Industrial Average along with the "first difference," which is today's price-weighted average minus yesterday's. It is that series of first differences that excites or depresses us each night as it reflects whether stocks made or lost money that day. Furthermore, the differences form the data series that has the most addressable statistical features. In particular, the differences have the stationarity requirement, which justifies standard distributional results such as asymptotically normal distributions of parameter estimates. Differencing arises in many practical time series because they seem to have what are called "unit roots," which mathematically indicate the need to take differences. In 1976, Dickey and Fuller developed the first well-known tests to decide whether differencing is needed. These tests are part of the by SAS® ARIMA procedure in SAS/ETS® in addition to many other time series analysis products. I'll review a little of what is was like to do the development and the required computing back then, say a little about why this is an important issue, and focus on examples. INTRODUCTION Most methodologies used in time series modelling and forecasting are either direct applications of autoregressive integrated moving average models (ARIMA) or are variations on or special cases of these. An example is exponential smoothing, a forecasting method in which the first differences of a time series, Yt -Yt-1, are modeled as a moving average et – θet-1, of independent error terms et. Most known theory involved in time series modelling is based on an assumption of second order stationarity. This concept is defined by the requirements that the expected value of Y is constant and the covariance between any two observations is a function only of their separation in time. This implies that the variance (time separation 0) is constant over time. In the specific case of ARIMA models, the roots of a polynomial constructed from the autoregressive coefficients determine whether the series is stationary. For example if Yt – 1.2Yt-1+0.2Yt-2=et, this so-called “characteristic polynomial” is m2-1.2m+.2 = (m-.2)(m-1) with roots m=0.2 and m=1 (a unit root). Unit roots imply that the series is not stationary but its first differences are as long as there is only one unit root and the rest are less than 1. Testing for unit roots has become a standard part of a time series analyst’s toolkit since the development of unit root tests, the first of which is the so-called Dickey-Fuller test named (by others) after Professor Wayne A. Fuller and myself. In this paper I will show some informative examples of situations in which unit root tests are applied and will reminisce a bit about the development of the test and the state of computing back in the mid 70’s when Professor Fuller and I were working on this. The intent of the paper is to show the reader how and when to use unit root tests and a little bit about how these differ from standard tests like regression t tests even though they use the same t test formulas. Results will only be reviewed. No mathematical theory or proofs are provided, only the results and how to use them along with a little bit of history. INTRODUCTORY EXAMPLES The first example consists of the winning percentages from the San Francisco Giants all the way back to when they began as the New York Gothams in 1883. Figure 1 is a graph. Vertical lines mark the transitions from Gothams to New York Giants and then to San Francisco Giants. Do the data seem stationary? Visually, there does not seem to be any long term trend in the data and the variance appears reasonably constant over time. The guess might be that these are stationary data. Can we back that up with a formal statistical test?
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Thresholds
Thresholds Multiple-
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