The statistical approach to the analysis of time-series

M. Bartlett
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引用次数: 10

Abstract

The problems of statistics are broadly classified into problems of specification and problems of inference, and a brief recapitulation is given of some standard methods in statistics, based on the use of the probability p (S/H) of the data S on the specification H (or on the use of the equivalent likelihood function). The general problems of specification and inference for time-series are then also briefly surveyed. To conclude Part I, the relation is examined between the information (entropy) concept used in communication theory, associated with specification, and Fisher's information concept used in statistics, associated with inference. In Part II some detailed methods of analysis are described with special reference to stationary time-series. The first method is concerned with the analysis of probability chains (in which the variable X can assume only a finite number of values or 'states', and the time t is discrete). The next section deals with autoregressive and autocorrelation analysis, for series defined either for discrete or continuous time, including proper allowance for sampling fluctuations; in particular, least-squares estimation of unknown coefficients in linear autogressive representations, and Quenouille's goodness of fit test for the correlogram, are illustrated. Harmonic or periodogram analysis is theoretically equivalent to autocorrelation analysis, but in the case of time-series with continuous spectra is valueless in practice without some smoothing device, owing to the peculiar distributional properties of the observed periodogram; one such arithmetical device is described in Section 7. Finally the precise use of the likelihood function (when available) is illustrated by reference to two different theoretical series giving rise to the same autocorrelation function.
时间序列分析的统计方法
统计问题大致分为说明问题和推理问题,并根据数据S在说明H上的概率p (S/H)的使用(或等效似然函数的使用),简要概述了统计中的一些标准方法。对时间序列的规范和推理的一般问题也作了简要的探讨。在第一部分的结语中,我们考察了通信理论中与规范相关的信息(熵)概念与统计学中与推理相关的费雪信息概念之间的关系。第二部分详细介绍了平稳时间序列的分析方法。第一种方法涉及概率链的分析(其中变量X只能假设有限数量的值或“状态”,并且时间t是离散的)。下一节讨论离散或连续时间序列的自回归和自相关分析,包括对采样波动的适当允许;特别说明了线性渐进表示中未知系数的最小二乘估计,以及相关图的奎诺维尔拟合优度检验。谐波分析或周期图分析在理论上等同于自相关分析,但对于具有连续谱的时间序列,由于观察到的周期图具有特殊的分布特性,如果没有一些平滑装置,在实践中是没有价值的;第7节描述了一种这样的算术装置。最后,通过引用产生相同自相关函数的两个不同的理论序列来说明似然函数(当可用时)的精确使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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