scispace - formally typeset
Journal ArticleDOI

Inference about the change-point from cumulative sum tests

D. V. Hinkley
- 01 Dec 1971 - 
- Vol. 58, Iss: 3, pp 509-523
Reads0
Chats0
TLDR
In this paper, the authors examined a secondary aspect, where the departure from initial conditions has taken place in a sequence of normal random variables, where initially the mean and the variance o2 were known.
Abstract
SUMMARY The point of change in mean in a sequence of normal random variables can be estimated from a cumulative sum test scheme. The asymptotic distribution of this estimate and associated test statistics are derived and numerical results given. The relation to likelihood inference is emphasized. Asymptotic results are compared with empirical sequential results, and some practical implications are discussed. The cumulative sum scheme for detecting distributional change in a sequence of random variables is a well-known technique in quality control, dating from the paper of Page (1954) to the recent expository account by van Dobben de Bruyn (1968). Throughout the literature on cumulative sum schemes the emphasis is placed on tests of departure from initial conditions. The purpose of this paper is to examine a secondary aspect: estimation of the index T in a sequence {xt}, where the departure from initial conditions has taken place. The work is closely related to an earlier paper by Hinkley (1970), in which maximum likelihood estimation and inference were discussed. We consider specifically sequences of normal random variables x1, ..., xT, say, where initially the mean 00 and the variance o2 are known. A cumulative sum, cusum, scheme is used to detect possible change in mean from 00, and for simplicity suppose that it is a one-sided scheme for detecting decrease in mean. Then the procedure is to compute the cumulative sums t

read more

Citations
More filters
Journal ArticleDOI

Detection of abrupt changes: theory and application

TL;DR: A unified framework for the design and the performance analysis of the algorithms for solving change detection problems and links with the analytical redundancy approach to fault detection in linear systems are established.
Journal ArticleDOI

Use of Cumulative Sums of Squares for Retrospective Detection of Changes of Variance

TL;DR: In this article, the authors proposed an iterated cumulative sum of squares (ICSS) algorithm to detect variance changes in a sequence of independent observations, and compared the results of the ICSS algorithm to those obtained by a Bayesian approach or by likelihood ratio tests.
Journal ArticleDOI

Detecting changes in signals and systems—a survey

TL;DR: A tentative general framework for change detection in signals and systems is presented, based upon a non-exhaustive survey of available methods, which are presented according to the increasing order of complexity of the change problem.
Journal ArticleDOI

Epileptogenicity of brain structures in human temporal lobe epilepsy: a quantified study from intracerebral EEG.

TL;DR: A statistically significant correlation was found between the duration of epilepsy and the number of structures disclosing high epileptogenicity suggesting that MTLE is a gradually evolving process in which the epileptogensicity of the temporal lobe tends to increase with time.
References
More filters
Journal ArticleDOI

Continuous inspection schemes

Journal ArticleDOI

Inference about the change-point in a sequence of binomial variables

TL;DR: In this paper, the problem of making inference about the point in a sequence of zero-one variables at which the binomial parameter changes is discussed, and the asymptotic distribution of the maximum likelihood estimate of the change-point is derived in computable form using random walk results.
Journal ArticleDOI

Estimating the current mean of a normal distribution which is subjected to changes in time

TL;DR: In this paper, a Bayesian approach is used to estimate the current mean of an object in a given trajectory from a series of observations, and a sequence of tests are designed to locate the last time point of change.
Related Papers (5)