Comparison of classic and novel change point detection methods for time series with changes in variance

Segmentation or change point detection is a very common topic in time series analysis, anomaly detection and pattern recognition. In Breitenberger et al. (2017) the time series generated by sensors with 3D accelerometers were analysed. It was noticed that such series consist of segments of independent and correlated observations. Hence the appropriate methods for change point detection for both data types must be implemented simultaneously. This paper provides an auxiliary comparison analysis which we intend to implement later for the above mentioned acceleration data. The available methods require usually a long execution time, so that it is time-consuming if several methods should be compared. In the framework of the present publication we want to give additional help for detecting a suitable change point detection method and for finding a good parameter setting. Our analysis is performed on simulated time series, that are normally distributed with constant but unknown mean and changes in variance.

Авторы
Breitenberger S.1 , Efrosinin D. 2, 3 , Hofmann N. 3 , Auer W.4
Издательство
UNIV STUDI SALENTO
Номер выпуска
1
Язык
Английский
Страницы
208-234
Статус
Опубликовано
Том
11
Год
2018
Организации
  • 1 Linz Ctr Mechatron GmbH LCM, 69 Altenberger Str, A-4040 Linz, Austria
  • 2 Johannes Kepler Univ Linz, 69 Altenberger Str, A-4040 Linz, Austria
  • 3 RUDN Univ, 6 Miklukho Maklaya St, Moscow 117198, Russia
  • 4 Smartbow GmbH, 3 Jutogasse, A-4675 Weibern, Austria
Ключевые слова
change point; time series segmentation; non-stationary time series; binary classification; CUSUM method
Дата создания
19.10.2018
Дата изменения
19.10.2018
Постоянная ссылка
https://repository.rudn.ru/ru/records/article/record/7515/
Поделиться

Другие записи