Linear trend analysis of time series is standard procedure in many scientific disciplines. If the number of data is large, a trend may be statistically significant even if data are scattered far from the trend line. This study introduces and tests a quality criterion for time trends referred to as statistical meaningfulness, which is a stricter quality criterion for trends than high statistical significance. The time series is divided into intervals and interval mean values are calculated. Thereafter, r2 and p values are calculated from regressions concerning time and interval mean values. If r2≥0.65 at p≤0.05 in any of these regressions, then the trend is regarded as statistically meaningful. Out of ten investigated time series fr...
Statistics are emphasized as an important role in quality control and reliability. Consequently, Tre...
This article presents a review of some modern approaches to trend extraction for one-dimensional tim...
Abstract In this paper we study automatically recognized trends and investigate their statistics. To...
Linear trend analysis of time series is standard procedure in many scientific disciplines. If the n...
How to decide whether a statistically significant trend is of practical relevance? In the context of...
Even though the trend components of economic time series were among the first to be distinguished, e...
The frequently used visual analysis of single-case data focuses on data aspects such as level, trend...
A program for estimation of trends in longitudinal research based on the moving average was presente...
Time series non-stationarity can be detected thanks to autocorrelation functions. But trend nature, ...
Time series represent sequences of data points where usually their order is defined by the time when...
This paper proposes and develops a nonparametric statistical procedure for estimating linear trend e...
The need to extract the trend from a given time series is a common problem in a wide variety of fiel...
Background: Many reports present analyses of trends over time based on multiple years of data from N...
Timely and accurate detection of turning points is an important issue in analysing time series data....
This paper proposes a test for the correct specification of a dynamic time-series model that is take...
Statistics are emphasized as an important role in quality control and reliability. Consequently, Tre...
This article presents a review of some modern approaches to trend extraction for one-dimensional tim...
Abstract In this paper we study automatically recognized trends and investigate their statistics. To...
Linear trend analysis of time series is standard procedure in many scientific disciplines. If the n...
How to decide whether a statistically significant trend is of practical relevance? In the context of...
Even though the trend components of economic time series were among the first to be distinguished, e...
The frequently used visual analysis of single-case data focuses on data aspects such as level, trend...
A program for estimation of trends in longitudinal research based on the moving average was presente...
Time series non-stationarity can be detected thanks to autocorrelation functions. But trend nature, ...
Time series represent sequences of data points where usually their order is defined by the time when...
This paper proposes and develops a nonparametric statistical procedure for estimating linear trend e...
The need to extract the trend from a given time series is a common problem in a wide variety of fiel...
Background: Many reports present analyses of trends over time based on multiple years of data from N...
Timely and accurate detection of turning points is an important issue in analysing time series data....
This paper proposes a test for the correct specification of a dynamic time-series model that is take...
Statistics are emphasized as an important role in quality control and reliability. Consequently, Tre...
This article presents a review of some modern approaches to trend extraction for one-dimensional tim...
Abstract In this paper we study automatically recognized trends and investigate their statistics. To...