Traditionally climate changes have been detected from long series of observations and long after they have happened. Our 'inverse sequential' procedure, for detecting change as soon as it occurs, describes the existing or most recent data by their frequency distribution. Its parameter(s) are estimated both from the existing set of observations and from the same set augmented by 1,2,....j new observations. Individual-value probability products ('likelihoods') are used to form ratios which yield two probabilities for erroneously accepting the existing parameter(s) as valid for the augmented data set, and vice versa. A genuine parameter change is signaled when these probabilities (or a more stable compound probability) show a progressive decre...
We analyze a time series of global temperature anomaly distributions to identify and estimate persis...
The problem of undocumented change-points in data sets appears in many areas of science. Mathematic...
Extreme weather events occurring around the world are a daily reminder that our climate is rapidly c...
Climate changes traditionally have been detected from long series of observations and long after the...
Progressive values of two probabilities are obtained for parameter estimates derived from an existin...
[1] Empirical studies of climate regime shifts typically use confirmatory statistical techniqueswith...
The detection of climate change and its attribution to the corresponding underlying processes is cha...
Inference regarding trends in climatic data series, including comparisons across different data sets...
This paper applies misspecification (M-S) testing to the detection of abrupt changes in climate regi...
A new inverse method for determining the anomalous mean forcing functions responsible for climate ch...
Detection and attribution of climate change has been a growing activity since the 90's when the ques...
International audienceWe propose here a new statistical approach to climate change detection and att...
The conventional multivariate, multifingerprint theory of climate change detection and attribution, ...
Two methods for detecting abrupt shifts in the variance – Integrated Cumulative Sum of Squares (ICSS...
We analyze a time series of global temperature anomaly distributions to identify and estimate persis...
The problem of undocumented change-points in data sets appears in many areas of science. Mathematic...
Extreme weather events occurring around the world are a daily reminder that our climate is rapidly c...
Climate changes traditionally have been detected from long series of observations and long after the...
Progressive values of two probabilities are obtained for parameter estimates derived from an existin...
[1] Empirical studies of climate regime shifts typically use confirmatory statistical techniqueswith...
The detection of climate change and its attribution to the corresponding underlying processes is cha...
Inference regarding trends in climatic data series, including comparisons across different data sets...
This paper applies misspecification (M-S) testing to the detection of abrupt changes in climate regi...
A new inverse method for determining the anomalous mean forcing functions responsible for climate ch...
Detection and attribution of climate change has been a growing activity since the 90's when the ques...
International audienceWe propose here a new statistical approach to climate change detection and att...
The conventional multivariate, multifingerprint theory of climate change detection and attribution, ...
Two methods for detecting abrupt shifts in the variance – Integrated Cumulative Sum of Squares (ICSS...
We analyze a time series of global temperature anomaly distributions to identify and estimate persis...
The problem of undocumented change-points in data sets appears in many areas of science. Mathematic...
Extreme weather events occurring around the world are a daily reminder that our climate is rapidly c...