Many modern applications of online changepoint detection require the ability to process high-frequency observations, sometimes with limited available computational resources. Online algorithms for detecting a change in mean often involve using a moving window, or specifying the expected size of change. Such choices affect which changes the algorithms have most power to detect. We introduce an algorithm, Functional Online CuSUM (FOCuS), which is equivalent to running these earlier methods simultaneously for all sizes of window, or all possible values for the size of change. Our theoretical results give tight bounds on the expected computational cost per iteration of FOCuS, with this being logarithmic in the number of observations. We show ho...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
Many modern applications of online changepoint detection require the ability to process high-frequen...
Many modern applications of online changepoint detection require the ability to process high-frequen...
This thesis introduces several novel computationally efficient methods for offline and online change...
This thesis introduces several novel computationally efficient methods for offline and online change...
International audienceWe address the problem of online detection of a change point via the online ve...
The increasing volume of data streams poses significant computational challenges for detecting chang...
We study the parametric online changepoint detection problem, where the underlying distribution of t...
International audienceWe address the problem of online detection of a change point via the online ve...
We introduce a new method for high-dimensional, online changepoint detection in settings where a p-v...
The increasing volume of data streams poses significant computational challenges for detecting chang...
International audienceWe propose a work based on the two classical methods, CUSUM and Shiryaev-Rober...
Time-series change detection has been studied in several fields. From sensor data, engineering syste...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
Many modern applications of online changepoint detection require the ability to process high-frequen...
Many modern applications of online changepoint detection require the ability to process high-frequen...
This thesis introduces several novel computationally efficient methods for offline and online change...
This thesis introduces several novel computationally efficient methods for offline and online change...
International audienceWe address the problem of online detection of a change point via the online ve...
The increasing volume of data streams poses significant computational challenges for detecting chang...
We study the parametric online changepoint detection problem, where the underlying distribution of t...
International audienceWe address the problem of online detection of a change point via the online ve...
We introduce a new method for high-dimensional, online changepoint detection in settings where a p-v...
The increasing volume of data streams poses significant computational challenges for detecting chang...
International audienceWe propose a work based on the two classical methods, CUSUM and Shiryaev-Rober...
Time-series change detection has been studied in several fields. From sensor data, engineering syste...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...
We introduce and study two new inferential challenges associated with the sequential detection of ch...