In actual scenarios, industrial and cloud computing platforms usually need to monitor equipment and traffic anomalies through multivariable time series data. However, the existing anomaly detection methods can not capture the long-distance temporal correlations of data and the potential relationships between features simultaneously, and only have high detection accuracy for specific time sequence anomaly detection scenarios without good generalization ability. This paper proposes a time-series anomaly-detection framework for multiple scenarios, Anomaly-PTG (anomaly parallel transformer GRU), given the above limitations. The model uses the parallel transformer GRU as the information extraction module of the model to learn the long-distance c...
University of Minnesota M.S. thesis. May 2010. Major: Computer Science. Advisor: Prof.Vipin Kumar. 1...
Anomaly detection on time series data is increasingly common across various industrial domains that ...
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
In actual scenarios, industrial and cloud computing platforms usually need to monitor equipment and ...
As technologies for storing time-series data such as smartwatches and smart factories become common,...
As industries become automated and connectivity technologies advance, a wide range of systems contin...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Anomaly detection in multivariate time series is an important problem with applications in several d...
The present-day accessibility of technology enables easy logging of both sensor values and event log...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
This thesis has investigated the anomaly detection problem on multivariate time series. In particula...
Efficient anomaly detection and diagnosis in multivariate time- series data is of great importance f...
The complexity of network infrastructures is exponentially growing. Real-time monitoring of these in...
Through continuous observation and modelling of normal behavior in networks, Anomaly-based Network I...
University of Minnesota M.S. thesis. May 2010. Major: Computer Science. Advisor: Prof.Vipin Kumar. 1...
Anomaly detection on time series data is increasingly common across various industrial domains that ...
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...
In actual scenarios, industrial and cloud computing platforms usually need to monitor equipment and ...
As technologies for storing time-series data such as smartwatches and smart factories become common,...
As industries become automated and connectivity technologies advance, a wide range of systems contin...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
In the present-day, sensor data and textual logs are generated by many devices. Analysing these time...
Anomaly detection in multivariate time series is an important problem with applications in several d...
The present-day accessibility of technology enables easy logging of both sensor values and event log...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
This thesis has investigated the anomaly detection problem on multivariate time series. In particula...
Efficient anomaly detection and diagnosis in multivariate time- series data is of great importance f...
The complexity of network infrastructures is exponentially growing. Real-time monitoring of these in...
Through continuous observation and modelling of normal behavior in networks, Anomaly-based Network I...
University of Minnesota M.S. thesis. May 2010. Major: Computer Science. Advisor: Prof.Vipin Kumar. 1...
Anomaly detection on time series data is increasingly common across various industrial domains that ...
This paper proposes a multi-dimensional time series anomaly data detection method based on correlati...