Outlier (or anomaly) detection is a very broad field which has been studied in the context of a large number of research areas like statistics, data mining, sensor networks, environmental science, distributed systems, spatio-temporal mining, etc. The first few articles in outlier detection focused on time series based outliers (in statistics). Since then, outlier detection has been studied on a large variety of data types including high-dimensional data, uncertain data, stream data, network data, time series data, spatial data, and spatio-temporal data. While there have been many tutorials and surveys for general outlier detection, we focus on outlier detection for temporal data in this tutorial. A large number of applications generate temp...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
Abstract—In the statistics community, outlier detection for time series data has been studied for de...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
Data mining provides a way for finding hidden and useful knowledge from the large amount of data.usu...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
Spatio-temporal data mining is a growing research area dedicated to the development of algorithms an...
Abstract- Outlier detection is an active area for research in data set mining community. Finding out...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
in 2013. He worked for Yahoo! Bangalore for two years. His research interests are in the areas o
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Abstract — Outlier detection in vehicle traffic data is a practical problem that has gained traction...
The study of networks has emerged in diverse disciplines as a means of analyzing complex relation-sh...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...
Abstract—In the statistics community, outlier detection for time series data has been studied for de...
Recent advances in technology have brought major breakthroughs in data collection, enabling a large ...
Data mining provides a way for finding hidden and useful knowledge from the large amount of data.usu...
Outlier detection has relevance in many modern day contexts, including health care, engineering, dat...
Spatio-temporal data mining is a growing research area dedicated to the development of algorithms an...
Abstract- Outlier detection is an active area for research in data set mining community. Finding out...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
in 2013. He worked for Yahoo! Bangalore for two years. His research interests are in the areas o
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Abstract — Outlier detection in vehicle traffic data is a practical problem that has gained traction...
The study of networks has emerged in diverse disciplines as a means of analyzing complex relation-sh...
Outlier detection is one of the major data mining methods. This paper proposes a three-step approach...
Abstract — A phenomenal interest in big data among research community has emerged. Outlier detection...
Outlier detection refers to the detection of unexpected situations in the data. Outliers are fraud, ...