Interest in outlier detection methods is increasing because detecting outliers is an important operation for many applications such as detecting fraud transactions in credit card, network intrusion detection and data analysis in different domains. We are now in the big data era, and an important type of big data is data stream. With the increasing necessity for analyzing high-velocity data streams, it becomes difficult to apply older outlier detection methods efficiently. Local Outlier Factor (LOF) is a well-known outlier algorithm. A major challenge of LOF is that it requires the entire dataset and the distance values to be stored in memory. Another issue with LOF is that it needs to be recalculated from the beginning if any change occurs ...
The dissertation focuses on scaling outlier detection to work both on huge static as well as on dyna...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
Outlier detection is an integral part of data mining and has attracted much attention recently [8, 1...
Outlier detection is getting significant attention in the research field of big data. Detecting the ...
Abstract. Outlier detection has recently become an important problem in many industrial and financia...
With precipitously growing demand to detect outliers in data streams, many studies have been conduct...
The main objective the outlier detection is to find the data that are exceptional from other data in...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
As one of data mining techniques, outlier detection aims to discover outlying observations that devi...
In recent years, advances in hardware technology have facilitated new ways of collecting data contin...
To design an algorithm for detecting outliers over streaming data has become an important task in ma...
The fundamental and active research problem in a lot of fields is outlier detection. It is involved ...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
The fast growing of data observed in recent years does not seem to slow down. An increasing interest...
Abstract Outliers, or commonly referred to as exceptional cases,exist in many real-world databases. ...
The dissertation focuses on scaling outlier detection to work both on huge static as well as on dyna...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
Outlier detection is an integral part of data mining and has attracted much attention recently [8, 1...
Outlier detection is getting significant attention in the research field of big data. Detecting the ...
Abstract. Outlier detection has recently become an important problem in many industrial and financia...
With precipitously growing demand to detect outliers in data streams, many studies have been conduct...
The main objective the outlier detection is to find the data that are exceptional from other data in...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
As one of data mining techniques, outlier detection aims to discover outlying observations that devi...
In recent years, advances in hardware technology have facilitated new ways of collecting data contin...
To design an algorithm for detecting outliers over streaming data has become an important task in ma...
The fundamental and active research problem in a lot of fields is outlier detection. It is involved ...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
The fast growing of data observed in recent years does not seem to slow down. An increasing interest...
Abstract Outliers, or commonly referred to as exceptional cases,exist in many real-world databases. ...
The dissertation focuses on scaling outlier detection to work both on huge static as well as on dyna...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
Outlier detection is an integral part of data mining and has attracted much attention recently [8, 1...