Abstract. Outlier detection has recently become an important problem in many industrial and financial applications. This problem is further complicated by the fact that in many cases, outliers have to be detected from data streams that arrive at an enormous pace. In this paper, an incremental LOF (Local Outlier Factor) algorithm, appropriate for detecting outliers in data streams, is proposed. The proposed incremental LOF algorithm provides equivalent detection performance as the iterated static LOF algorithm (applied after insertion of each data record), while requiring significantly less computational time. In addition, the incremental LOF algorithm also dynamically updates the profiles of data points. This is a very important property, s...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
© 2019 Copyright held by the owner/author(s). Local outlier techniques are known to be effective for...
Over the past couple of years, machine learning methods—especially the outlier detection ones—have a...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
With precipitously growing demand to detect outliers in data streams, many studies have been conduct...
Interest in outlier detection methods is increasing because detecting outliers is an important opera...
Outlier detection is getting significant attention in the research field of big data. Detecting the ...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
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...
Abstract. This work presents an adaptive outlier detection technique for data streams, called Automa...
As one of data mining techniques, outlier detection aims to discover outlying observations that devi...
Abstract Outliers, or commonly referred to as exceptional cases,exist in many real-world databases. ...
The fast growing of data observed in recent years does not seem to slow down. An increasing interest...
The fundamental and active research problem in a lot of fields is outlier detection. It is involved ...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
© 2019 Copyright held by the owner/author(s). Local outlier techniques are known to be effective for...
Over the past couple of years, machine learning methods—especially the outlier detection ones—have a...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
With precipitously growing demand to detect outliers in data streams, many studies have been conduct...
Interest in outlier detection methods is increasing because detecting outliers is an important opera...
Outlier detection is getting significant attention in the research field of big data. Detecting the ...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
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...
Abstract. This work presents an adaptive outlier detection technique for data streams, called Automa...
As one of data mining techniques, outlier detection aims to discover outlying observations that devi...
Abstract Outliers, or commonly referred to as exceptional cases,exist in many real-world databases. ...
The fast growing of data observed in recent years does not seem to slow down. An increasing interest...
The fundamental and active research problem in a lot of fields is outlier detection. It is involved ...
Outlier detection is a significant research area in data mining. An Outlier is a point or a set of p...
© 2019 Copyright held by the owner/author(s). Local outlier techniques are known to be effective for...
Over the past couple of years, machine learning methods—especially the outlier detection ones—have a...