We introduce an online outlier detection algorithm to detect outliers in a sequentially observed data stream. For this purpose, we use a two-stage filtering and hedging approach. In the first stage, we construct a multimodal probability density function to model the normal samples. In the second stage, given a new observation, we label it as an anomaly if the value of aforementioned density function is below a specified threshold at the newly observed point. In order to construct our multimodal density function, we use an incremental decision tree to construct a set of subspaces of the observation space. We train a single component density function of the exponential family using the observations, which fall inside each subspace represented...
Outlier detection refers to the problem of the identification and, where appropriate, the eliminatio...
Abstract—We consider the problem of outlier detection and interpretation. While most existing studie...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
Abstract. Outlier detection has recently become an important problem in many industrial and financia...
In recent years, advances in hardware technology have facilitated new ways of collecting data contin...
Abstract Outlier detection is a very useful technique in many applications, where data is generally ...
This paper describes a methodology for detecting anomalies from sequentially observed and potentiall...
Abstract. This work presents an adaptive outlier detection technique for data streams, called Automa...
The term "outlier" can generally be defined as an observation that is significantly different from t...
We study a variant of the thresholding bandit problem (TBP) in the context of outlier detection, whe...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
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...
To design an algorithm for detecting outliers over streaming data has become an important task in ma...
Outlier detection refers to the problem of the identification and, where appropriate, the eliminatio...
Abstract—We consider the problem of outlier detection and interpretation. While most existing studie...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
Outlier detection has attracted a wide range of attention for its broad applications, such as fault ...
Abstract. Outlier detection has recently become an important problem in many industrial and financia...
In recent years, advances in hardware technology have facilitated new ways of collecting data contin...
Abstract Outlier detection is a very useful technique in many applications, where data is generally ...
This paper describes a methodology for detecting anomalies from sequentially observed and potentiall...
Abstract. This work presents an adaptive outlier detection technique for data streams, called Automa...
The term "outlier" can generally be defined as an observation that is significantly different from t...
We study a variant of the thresholding bandit problem (TBP) in the context of outlier detection, whe...
Outlier Detection is a technique to detect anomalous events or outliers during analysis of the data ...
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...
To design an algorithm for detecting outliers over streaming data has become an important task in ma...
Outlier detection refers to the problem of the identification and, where appropriate, the eliminatio...
Abstract—We consider the problem of outlier detection and interpretation. While most existing studie...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...