The combination of the Internet of Things and the Edge Computing gives many opportunities to support innovative applications close to end users. Numerous devices present in both infrastructures can collect data upon which various processing activities can be performed. However, the quality of the outcomes may be jeopardized by the presence of outliers. In this paper, we argue on a novel model for outliers detection by elaborating on a ‘soft’ approach. Our mechanism is built upon the concepts of candidate and confirmed outliers. Any data object that deviates from the population is confirmed as an outlier only after the study of its sequence of magnitude values as new data are incorporated into our decision making model. We adopt the combinat...
As said in signal processing, "One person's noise is another person's signal." F...
Abstract Outlier detection is a very useful technique in many applications, where data is generally ...
It is well-known that the existing theoretical models for outlier detection make assumptions that ma...
Outlier detection over sliding window is a fundamental problem in the domain of streaming data manag...
This thesis explores the data modeling for outlier detection techniques in three different applicati...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Outlier detection in the Internet of Things (IoT) is an essential challenge issue studied in numerou...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection is studied and applied in many domains. Outliers arise due to different reasons su...
The dissertation focuses on detecting contextual outliers from heterogeneous data sources. Modern se...
International audienceThe Internet of Things (IoT) is a growing paradigm that is revolutionary for I...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Outlier detection is a subfield of data mining to determine data points that notably deviate from th...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
In this paper, characteristics of data obtained from the sensors (used in OpenSense project) are ide...
As said in signal processing, "One person's noise is another person's signal." F...
Abstract Outlier detection is a very useful technique in many applications, where data is generally ...
It is well-known that the existing theoretical models for outlier detection make assumptions that ma...
Outlier detection over sliding window is a fundamental problem in the domain of streaming data manag...
This thesis explores the data modeling for outlier detection techniques in three different applicati...
Outliers are observations that are rare or exceptional in some sense. Outlier Detection is the proce...
Outlier detection in the Internet of Things (IoT) is an essential challenge issue studied in numerou...
Outliers, also called anomalies are data patterns that do not conform to the behavior that is expect...
Outlier detection is studied and applied in many domains. Outliers arise due to different reasons su...
The dissertation focuses on detecting contextual outliers from heterogeneous data sources. Modern se...
International audienceThe Internet of Things (IoT) is a growing paradigm that is revolutionary for I...
This paper studies the difficulties of outlier detection on inexact data. We study the normal instan...
Outlier detection is a subfield of data mining to determine data points that notably deviate from th...
Outliers are unexpected observations, which deviate from the majority of observations. Outlier detec...
In this paper, characteristics of data obtained from the sensors (used in OpenSense project) are ide...
As said in signal processing, "One person's noise is another person's signal." F...
Abstract Outlier detection is a very useful technique in many applications, where data is generally ...
It is well-known that the existing theoretical models for outlier detection make assumptions that ma...