Novelty detection has been well-studied for many years and has found a wide range of applications, but correctly identifying the outliers is still a hard problem because of the diverse variation and the small quantity of such outliers. We address the problem using several distinct characteristics of the outliers and the normal patterns. First, normal patterns are usually grouped together, forming clusters in the high density regions of the data space. Second, outliers are characteristically very different from the normal patterns, and hence tend to be located far away from the normal patterns in the data space. Third, the number of outliers is generally very small in a given dataset. Based on these observations, we can envisage that the app...
In this paper, we present our research on data mining approaches with the existence of obstacles. Al...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
In this study, we propose a new approach for novelty detection that uses kernel dependence technique...
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
Due to the absence or scarcity of outliers, designing a robust outlier detector is very challenging....
Abnormal pattern prediction has received a great deal of attention from both academia and industry, ...
The detection of outliers in the field of data mining (DM) and the process of knowledge discovery in...
There has been a pronounced increase in novelty detection research in recent years due to the drivin...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
The detection of anomalous or novel images given a training dataset of only clean reference data (in...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
A common setting for novelty detection assumes that labeled examples from the nominal class are avai...
In this paper, we present our research on data mining approaches with the existence of obstacles. Al...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
In this study, we propose a new approach for novelty detection that uses kernel dependence technique...
Outlier detection techniques are widely used in many applications such as credit-card fraud detectio...
Outlier detection aims to capture or identify uncommon events or instances. This technique has been ...
Novelty detection involves identifying new or unknown data that a machine learning system is not awa...
Due to the absence or scarcity of outliers, designing a robust outlier detector is very challenging....
Abnormal pattern prediction has received a great deal of attention from both academia and industry, ...
The detection of outliers in the field of data mining (DM) and the process of knowledge discovery in...
There has been a pronounced increase in novelty detection research in recent years due to the drivin...
Our thesis is that we can efficiently identify meaningful outliers in large, multidimensional datas...
The detection of anomalous or novel images given a training dataset of only clean reference data (in...
Novelty detection is concerned with recognising inputs that differ in some way from those that are u...
The outlier detection in the field of data mining and Knowledge Discovering from Data (KDD) is captu...
A common setting for novelty detection assumes that labeled examples from the nominal class are avai...
In this paper, we present our research on data mining approaches with the existence of obstacles. Al...
This thesis describes novel approaches to the problem of outlier detection. It is one of the most im...
In this study, we propose a new approach for novelty detection that uses kernel dependence technique...