We propose a novel approach which combines the use of Bayesian network and probabilistic association rules to discover and explain anomalies in data. The Bayesian network allows us to organize information in order to capture both correlation and causality in the feature space, while the probabilistic association rules have a structure similar to association mining rules. In particular, we focus on two types of rules: (i) low support & high confidence and, (ii) high support & low confidence. New data points which satisfy either one of the two rules conditioned on the Bayesian network are the candidate anomalies. We perform extensive experiments on well-known benchmark data sets and demonstrate that our approach is able to identify anomalies ...
Abstract—Anomaly extraction refers to automatically finding, in a large set of flows observed during...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...
This paper proposes to integrate two very different kinds of methods for data mining, namely the con...
Data mining is a statistical process to extract useful information, unknown patterns and interesting...
The main problem faced by all association rule/pattern mining algorithms is their production of a la...
The detection of unusual or anomalous data is an important function in automated data analysis or d...
This research explores the potential of improving the explainability of outliers using Bayesian Beli...
Today, there has been a massive proliferation of huge databases storing valuable information. The op...
This work introduces the Bayesian local causal discovery framework, a method for discovering unconfo...
© 2009 Dr. Yen-Ting KuoFrom the perspective of an end-user, patterns derived during the data mining ...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
Abstract. A Bayesian network is a graphical model that encodes probabilistic relationships among var...
Actionable Knowledge Discovery has attracted much interest lately. It is almost a new paradigm shift...
Anomaly detection methods can be very useful in identifying interesting or concerning events. In thi...
Abstract—Anomaly extraction refers to automatically finding, in a large set of flows observed during...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...
This paper proposes to integrate two very different kinds of methods for data mining, namely the con...
Data mining is a statistical process to extract useful information, unknown patterns and interesting...
The main problem faced by all association rule/pattern mining algorithms is their production of a la...
The detection of unusual or anomalous data is an important function in automated data analysis or d...
This research explores the potential of improving the explainability of outliers using Bayesian Beli...
Today, there has been a massive proliferation of huge databases storing valuable information. The op...
This work introduces the Bayesian local causal discovery framework, a method for discovering unconfo...
© 2009 Dr. Yen-Ting KuoFrom the perspective of an end-user, patterns derived during the data mining ...
Abstract—Bayesian Networks are probabilistic models of data that are useful to answer probabilistic ...
Abstract. A Bayesian network is a graphical model that encodes probabilistic relationships among var...
Actionable Knowledge Discovery has attracted much interest lately. It is almost a new paradigm shift...
Anomaly detection methods can be very useful in identifying interesting or concerning events. In thi...
Abstract—Anomaly extraction refers to automatically finding, in a large set of flows observed during...
We consider a model in which background knowledge on a given domain of interest is available in term...
Association rules have become an important paradigm in knowledge discovery. Nevertheless, the huge n...