Data stored in transactional databases are vulnerable to noise and outliers and are often discarded at the early stage of data mining. Abnormal transactions in the marketing transactional database are those transactions that should contain some items but do not. However, some abnormal transactions may provide valuable information in the knowledge mining process. The literature on how to efficiently identify abnormal transactions in the database as well as determine what causes the transactions to be abnormal is scarce. This paper proposes a framework to realize abnormal transactions as well as the items that induce the abnormal transactions. Results from one synthetic and two medical data sets are presented to compare with previous work to ...
Abstract — Data-mining techniques have frequently been de-veloped for Spontaneous reporting database...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Association rule mining research typically focuses on positive association rules (PARs), generated f...
AbstractAnti-money laundering (AML) refers to a set of financial and technological controls that aim...
Abstract-- Item set mining has been an active area of research due to its successful application in ...
Novel clustering methods are presented and applied to financial data. First, a scan-statistics metho...
The increasing availability of electronic medical records makes it possible to reconstruct patient t...
Business applications make extensive usage of time series analysis for the most diverse tasks. By an...
Abstract. In this paper we propose a data mining technique for the efficient predic-tion of rare eve...
Adverse reactions to drugs are a leading cause of hospitalisation and death worldwide. Most post-mar...
Drug safety issues such as Adverse Drug Events (ADEs) can cause serious consequences for the public....
The work is motivated by real-world applications of detecting Adverse Drug Reactions (ADRs) from adm...
AbstractSuspicious activity reporting has been a crucial part of anti-money laundering systems. Fina...
Learning of abnormalities is a considerable challenge in data mining and knowledge discovery. Except...
Nowadays, a high number of transactions are performed via internet banking. Rabobank processes more ...
Abstract — Data-mining techniques have frequently been de-veloped for Spontaneous reporting database...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Association rule mining research typically focuses on positive association rules (PARs), generated f...
AbstractAnti-money laundering (AML) refers to a set of financial and technological controls that aim...
Abstract-- Item set mining has been an active area of research due to its successful application in ...
Novel clustering methods are presented and applied to financial data. First, a scan-statistics metho...
The increasing availability of electronic medical records makes it possible to reconstruct patient t...
Business applications make extensive usage of time series analysis for the most diverse tasks. By an...
Abstract. In this paper we propose a data mining technique for the efficient predic-tion of rare eve...
Adverse reactions to drugs are a leading cause of hospitalisation and death worldwide. Most post-mar...
Drug safety issues such as Adverse Drug Events (ADEs) can cause serious consequences for the public....
The work is motivated by real-world applications of detecting Adverse Drug Reactions (ADRs) from adm...
AbstractSuspicious activity reporting has been a crucial part of anti-money laundering systems. Fina...
Learning of abnormalities is a considerable challenge in data mining and knowledge discovery. Except...
Nowadays, a high number of transactions are performed via internet banking. Rabobank processes more ...
Abstract — Data-mining techniques have frequently been de-veloped for Spontaneous reporting database...
Detecting fraudulent and abusive cases in healthcare is one of the most challenging problems for dat...
Association rule mining research typically focuses on positive association rules (PARs), generated f...