A review of rule learning-based intrusion detection systems and their prospects in smart grids
Intrusion detection systems (IDS) are commonly categorized into misuse based, anomaly
based and specification based IDS. Both misuse based IDS and anomaly based IDS are …
based and specification based IDS. Both misuse based IDS and anomaly based IDS are …
A brief overview of rule learning
In this paper, we provide a brief summary of elementary research in rule learning. The two
main research directions are descriptive rule learning, with the goal of discovering …
main research directions are descriptive rule learning, with the goal of discovering …
Discovering gradual patterns in building operations for improving building energy efficiency
The development of information technologies has enabled real-time monitoring and controls
over building operations. Massive amounts of building operational data are being collected …
over building operations. Massive amounts of building operational data are being collected …
A multi-core approach to efficiently mining high-utility itemsets in dynamic profit databases
B Vo, LTT Nguyen, TDD Nguyen… - IEEE …, 2020 - ieeexplore.ieee.org
Analyzing customer transactions to discover high-utility itemsets is a popular task, which
consists of finding the sets of items that are purchased together and yield a high profit …
consists of finding the sets of items that are purchased together and yield a high profit …
What did i do wrong in my MOBA game? Mining patterns discriminating deviant behaviours
O Cavadenti, V Codocedo, JF Boulicaut… - … Conference on Data …, 2016 - ieeexplore.ieee.org
The success of electronic sports (eSports), where professional gamers participate in
competitive leagues and tournaments, brings new challenges for the video game industry …
competitive leagues and tournaments, brings new challenges for the video game industry …
An efficient approach for mining sequential patterns using multiple threads on very large databases
Sequential pattern mining (SPM) plays an important role in data mining, with broad
applications such as in financial markets, education, medicine, and prediction. Although …
applications such as in financial markets, education, medicine, and prediction. Although …
Dominance programming for itemset mining
Finding small sets of interesting patterns is an important challenge in pattern mining. In this
paper, we argue that several well-known approaches that address this challenge are based …
paper, we argue that several well-known approaches that address this challenge are based …
Efficient strategies for parallel mining class association rules
Mining class association rules (CARs) is an essential, but time-intensive task in Associative
Classification (AC). A number of algorithms have been proposed to speed up the mining …
Classification (AC). A number of algorithms have been proposed to speed up the mining …
An efficient method for mining frequent sequential patterns using multi-core processors
The problem of mining frequent sequential patterns (FSPs) has attracted a great deal of
research attention. Although there are many efficient algorithms for mining FSPs, the mining …
research attention. Although there are many efficient algorithms for mining FSPs, the mining …
A novel algorithm for searching frequent gradual patterns from an ordered data set
Mining frequent simultaneous attribute co-variations in numerical databases is also called
frequent gradual pattern problem. Few efficient algorithms for automatically extracting such …
frequent gradual pattern problem. Few efficient algorithms for automatically extracting such …