Frequent itemset mining is a classical data mining task with a broad range of applications, including fraud discovery and product recommendation. The enumeration of frequent itemsets has two main benefits for such applications: First, frequent itemsets provide a human-understandable representation of knowledge. This is crucial as human experts are involved in designing systems for these applications. Second, many efficient algorithms are known for mining frequent itemsets. This is essential as many of today’s realworld applications produce ever-growing data streams. Examples of these are online shopping, electronic payment or phone call transactions. With limited physical main memory, the analysis of data streams can, in general, be only ap...
While there has been a lot of work on finding frequent itemsets in transaction data streams, none of...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
Mining frequent itemsets from transactional data streams is challenging due to the nature of the exp...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
We study the problem of finding frequent itemsets in a continuous stream of transactions. The curren...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
This paper introduces a new algorithm for approximate mining of frequent patterns from streams of tr...
While there has been a lot of work on finding frequent itemsets in transaction data streams, none of...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...
Mining frequent itemsets from transactional data streams is challenging due to the nature of the exp...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
Mining frequent patterns in large transactional databases is a highly researched area in the field o...
We study the problem of finding frequent itemsets in a continuous stream of transactions. The curren...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
Frequent itemset mining assists the data mining practitioner in searching for strongly associated it...
This paper introduces a new algorithm for approximate mining of frequent patterns from streams of tr...
While there has been a lot of work on finding frequent itemsets in transaction data streams, none of...
This paper presents a new scalable algorithm for discovering closed frequent itemsets, which are a l...
Within data mining, the efficient discovery of frequent patterns—sets of items that occur together ...