The increasing importance of data stream arising in a wide range of advanced applications has led to the extensive study of mining frequent patterns. Mining data streams poses many new challenges amongst which are the one-scan nature, the unbounded memory requirement and the high arrival rate of data streams. In this paper, we propose a new approach for mining itemsets on data stream. Our approach SFIDS has been developed based on FIDS algorithm. The main attempts were to keep some advantages of the previous approach and resolve some of its drawbacks, and consequently to improve run time and memory consumption. Our approach has the following advantages: using a data structure similar to lattice for keeping frequent itemsets, separating regi...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
Abstract Mining frequent itemsets over a stream of transactions presents di cult new challenges over...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
International audienceMining frequent patterns on streaming data is a new challenging problem for th...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Due to advances in technology, high volumes of valuable data can be produced at high velocity in man...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
[[abstract]]Mining frequent itemsets has been widely studied over the last decade. Past research foc...
Although frequent-pattern mining has been widely studied and used, it is challenging to extend it to...
Abstract—In this paper, we study the problem of finding frequent itemsets from uncertain data stream...
Abstract—A data stream is a massive unbounded sequence of data elements continuously generated at a ...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
Abstract Mining frequent itemsets over a stream of transactions presents di cult new challenges over...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
The increasing prominence of data streams arising in a wide range of advanced applications such as f...
International audienceMining frequent patterns on streaming data is a new challenging problem for th...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Due to advances in technology, high volumes of valuable data can be produced at high velocity in man...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
[[abstract]]Mining frequent itemsets has been widely studied over the last decade. Past research foc...
Although frequent-pattern mining has been widely studied and used, it is challenging to extend it to...
Abstract—In this paper, we study the problem of finding frequent itemsets from uncertain data stream...
Abstract—A data stream is a massive unbounded sequence of data elements continuously generated at a ...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
Abstract Mining frequent itemsets over a stream of transactions presents di cult new challenges over...