International audienceMining frequent patterns on streaming data is a new challenging problem for the data mining community since data arrives sequentially in the form of continuous rapid streams. In this paper we propose a new approach for mining itemsets. Our approach has the following advantages: an efficient representation of items and a novel data structure to maintain frequent patterns coupled with a fast pruning strategy. At any time, users can issue requests for frequent itemsets over an arbitrary time interval. Furthermore our approach produces an approximate answer with an assurance that it will not bypass user-defined frequency and temporal thresholds. Finally the proposed method is analyzed by a series of experiments on differen...
Mining frequent itemsets has been widely studied over the last decade. Past research focuses on mini...
Abstract. Recently, the data stream, which is an unbounded sequence of data elements generated at a ...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Frequent pattern mining from data streams is an active research topic in data mining. Existing resea...
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...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Although frequent-pattern mining has been widely studied and used, it is challenging to extend it to...
In many data streaming applications today, tuples inside the streams may get revised over time. This...
Abstract Mining frequent itemsets over a stream of transactions presents di cult new challenges over...
Data mining is a part of know ledge Discovery in database process (KDD). As technology advances, flo...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Mining frequent itemsets has been widely studied over the last decade. Past research focuses on mini...
Abstract. Recently, the data stream, which is an unbounded sequence of data elements generated at a ...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Frequent pattern mining from data streams is an active research topic in data mining. Existing resea...
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...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Although frequent-pattern mining has been widely studied and used, it is challenging to extend it to...
In many data streaming applications today, tuples inside the streams may get revised over time. This...
Abstract Mining frequent itemsets over a stream of transactions presents di cult new challenges over...
Data mining is a part of know ledge Discovery in database process (KDD). As technology advances, flo...
The frequent items problem is to process a stream of items and find all items occurring more than a ...
Mining frequent itemsets has been widely studied over the last decade. Past research focuses on mini...
Abstract. Recently, the data stream, which is an unbounded sequence of data elements generated at a ...
Many critical applications, like intrusion detection or stock market analysis, require a nearly imme...