With the emergence of large-volume and high-speed streaming data, the recent techniques for stream mining of CFIpsilas (closed frequent itemsets) will become inefficient. When concept drift occurs at a slow rate in high speed data streams, the rate of change of information across different sliding windows will be negligible. So, the user wonpsilat be devoid of change in information if we slide window by multiple transactions at a time. Therefore, we propose a novel approach for mining CFIpsilas cumulatively by making sliding width(ges1) over high speed data streams. However, it is nontrivial to mine CFIpsilas cumulatively over stream, because such growth may lead to the generation of exponential number of candidates for closure checking. In...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Recently, frequent itemsets mining over data streams attracted much attention. However, mining close...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
With the emergence of large-volume and high-speed streaming data, the recent techniques for stream m...
Frequent itemset mining over sliding window is an interesting problem and has a large number of appl...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
This paper considers the problem of mining closed frequent itemsets over a sliding window using limi...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
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...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
In this paper, we study the incremental update of Frequent Closed Itemsets (FCIs) over a sliding win...
[[abstract]]Mining frequent itemsets has been widely studied over the last decade. Past research foc...
AbstractThe frequent closed itemsets determine exactly the complete set of frequent itemsets and are...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Recently, frequent itemsets mining over data streams attracted much attention. However, mining close...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
With the emergence of large-volume and high-speed streaming data, the recent techniques for stream m...
Frequent itemset mining over sliding window is an interesting problem and has a large number of appl...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
This paper considers the problem of mining closed frequent itemsets over a sliding window using limi...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
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...
Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arrive in rap...
Abstract Mining frequent itemsets in a datastream proves to be a difficult problem, as itemsets arri...
In this paper, we study the incremental update of Frequent Closed Itemsets (FCIs) over a sliding win...
[[abstract]]Mining frequent itemsets has been widely studied over the last decade. Past research foc...
AbstractThe frequent closed itemsets determine exactly the complete set of frequent itemsets and are...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Recently, frequent itemsets mining over data streams attracted much attention. However, mining close...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...