The subject of this research is mining data stream. It is one of the most challenging and widely researched areas in Knowledge Discovery and Data Mining (KDD). A data stream is a continuous, voluminous, and unpredictable flow of data which occurs in many application domains. In a previous study, Data Stream Mining (DSM) algorithm was proposed to overcome these problems on association rules mining. It was built using various techniques such as closed frequent itemsets, tree data structures, itemsets pruning, and statistical sampling. We have developed Near Closed Nodes algorithms, which can be applied to algorithms for mining association rules that utilised closed itemsets structure. In this study, we look into the characteristics of closed ...
Abstract — The amount of data being collected is increasing rapidly. The main reason is the use of c...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The subject of this research is mining data stream. It is one of the most challenging and widely res...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
AbstractFrequent Pattern Mining is one of the major data mining techniques, which is exhaustively st...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
Frequent itemset mining and association rule generation is a challenging task in data stream. Even t...
AbstractThe frequent closed itemsets determine exactly the complete set of frequent itemsets and are...
A data stream is continuous, rapid, unbounded sequence of data. Mining Frequent pattern in stream da...
Frequent Pattern Mining is one of the major data mining techniques, which is exhaustively studied in...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
Recently, frequent itemsets mining over data streams attracted much attention. However, mining close...
Mining itemsets is a central task in data mining, both in the batch and the streaming paradigms. Whi...
PG Miner, a graph-based Algorithm for mining frequent closed item sets consists of construction a pr...
Abstract — The amount of data being collected is increasing rapidly. The main reason is the use of c...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...
The subject of this research is mining data stream. It is one of the most challenging and widely res...
Data mining is an area to find valid, novel, potentially useful, and ultimately understandable abstr...
AbstractFrequent Pattern Mining is one of the major data mining techniques, which is exhaustively st...
Abstract—Mining frequent patterns refers to the discovery of the sets of items that frequently appea...
Frequent itemset mining and association rule generation is a challenging task in data stream. Even t...
AbstractThe frequent closed itemsets determine exactly the complete set of frequent itemsets and are...
A data stream is continuous, rapid, unbounded sequence of data. Mining Frequent pattern in stream da...
Frequent Pattern Mining is one of the major data mining techniques, which is exhaustively studied in...
AbstractMining frequent itemsets from data streams by the model of sliding window has been extensive...
Recently, frequent itemsets mining over data streams attracted much attention. However, mining close...
Mining itemsets is a central task in data mining, both in the batch and the streaming paradigms. Whi...
PG Miner, a graph-based Algorithm for mining frequent closed item sets consists of construction a pr...
Abstract — The amount of data being collected is increasing rapidly. The main reason is the use of c...
The increasing importance of data stream arising in a wide range of advanced applications has led to...
Traditional algorithms for frequent itemset discovery are designed for static data. They cannot be s...