Object correlations are common semantic patterns in virtual reality systems. They can be exploited for improving the effectiveness of storage caching, prefecthing, data layout, and minimization of query-response times. Unfortunately, this information about object correlations is unavailable at the storage system level. Previous approaches for reducing I/O access time are seldom investigated. On the other side, data mining techniques extract implicit, previously unknown and potentially useful information from the databases. This paper proposes a class of novel and efficient pattern-growth method for mining various frequent sequential traversal patterns in the virtual reality. Our pattern-growth method adopts a divide-and-conquer approach to ...
Methods for efficient mining of frequent patterns have been studied extensively by many researchers....
Much of current data mining research is focused on discovering sets of attributes that discriminate ...
This paper deals with new approaches to maintaining frequent itemsets in evolving databases. Our new...
Object correlations are common semantic patterns in virtual environments. They can be exploited to ...
Block correlations are common semantic patterns in storage systems. They can be exploited for im-pro...
Block correlations are common semantic patterns in storage systems. These correlations can be exploi...
This is an important paper that utilises Artificial Life techniques to endow agents in virtual world...
Motion prediction of various objects is important for work of many people. We have to distinguish be...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
Virtual reality (VR) is poised to become the new medium through which we engage, view, and consume c...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Sequential Pattern Mining is a widely addressed problem in data mining, with applications such as an...
Data mining is an interactive and iterative process. It is highly probable that a user will issue a ...
[[abstract]]Repeating patterns represent temporal relations among data items, which could be used fo...
: The problem of mining sequential patterns was recently introduced in [AS95]. We are given a databa...
Methods for efficient mining of frequent patterns have been studied extensively by many researchers....
Much of current data mining research is focused on discovering sets of attributes that discriminate ...
This paper deals with new approaches to maintaining frequent itemsets in evolving databases. Our new...
Object correlations are common semantic patterns in virtual environments. They can be exploited to ...
Block correlations are common semantic patterns in storage systems. They can be exploited for im-pro...
Block correlations are common semantic patterns in storage systems. These correlations can be exploi...
This is an important paper that utilises Artificial Life techniques to endow agents in virtual world...
Motion prediction of various objects is important for work of many people. We have to distinguish be...
Frequent Pattern mining is modified by Sequential Pattern Mining to consider time regularity which i...
Virtual reality (VR) is poised to become the new medium through which we engage, view, and consume c...
Mining frequent patterns from large databases play an essential role in many data mining tasks and h...
Sequential Pattern Mining is a widely addressed problem in data mining, with applications such as an...
Data mining is an interactive and iterative process. It is highly probable that a user will issue a ...
[[abstract]]Repeating patterns represent temporal relations among data items, which could be used fo...
: The problem of mining sequential patterns was recently introduced in [AS95]. We are given a databa...
Methods for efficient mining of frequent patterns have been studied extensively by many researchers....
Much of current data mining research is focused on discovering sets of attributes that discriminate ...
This paper deals with new approaches to maintaining frequent itemsets in evolving databases. Our new...