[[abstract]]Mining useful information and helpful knowledge from large databases has evolved into an important research area in recent years. Among the classes of knowledge derived, finding sequential patterns in temporal transaction databases is very important since it can help model customer behavior. In the past, researchers usually assumed databases were static to simplify data-mining problems. In real-world applications, new transactions may be added into databases frequently. Designing an efficient and effective mining algorithm that can maintain sequential patterns as a database grows is thus important. In this paper, we propose a novel incremental mining algorithm for maintaining sequential patterns based on the concept of pre-large...
Sequential pattern mining finds frequently occurring patterns ordered by time. The problem was first...
[[abstract]]In several applications, sequence databases generally update incrementally with time. Ob...
: The problem of mining sequential patterns was recently introduced in [AS95]. We are given a databa...
Many real life sequence databases grow incrementally. It is undesirable to mine sequential patterns ...
[[abstract]]Mining sequential patterns from temporal transaction databases attempts to find customer...
[[abstract]]The task of sequential pattern mining is to discover the complete set of sequential patt...
In this paper we present a new algorithm for fast discovery of Sequential Patterns. Given a collecti...
In reality, sequence databases are updated incrementally. The changes on the database may invalidate...
Abstract — The sequential sequence mining takes time interval between various transactions. Here we ...
Association rules provide important knowledge that can be extracted from transactional databases. Ow...
[[abstract]]In several real-life applications, sequence databases, in general, are updated increment...
We study two problems: (1) mining frequent sequences from a transactional database, and (2) incremen...
Abstract- Applying data mining techniques to real-world applications is a challenging task because t...
[[abstract]]In this paper, we introduce a novel algorithm for mining sequential patterns from transa...
[[abstract]]Incremental algorithms can manipulate the results of earlier mining to derive the final ...
Sequential pattern mining finds frequently occurring patterns ordered by time. The problem was first...
[[abstract]]In several applications, sequence databases generally update incrementally with time. Ob...
: The problem of mining sequential patterns was recently introduced in [AS95]. We are given a databa...
Many real life sequence databases grow incrementally. It is undesirable to mine sequential patterns ...
[[abstract]]Mining sequential patterns from temporal transaction databases attempts to find customer...
[[abstract]]The task of sequential pattern mining is to discover the complete set of sequential patt...
In this paper we present a new algorithm for fast discovery of Sequential Patterns. Given a collecti...
In reality, sequence databases are updated incrementally. The changes on the database may invalidate...
Abstract — The sequential sequence mining takes time interval between various transactions. Here we ...
Association rules provide important knowledge that can be extracted from transactional databases. Ow...
[[abstract]]In several real-life applications, sequence databases, in general, are updated increment...
We study two problems: (1) mining frequent sequences from a transactional database, and (2) incremen...
Abstract- Applying data mining techniques to real-world applications is a challenging task because t...
[[abstract]]In this paper, we introduce a novel algorithm for mining sequential patterns from transa...
[[abstract]]Incremental algorithms can manipulate the results of earlier mining to derive the final ...
Sequential pattern mining finds frequently occurring patterns ordered by time. The problem was first...
[[abstract]]In several applications, sequence databases generally update incrementally with time. Ob...
: The problem of mining sequential patterns was recently introduced in [AS95]. We are given a databa...