We propose an efficient algorithm for mining frequent approximate sequential patterns under the Hamming distance model. Our algorithm gains its efficiency by adopting a “break-down-and-build-up ” methodology. The “breakdown” is based on the observation that all occurrences of a frequent pattern can be classified into groups, which we call strands. We developed efficient algorithms to quickly mine out all strands by iterative growth. In the “build-up” stage, these strands are grouped up to form the support sets from which all approximate patterns would be identified. A salient feature of our algorithm is its ability to grow the frequent patterns by iteratively assembling building blocks of significant sizes in a local search fashion. By avoi...
In this paper we present a new algorithm for fast discovery of Sequential Patterns. Given a collecti...
In sequential pattern mining, the support of the sequential pattern for the transaction database is ...
In recent years, there has been increased interest in using data mining techniques to extract freque...
Abstract- Frequent pattern mining from sequential datasets is an important data mining method. It ha...
Mining frequent sequences patterns invokes the interests of many searchers. However, the result set ...
This paper addresses the discovery of sequential patterns in very large databases. Most of the exist...
Abstract:- This paper propose a novel algorithm for mining closed frequent sequences, a scalable, co...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
AbstractMining frequent sequences patterns invokes the interests of many searchers. However, the res...
Sequential pattern mining is a fundamental data mining task with application in several domains. We ...
Although frequent sequential pattern mining has an important role in many data mining tasks, howeve...
Abstract — There is a huge wealth of sequence data available, for example, customer purchase histori...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
To efficiently find global patterns from a multi-database, information in each local database must f...
In this paper we present a new algorithm for fast discovery of Sequential Patterns. Given a collecti...
In sequential pattern mining, the support of the sequential pattern for the transaction database is ...
In recent years, there has been increased interest in using data mining techniques to extract freque...
Abstract- Frequent pattern mining from sequential datasets is an important data mining method. It ha...
Mining frequent sequences patterns invokes the interests of many searchers. However, the result set ...
This paper addresses the discovery of sequential patterns in very large databases. Most of the exist...
Abstract:- This paper propose a novel algorithm for mining closed frequent sequences, a scalable, co...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
AbstractMining frequent sequences patterns invokes the interests of many searchers. However, the res...
Sequential pattern mining is a fundamental data mining task with application in several domains. We ...
Although frequent sequential pattern mining has an important role in many data mining tasks, howeve...
Abstract — There is a huge wealth of sequence data available, for example, customer purchase histori...
[[abstract]]Sequential pattern mining is to discover frequent sequential patterns in a sequence data...
Finding prevalent patterns in large amount of data has been one of the major problems in the area of...
To efficiently find global patterns from a multi-database, information in each local database must f...
In this paper we present a new algorithm for fast discovery of Sequential Patterns. Given a collecti...
In sequential pattern mining, the support of the sequential pattern for the transaction database is ...
In recent years, there has been increased interest in using data mining techniques to extract freque...