We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequences. Given a character sequence S of length L and a pattern P of length l, we consider P a frequently occurring pattern in S if the probability of observing P given a randomly picked length-l subsequence of S exceeds a certain threshold. In many applications, particularly those related to bioinformatics, interesting patterns are periodic with a gap requirement. That is to say, the characters in P should match subsequences of S in such a way that the matching characters in S are separated by gaps of more or less the same size. We show the complexity of the mining problem and discuss why traditional mining algorithms are computationally infea...
© 2017 IEEE. Sequence pattern mining aims to discover frequent subsequences as patterns in a single ...
International audienceIn this article we present a novel approach to rare sequence mining using patt...
Background: The discovery of surprisingly frequent patterns is of paramount interest in bioinformati...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
Bio-data analysis deals with the most vital discovering problem of similarity search and finding rel...
Abstract — There is a huge wealth of sequence data available, for example, customer purchase histori...
The rapid increase of available DNA, protein, and other biological sequences has made the problem of...
Abstract Mining frequent patterns with periodic wildcard gaps is a critical data mining problem to d...
Abstract: An important purpose of sequence analysis is to find the distinguishing characteristics of...
In this paper, we define a new research problem for mining approximate repeating patterns (ARP) with...
Frequent sequence mining methods often make use of constraints to control which subsequences should ...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
The problem of discovering frequent arrangements of regions of high occurrence of one or more items ...
© 2014 Dr. Yuxuan LiSequential pattern mining is a branch of data mining task that aims at modeling ...
© 2017 IEEE. Sequence pattern mining aims to discover frequent subsequences as patterns in a single ...
International audienceIn this article we present a novel approach to rare sequence mining using patt...
Background: The discovery of surprisingly frequent patterns is of paramount interest in bioinformati...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
We study a problem of mining frequently occurring periodic patterns with a gap requirement from sequ...
Bio-data analysis deals with the most vital discovering problem of similarity search and finding rel...
Abstract — There is a huge wealth of sequence data available, for example, customer purchase histori...
The rapid increase of available DNA, protein, and other biological sequences has made the problem of...
Abstract Mining frequent patterns with periodic wildcard gaps is a critical data mining problem to d...
Abstract: An important purpose of sequence analysis is to find the distinguishing characteristics of...
In this paper, we define a new research problem for mining approximate repeating patterns (ARP) with...
Frequent sequence mining methods often make use of constraints to control which subsequences should ...
Recent studies in discovering patterns from sequence data have shown the significant impact in many ...
The problem of discovering frequent arrangements of regions of high occurrence of one or more items ...
© 2014 Dr. Yuxuan LiSequential pattern mining is a branch of data mining task that aims at modeling ...
© 2017 IEEE. Sequence pattern mining aims to discover frequent subsequences as patterns in a single ...
International audienceIn this article we present a novel approach to rare sequence mining using patt...
Background: The discovery of surprisingly frequent patterns is of paramount interest in bioinformati...