In this paper, we propose a novel algorithm, named SSDPS, to discover patterns in two-class datasets. The SSDPS algorithm owes its efficiency to an original enumeration strategy of the patterns, which allows to exploit some degrees of anti-monotonicity on the measures of discriminance and statistical significance. Experimental results demonstrate that the performance of the SSDPS algorithm is better than others. In addition, the number of generated patterns is much less than the number of the other algorithms. Experiment on real data also shows that SSDPS efficiently detects multiple SNPs combinations in genetic data
Pattern discovery in biological sequences (e.g., DNA se-quences) is one of the most challenging task...
Many tasks of contemporary Molecular Biology rely increasingly on au- tomated techniques for the dis...
Some genetic diseases (“digenic traits”) are due to the interaction between two DNA variants, which ...
International audienceIn this paper, we propose a novel algorithm, named SSDPS, to discover patterns...
Discriminative pattern mining is one of the most important techniques in data mining. This challengi...
Les études d'association sur un génome complet (GWAS) sont conçues pour découvrir les combinaisons d...
One essential topic of mining sequential patterns in the data stream is to optimize the time-space c...
A pattern is a relatively short sequence that represents a phenomenon in a set of sequences. Not all...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
An interesting research topic in population genetics is the detection of loci that are targets of po...
SKM-SNP, SNP markers detection program, is proposed to identify a set of relevant SNPs for the assoc...
There has been increased interest in discovering combinations of single-nucleotide polymorphisms (SN...
Abstract—Discriminative patterns can provide valuable insights into data sets with class labels, tha...
Identifying single nucleotide polymorphism (SNP) interactions is considered as a popular and crucial...
Background: In population-based studies, it is generally recognized that single nucleotide polymorph...
Pattern discovery in biological sequences (e.g., DNA se-quences) is one of the most challenging task...
Many tasks of contemporary Molecular Biology rely increasingly on au- tomated techniques for the dis...
Some genetic diseases (“digenic traits”) are due to the interaction between two DNA variants, which ...
International audienceIn this paper, we propose a novel algorithm, named SSDPS, to discover patterns...
Discriminative pattern mining is one of the most important techniques in data mining. This challengi...
Les études d'association sur un génome complet (GWAS) sont conçues pour découvrir les combinaisons d...
One essential topic of mining sequential patterns in the data stream is to optimize the time-space c...
A pattern is a relatively short sequence that represents a phenomenon in a set of sequences. Not all...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
An interesting research topic in population genetics is the detection of loci that are targets of po...
SKM-SNP, SNP markers detection program, is proposed to identify a set of relevant SNPs for the assoc...
There has been increased interest in discovering combinations of single-nucleotide polymorphisms (SN...
Abstract—Discriminative patterns can provide valuable insights into data sets with class labels, tha...
Identifying single nucleotide polymorphism (SNP) interactions is considered as a popular and crucial...
Background: In population-based studies, it is generally recognized that single nucleotide polymorph...
Pattern discovery in biological sequences (e.g., DNA se-quences) is one of the most challenging task...
Many tasks of contemporary Molecular Biology rely increasingly on au- tomated techniques for the dis...
Some genetic diseases (“digenic traits”) are due to the interaction between two DNA variants, which ...