Gene expression programming (GEP) is a data driven evolutionary technique that well suits for correlation mining. Parallel GEPs are proposed to speed up the evolution process using a cluster of computers or a computer with multiple CPU cores. However, the generation structure of chromosomes and the size of input data are two issues that tend to be neglected when speeding up GEP in evolution. To fill the research gap, this paper proposes three guiding principles to elaborate the computation nature of GEP in evolution based on an analysis of GEP schema theory. As a result, a novel data engineered GEP is developed which follows closely the generation structure of chromosomes in parallelization and considers the input data size in segmentation....
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
This paper proposes a novel evolution algorithm, which is based on a new concept of chromosome hiera...
International audienceThis paper presents a joint effort between a group of computer scientists and ...
Gene expression programming (GEP) is a data driven evolutionary technique that well suits for correl...
Gene expression programming (GEP) is a data driven evolutionary technique that well suits for correl...
Gene expression programming (GEP) is a data driven evolutionary technique that is well suited to cor...
Gene expression programming (GEP) is a data driven evolutionary technique that is well suited to cor...
The paper proposes an incremental Gene Expression Programming classifier. Its main features include ...
For high-dimensional and massive data sets, traditional centralized gene expression pro-gramming (GE...
Gene Expression Programming is an evolutionary algorithm that mimics biological evolution to solve a...
Gene Expression Programming is an evolutionary algorithm that mimics biological evolution to solve a...
Gene Expression Programming is a new evolutionary algorithm that overcomes many limitations of the m...
Abstract. Gene Expression Programming (GEP) aims at discovering essential rules hidden in observed d...
Schemata and buiding blocks have been used in Genetic Programming (GP) in several contexts including...
International audienceThis paper presents a joint effort between a group of computer scientists and ...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
This paper proposes a novel evolution algorithm, which is based on a new concept of chromosome hiera...
International audienceThis paper presents a joint effort between a group of computer scientists and ...
Gene expression programming (GEP) is a data driven evolutionary technique that well suits for correl...
Gene expression programming (GEP) is a data driven evolutionary technique that well suits for correl...
Gene expression programming (GEP) is a data driven evolutionary technique that is well suited to cor...
Gene expression programming (GEP) is a data driven evolutionary technique that is well suited to cor...
The paper proposes an incremental Gene Expression Programming classifier. Its main features include ...
For high-dimensional and massive data sets, traditional centralized gene expression pro-gramming (GE...
Gene Expression Programming is an evolutionary algorithm that mimics biological evolution to solve a...
Gene Expression Programming is an evolutionary algorithm that mimics biological evolution to solve a...
Gene Expression Programming is a new evolutionary algorithm that overcomes many limitations of the m...
Abstract. Gene Expression Programming (GEP) aims at discovering essential rules hidden in observed d...
Schemata and buiding blocks have been used in Genetic Programming (GP) in several contexts including...
International audienceThis paper presents a joint effort between a group of computer scientists and ...
Recent advances in sequencing and synthesis technologies have sparked extraordinary growth in large-...
This paper proposes a novel evolution algorithm, which is based on a new concept of chromosome hiera...
International audienceThis paper presents a joint effort between a group of computer scientists and ...