Random graph generation techniques provide an invaluable tool for studying graph related concepts. Unfortunately, traditional random graph models tend to produce artificial representations of real-world phenomenon. Manually developing customized random graph models for every application would require an unreasonable amount of time and effort. In this work, a platform is developed to automate the production of random graph generators that are tailored to specific applications. Elements of existing random graph generation techniques are used to create a set of graph-based primitive operations. A hyper-heuristic approach is employed that uses genetic programming to automatically construct random graph generators from this set of operations. Th...
Optimization problems in the real world are very difficult to be solved by conventional optimization...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
This paper introduces an interactive system called GraphCuisine that lets users steer an Evolutionar...
Abstract. This article introduces an interactive system called Graph-Cuisine that lets users steer a...
Dynamic graphs are an essential tool for representing a wide variety of concepts that change over ti...
High performance graph processing poses significant challenges for both algorithm and platform desig...
This book supports researchers who need to generate random networks, or who are interested in the th...
Random Graphs evolved as a major tool for modelling the complex net works. Random Graphs have wide r...
We have generated sets of the problem instances obtained by using different pseudo-random methods to...
Rule-based graph programming is a deep and rich topic. We present an approach to exploiting the powe...
Optimal graph partitioning is a foundational problem in computer science, and appears in many differ...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Producing many varying instances of the same type of graphical resource for games can be of interest...
Printed on archival quality paper. Random graph processes are most often used to investigate theoret...
Optimization problems in the real world are very difficult to be solved by conventional optimization...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...
This paper introduces an interactive system called GraphCuisine that lets users steer an Evolutionar...
Abstract. This article introduces an interactive system called Graph-Cuisine that lets users steer a...
Dynamic graphs are an essential tool for representing a wide variety of concepts that change over ti...
High performance graph processing poses significant challenges for both algorithm and platform desig...
This book supports researchers who need to generate random networks, or who are interested in the th...
Random Graphs evolved as a major tool for modelling the complex net works. Random Graphs have wide r...
We have generated sets of the problem instances obtained by using different pseudo-random methods to...
Rule-based graph programming is a deep and rich topic. We present an approach to exploiting the powe...
Optimal graph partitioning is a foundational problem in computer science, and appears in many differ...
We consider the problem of modeling complex systems where little or nothing is known about the struc...
Producing many varying instances of the same type of graphical resource for games can be of interest...
Printed on archival quality paper. Random graph processes are most often used to investigate theoret...
Optimization problems in the real world are very difficult to be solved by conventional optimization...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Because of the huge number of graphs possible even with a small number of nodes, inference on networ...