Scientific discovery as a combinatorial optimisation problem: How best to navigate the landscape of possible experiments? Douglas B. Kell1)2) A considerable number of areas of bioscience, including gene and drug discovery, metabolic engineering for the biotechnological improvement of organisms, and the processes of natural and directed evolution, are best viewed in terms of a ‘landscape ’ representing a large search space of possible solutions or experiments popu-lated by a considerably smaller number of actual solutions that then emerge. This is what makes these problems ‘hard’, but as such these are to be seen as combinatorial optimisation problems that are best attacked by heuristic methods known from that field. Such landscapes, which m...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
Computational scientific discovery is an important area of research in cognitive science. Not only c...
A powerful form of causal inference employed in many tasks, such as medical diagnosis, criminology, ...
Philosophers argue that scientific discovery is far from be-ing a rule-following procedure with a ge...
This is a survey designed for mathematical programming people who do not know molecular biology and ...
Computational scientific discovery is becoming increasingly important in many areas of science. Th...
International audienceComputational scientists have developed algorithms inspired by natural evoluti...
This study is concerned with processes for discovering new theories in science. It considers a compu...
© 2015 Macmillan Publishers Limited. All rights reserved . Evolution has provided a source of inspir...
Though based on abstractions of nature, current evolutionary algorithms and artificial life models l...
This study is concerned with processes for discovering new theories in science. It considers a compu...
Research on stochastic optimisation methods emerged around half a century ago. One of these methods,...
Evolutionary algorithms are used to solve a number of optimization problems in the computer science....
Abstract Scientific discovery has long been one of the central driving forces in our civilization. I...
Uninitiated may find it strange that artificial evolution resides among a class of problem solving m...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
Computational scientific discovery is an important area of research in cognitive science. Not only c...
A powerful form of causal inference employed in many tasks, such as medical diagnosis, criminology, ...
Philosophers argue that scientific discovery is far from be-ing a rule-following procedure with a ge...
This is a survey designed for mathematical programming people who do not know molecular biology and ...
Computational scientific discovery is becoming increasingly important in many areas of science. Th...
International audienceComputational scientists have developed algorithms inspired by natural evoluti...
This study is concerned with processes for discovering new theories in science. It considers a compu...
© 2015 Macmillan Publishers Limited. All rights reserved . Evolution has provided a source of inspir...
Though based on abstractions of nature, current evolutionary algorithms and artificial life models l...
This study is concerned with processes for discovering new theories in science. It considers a compu...
Research on stochastic optimisation methods emerged around half a century ago. One of these methods,...
Evolutionary algorithms are used to solve a number of optimization problems in the computer science....
Abstract Scientific discovery has long been one of the central driving forces in our civilization. I...
Uninitiated may find it strange that artificial evolution resides among a class of problem solving m...
In recent times computational algorithms inspired by biological processes and evolution are gaining ...
Computational scientific discovery is an important area of research in cognitive science. Not only c...
A powerful form of causal inference employed in many tasks, such as medical diagnosis, criminology, ...