There are two common approaches for optimizing the performance of a machine: genetic algorithms and machine learning. A genetic algorithm is applied over many generations whereas machine learning works by applying feedback until the system meets a performance threshold. These methods have been previously combined, particularly in artificial neural networks using an external objective feedback mechanism. We adapt this approach to Markov Brains, which are evolvable networks of probabilistic and deterministic logic gates. Prior to this work MB could only adapt from one generation to the other, so we introduce feedback gates which augment their ability to learn during their lifetime. We show that Markov Brains can incorporate these feedback gat...
Information integration theory has been developed to quantify consciousness. Since conscious thought...
In this article, we evolve and analyze continuous-time recurrent neural networks capable of associat...
Representations are internal models of the environment that can provide guidance to a behaving agent...
There are two common approaches for optimizing the performance of a machine: genetic algorithms and ...
In this report we present the results of a series of simulations in which neural networks undergo ch...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
Modern Machine learning techniques take advantage of the exponentially rising calculation power in n...
Rapid online adaptation to changing tasks is an important problem in machine learning and, recently,...
A longstanding challenge in artificial intelligence is to create agents that learn, enabling them to...
Most machine learning algorithms ultimately focus on optimizing solutions to a single target functio...
Biological neural networks are systems of extraordinary computational capabilities shaped by evoluti...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
In the field of Evolutionary Robotics, the design, development and application of artificial neural ...
. The processes of adaptation in natural organisms consist of two complementary phases: 1) learning,...
Information integration theory has been developed to quantify consciousness. Since conscious thought...
In this article, we evolve and analyze continuous-time recurrent neural networks capable of associat...
Representations are internal models of the environment that can provide guidance to a behaving agent...
There are two common approaches for optimizing the performance of a machine: genetic algorithms and ...
In this report we present the results of a series of simulations in which neural networks undergo ch...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
Modern Machine learning techniques take advantage of the exponentially rising calculation power in n...
Rapid online adaptation to changing tasks is an important problem in machine learning and, recently,...
A longstanding challenge in artificial intelligence is to create agents that learn, enabling them to...
Most machine learning algorithms ultimately focus on optimizing solutions to a single target functio...
Biological neural networks are systems of extraordinary computational capabilities shaped by evoluti...
Neuroevolution, i.e. evolution of artificial neural networks, has recently emerged as a powerful tec...
In the field of Evolutionary Robotics, the design, development and application of artificial neural ...
. The processes of adaptation in natural organisms consist of two complementary phases: 1) learning,...
Information integration theory has been developed to quantify consciousness. Since conscious thought...
In this article, we evolve and analyze continuous-time recurrent neural networks capable of associat...
Representations are internal models of the environment that can provide guidance to a behaving agent...