The ability to learn from past experience is an important adaptation, but how natural selection shapes learning is not well understood. Here, we present a novel way of modeling learning using small neural networks and a simple, biology-inspired learning algorithm. We used this model to study the evolution of learning under various environmental conditions and different scenarios for the trade-off between exploration (learning) and exploitation (foraging). Efficient learning regularly evolved in our individual-based simulations. However, the evolution of learning was less likely in relatively constant environments(where learning is less important) or in case of short-lived agents (that cannot afford to spend much of their lifetime on explora...
It has been reported recently that learning has a beneficial effect on evolution even if the learnin...
A series of evolutionary neural network simulations are presented which explore the hypothesis that ...
A longstanding challenge in artificial intelligence is to create agents that learn, enabling them to...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
. The processes of adaptation in natural organisms consist of two complementary phases: 1) learning,...
In this report we present the results of a series of simulations in which neural networks undergo ch...
Learning is a widespread adaptation in the animal world. In this article, we show with a novel evolu...
The interaction between phenotypic plasticity, e.g. learning, and evolution is an important topic bo...
The interaction between phenotypic plasticity, e.g. learning, and evolution is an important topic bo...
An important unanswered question within the evolution of intelligence is how evolved learning effort...
It has been reported recently that learning has a beneficial effect on evolution even if the learnin...
A series of evolutionary neural network simulations are presented which explore the hypothesis that ...
A longstanding challenge in artificial intelligence is to create agents that learn, enabling them to...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
The ability to learn from past experience is an important adaptation, but how natural selection shap...
. The processes of adaptation in natural organisms consist of two complementary phases: 1) learning,...
In this report we present the results of a series of simulations in which neural networks undergo ch...
Learning is a widespread adaptation in the animal world. In this article, we show with a novel evolu...
The interaction between phenotypic plasticity, e.g. learning, and evolution is an important topic bo...
The interaction between phenotypic plasticity, e.g. learning, and evolution is an important topic bo...
An important unanswered question within the evolution of intelligence is how evolved learning effort...
It has been reported recently that learning has a beneficial effect on evolution even if the learnin...
A series of evolutionary neural network simulations are presented which explore the hypothesis that ...
A longstanding challenge in artificial intelligence is to create agents that learn, enabling them to...