Theoretical models of populations and swarms typically start with the assumption that the motion of agents is governed by the local stimuli. However, an intelligent agent, with some understanding of the laws that govern its habitat, can anticipate the future, and make predictions to gather resources more efficiently. Here we study a specific model of this kind, where agents aim to maximize their consumption of a diffusing resource, by attempting to predict the future of a resource field and the actions of other agents. Once the agents make a prediction, they are attracted to move towards regions that have, and will have, denser resources. We find that the further the agents attempt to see into the future, the more their attempts at predicti...
Collective phenomena are studied in a range of contexts—from controlling locust plagues to efficient...
Classical models of aerial swarms often describe global coordinated motion as the combination of loc...
Most agent-based modeling techniques generate only a single trajectory in each run, greatly undersam...
Collective behavior, and swarm formation in particular, has been studied from several perspectives w...
In natural flocks/swarms, it is very appealing that low-level individual intelligence and communicat...
ABSTRACT: We present a novel model of crowd motion and swarm behaviour, in the form of a multi-agent...
Similarly to evolving controllers for single robots also con-trollers for groups of robots can be ge...
Agents that learn without forgetting (γ = 0): (a) Response probabilities grow towards unity. (b) The...
Foraging for resources is critical to the survival of many animal species. When resources are scarce...
5 pages, 3 figures, error correctedWe document a mechanism operating in complex adaptive systems lea...
AbstractWe are developing an approach for predicting emergent swarm behavior. The swarms consist of ...
Foraging for resources is critical to the survival of many animal species. When resources are scarce...
For biogroups and groups of self-driven agents, making decisions often depends on interactions among...
Collective phenomena are studied in a range of contexts-from controlling locust plagues to efficient...
Collective phenomena are studied in a range of contexts-from controlling locust plagues to efficient...
Collective phenomena are studied in a range of contexts—from controlling locust plagues to efficient...
Classical models of aerial swarms often describe global coordinated motion as the combination of loc...
Most agent-based modeling techniques generate only a single trajectory in each run, greatly undersam...
Collective behavior, and swarm formation in particular, has been studied from several perspectives w...
In natural flocks/swarms, it is very appealing that low-level individual intelligence and communicat...
ABSTRACT: We present a novel model of crowd motion and swarm behaviour, in the form of a multi-agent...
Similarly to evolving controllers for single robots also con-trollers for groups of robots can be ge...
Agents that learn without forgetting (γ = 0): (a) Response probabilities grow towards unity. (b) The...
Foraging for resources is critical to the survival of many animal species. When resources are scarce...
5 pages, 3 figures, error correctedWe document a mechanism operating in complex adaptive systems lea...
AbstractWe are developing an approach for predicting emergent swarm behavior. The swarms consist of ...
Foraging for resources is critical to the survival of many animal species. When resources are scarce...
For biogroups and groups of self-driven agents, making decisions often depends on interactions among...
Collective phenomena are studied in a range of contexts-from controlling locust plagues to efficient...
Collective phenomena are studied in a range of contexts-from controlling locust plagues to efficient...
Collective phenomena are studied in a range of contexts—from controlling locust plagues to efficient...
Classical models of aerial swarms often describe global coordinated motion as the combination of loc...
Most agent-based modeling techniques generate only a single trajectory in each run, greatly undersam...