The fitness of behaving agents depends on their knowledge of the environment, which demands efficient exploration strategies. Active sensing formalizes exploration as reduction of uncertainty about the current state of the environment. Despite strong theoretical justifications, active sensing has had limited applicability due to difficulty in estimating information gain. Here we address this issue by proposing a linear approximation to information gain and by implementing efficient gradient-based action selection within an artificial neural network setting. We compare information gain estimation with state of the art, and validate our model on an active sensing task based on MNIST dataset. We also propose an approximation that exploits the ...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...
The fitness of behaving agents depends on their knowledge of the environment, which demands efficien...
Information theory has been often used to analyse the interactions of agents with their environment....
© 2016 Elsevier LtdA key component of interacting with the world is how to direct ones’ sensors so a...
Sensory inference under conditions of uncer-tainty is a major problem in both machine learning and c...
An important but poorly understood aspect of sensory processing is the role of active sensing, the u...
An important but poorly understood aspect of sensory processing is the role of active sensing, the u...
This work is licensed under a Creative Commons Attribution 4.0 International License.In active sensi...
We present an end-to-end procedure for embodied exploration based on two biologically inspired compu...
Information gathering in a partially observable environment can be formulated as a reinforcement lea...
Humans and animals readily utilize active sensing, or the use of self-motion, to focus sensory and c...
Abstract—This paper presents an approach to approximate information content for active sensing tasks...
Recent advances in human motion sensing technologies and machine learning have enhanced the potentia...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...
The fitness of behaving agents depends on their knowledge of the environment, which demands efficien...
Information theory has been often used to analyse the interactions of agents with their environment....
© 2016 Elsevier LtdA key component of interacting with the world is how to direct ones’ sensors so a...
Sensory inference under conditions of uncer-tainty is a major problem in both machine learning and c...
An important but poorly understood aspect of sensory processing is the role of active sensing, the u...
An important but poorly understood aspect of sensory processing is the role of active sensing, the u...
This work is licensed under a Creative Commons Attribution 4.0 International License.In active sensi...
We present an end-to-end procedure for embodied exploration based on two biologically inspired compu...
Information gathering in a partially observable environment can be formulated as a reinforcement lea...
Humans and animals readily utilize active sensing, or the use of self-motion, to focus sensory and c...
Abstract—This paper presents an approach to approximate information content for active sensing tasks...
Recent advances in human motion sensing technologies and machine learning have enhanced the potentia...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
In this paper we investigate the active inference framework as a means to enable autonomous behavior...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...