This thesis describes computational modelling of information gathering behaviour under active inference – a framework for describing Bayes optimal behaviour. Under active inference perception, attention and action all serve for same purpose: minimising variational free energy. Variational free energy is an upper bound on surprise and minimising it maximises an agent’s evidence for its survival. An agent achieves this by acquiring information (resolving uncertainty) about the hidden states of the world and uses the acquired information to act on the outcomes it prefers. In this work I placed special emphasis on the resolution of uncertainty about the states of the world. I first created a visual search task called scene construction task. In...
Sequential decision problems distill important challenges frequently faced by humans. Through repeat...
This paper presents an active inference based simulation study of visual foraging. The goal of the s...
Humans are highly proficient in learning about the environments in which they operate. They form fle...
This paper describes an active inference scheme for visual searches and the perceptual synthesis ent...
Successful behaviour depends on the right balance between maximising reward and soliciting informati...
Information gathering comprises actions whose (sensory) consequences resolve uncertainty (i.e., are ...
In previous papers, we introduced a normative scheme for scene construction and epistemic (visual) s...
This paper describes an active inference scheme for visual searches and the perceptual synthesis ent...
In previous papers, we introduced a normative scheme for scene construction and epistemic (visual) s...
Adaptive agents must act in intrinsically uncertain environments with complex latent structure. Here...
Attention is a well-studied and complex topic that covers many fields of research. Effects of attent...
For making decisions in everyday life we often have first to infer the set of environmental features...
For making decisions in everyday life we often have first to infer the set of environmental features...
Humans and many animals can selectively sample important parts of their visual surroundings to carry...
Sequential decision problems distill important challenges frequently faced by humans. Through repeat...
This paper presents an active inference based simulation study of visual foraging. The goal of the s...
Humans are highly proficient in learning about the environments in which they operate. They form fle...
This paper describes an active inference scheme for visual searches and the perceptual synthesis ent...
Successful behaviour depends on the right balance between maximising reward and soliciting informati...
Information gathering comprises actions whose (sensory) consequences resolve uncertainty (i.e., are ...
In previous papers, we introduced a normative scheme for scene construction and epistemic (visual) s...
This paper describes an active inference scheme for visual searches and the perceptual synthesis ent...
In previous papers, we introduced a normative scheme for scene construction and epistemic (visual) s...
Adaptive agents must act in intrinsically uncertain environments with complex latent structure. Here...
Attention is a well-studied and complex topic that covers many fields of research. Effects of attent...
For making decisions in everyday life we often have first to infer the set of environmental features...
For making decisions in everyday life we often have first to infer the set of environmental features...
Humans and many animals can selectively sample important parts of their visual surroundings to carry...
Sequential decision problems distill important challenges frequently faced by humans. Through repeat...
This paper presents an active inference based simulation study of visual foraging. The goal of the s...
Humans are highly proficient in learning about the environments in which they operate. They form fle...