We propose that humans spontaneously organize environments into clusters of states that support hierarchical planning, enabling them to tackle challenging problems by breaking them down into sub-problems at various levels of abstraction. People constantly rely on such hierarchical presentations to accomplish tasks big and small-from planning one's day, to organizing a wedding, to getting a PhD-often succeeding on the very first attempt. We formalize a Bayesian model of hierarchy discovery that explains how humans discover such useful abstractions. Building on principles developed in structure learning and robotics, the model predicts that hierarchy discovery should be sensitive to the topological structure, reward distribution, and distribu...
Knowledge about social hierarchies organizes human behavior, yet we understand little about the unde...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...
The aim of this thesis is to create precise computational models of how humans create and use hierar...
We can make good decisions by capturing and exploiting the structure of the natural world. It is tho...
Planning allows actions to be structured in pursuit of a future goal. However, in natural environmen...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
<div><p>Human behavior has long been recognized to display hierarchical structure: actions fit toget...
SummaryPlanning allows actions to be structured in pursuit of a future goal. However, in natural env...
We show how machine vision, learning, and planning can be combined to solve hierarchical consensus t...
Humans have the astonishing capacity to quickly adapt to varying environmental demands and reach com...
This thesis addresses the open problem of automatically discovering hierarchical structure in reinfo...
As the collection of data becomes more and more commonplace, it unlocks new approaches to old proble...
Many researchers have tried to model how model-based behaviour is produced in the brain, and specifi...
Biological agents are adept at flexibly solving a wide range of cognitively challenging decision-mak...
“The original publication is available at www.springerlink.com” Copyright SpringerHierarchical struc...
Knowledge about social hierarchies organizes human behavior, yet we understand little about the unde...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...
The aim of this thesis is to create precise computational models of how humans create and use hierar...
We can make good decisions by capturing and exploiting the structure of the natural world. It is tho...
Planning allows actions to be structured in pursuit of a future goal. However, in natural environmen...
Humans have the fascinating ability to achieve goals in a complex and constantly changing world, sti...
<div><p>Human behavior has long been recognized to display hierarchical structure: actions fit toget...
SummaryPlanning allows actions to be structured in pursuit of a future goal. However, in natural env...
We show how machine vision, learning, and planning can be combined to solve hierarchical consensus t...
Humans have the astonishing capacity to quickly adapt to varying environmental demands and reach com...
This thesis addresses the open problem of automatically discovering hierarchical structure in reinfo...
As the collection of data becomes more and more commonplace, it unlocks new approaches to old proble...
Many researchers have tried to model how model-based behaviour is produced in the brain, and specifi...
Biological agents are adept at flexibly solving a wide range of cognitively challenging decision-mak...
“The original publication is available at www.springerlink.com” Copyright SpringerHierarchical struc...
Knowledge about social hierarchies organizes human behavior, yet we understand little about the unde...
We present HiDe, a novel hierarchical reinforcement learning architecture that successfully solves l...
The aim of this thesis is to create precise computational models of how humans create and use hierar...