Focused Model-Learning and Planning for Non-Gaussian Continuous State-Action Systems

07/26/2016
by   Zi Wang, et al.
0

We introduce a framework for model learning and planning in stochastic domains with continuous state and action spaces and non-Gaussian transition models. It is efficient because (1) local models are estimated only when the planner requires them; (2) the planner focuses on the most relevant states to the current planning problem; and (3) the planner focuses on the most informative and/or high-value actions. Our theoretical analysis shows the validity and asymptotic optimality of the proposed approach. Empirically, we demonstrate the effectiveness of our algorithm on a simulated multi-modal pushing problem.

READ FULL TEXT
research
11/04/2017

Guiding the search in continuous state-action spaces by learning an action sampling distribution from off-target samples

In robotics, it is essential to be able to plan efficiently in high-dime...
research
03/12/2023

The Planner Optimization Problem: Formulations and Frameworks

Identifying internal parameters for planning is crucial to maximizing th...
research
10/17/2020

Task Scoping: Building Goal-Specific Abstractions for Planning in Complex Domains

A generally intelligent agent requires an open-scope world model: one ri...
research
11/30/2018

Automated Tactical Decision Planning Model with Strategic Values Guidance for Local Action-Value-Ambiguity

In many real-world planning problems, action's impact differs with a pla...
research
03/20/2013

A Language for Planning with Statistics

When a planner must decide whether it has enough evidence to make a deci...
research
10/02/2020

Deliberative Acting, Online Planning and Learning with Hierarchical Operational Models

The most common representation formalisms for automated planning are des...
research
01/30/2020

STRIPS Action Discovery

The problem of specifying high-level knowledge bases for planning become...

Please sign up or login with your details

Forgot password? Click here to reset