Learning abstract planning domains and mappings to real world perceptions

10/16/2018
by   Luciano Serafini, et al.
0

Most of the works on planning and learning, e.g., planning by (model based) reinforcement learning, are based on two main assumptions: (i) the set of states of the planning domain is fixed; (ii) the mapping between the observations from the real word and the states is implicitly assumed, and is not part of the planning domain. Consequently, the focus is on learning the transitions between states. Current approaches address neither the problem of learning new states of the planning domain, nor the problem of representing and updating the mapping between the real world perceptions and the states. In this paper, we drop such assumptions. We provide a formal framework in which (i) the agent can learn dynamically new states of the planning domain; (ii) the mapping between abstract states and the perception from the real world, represented by continuous variables, is part of the planning domain; (iii) such mapping is learned and updated along the "life" of the agent. We define and develop an algorithm that interleaves planning, acting, and learning. We provide a first experimental evaluation that shows how this novel framework can effectively learn coherent abstract planning models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/14/2019

Incremental Learning of Discrete Planning Domains from Continuous Perceptions

We propose a framework for learning discrete deterministic planning doma...
research
01/10/2013

Planning by Prioritized Sweeping with Small Backups

Efficient planning plays a crucial role in model-based reinforcement lea...
research
06/11/2022

Learning Model Preconditions for Planning with Multiple Models

Different models can provide differing levels of fidelity when a robot i...
research
10/16/2012

Learning STRIPS Operators from Noisy and Incomplete Observations

Agents learning to act autonomously in real-world domains must acquire a...
research
05/26/2023

A Categorical Representation Language and Computational System for Knowledge-Based Planning

Classical planning representation languages based on first-order logic h...
research
07/17/2022

Discover Life Skills for Planning with Bandits via Observing and Learning How the World Works

We propose a novel approach for planning agents to compose abstract skil...
research
12/08/2022

PALMER: Perception-Action Loop with Memory for Long-Horizon Planning

To achieve autonomy in a priori unknown real-world scenarios, agents sho...

Please sign up or login with your details

Forgot password? Click here to reset