Binary Space Partitioning as Intrinsic Reward

04/10/2018
by   Wojciech Skaba, et al.
0

An autonomous agent embodied in a humanoid robot, in order to learn from the overwhelming flow of raw and noisy sensory, has to effectively reduce the high spatial-temporal data dimensionality. In this paper we propose a novel method of unsupervised feature extraction and selection with binary space partitioning, followed by a computation of information gain that is interpreted as intrinsic reward, then applied as immediate-reward signal for the reinforcement-learning. The space partitioning is executed by tiny codelets running on a simulated Turing Machine. The features are represented by concept nodes arranged in a hierarchy, in which those of a lower level become the input vectors of a higher level.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/10/2018

Evaluating Actuators in a Purely Information-Theory Based Reward Model

AGINAO builds its cognitive engine by applying self-programming techniqu...
research
02/19/2023

AIIR-MIX: Multi-Agent Reinforcement Learning Meets Attention Individual Intrinsic Reward Mixing Network

Deducing the contribution of each agent and assigning the corresponding ...
research
02/06/2023

Intrinsic Rewards from Self-Organizing Feature Maps for Exploration in Reinforcement Learning

We introduce an exploration bonus for deep reinforcement learning method...
research
01/18/2022

Inducing Structure in Reward Learning by Learning Features

Reward learning enables robots to learn adaptable behaviors from human i...
research
06/18/2018

A unified strategy for implementing curiosity and empowerment driven reinforcement learning

Although there are many approaches to implement intrinsically motivated ...
research
10/24/2012

Lex-Partitioning: A New Option for BDD Search

For the exploration of large state spaces, symbolic search using binary ...
research
04/10/2018

The AGINAO Self-Programming Engine

The AGINAO is a project to create a human-level artificial general intel...

Please sign up or login with your details

Forgot password? Click here to reset