Five Properties of Specific Curiosity You Didn't Know Curious Machines Should Have

12/01/2022
by   Nadia M. Ady, et al.
0

Curiosity for machine agents has been a focus of lively research activity. The study of human and animal curiosity, particularly specific curiosity, has unearthed several properties that would offer important benefits for machine learners, but that have not yet been well-explored in machine intelligence. In this work, we conduct a comprehensive, multidisciplinary survey of the field of animal and machine curiosity. As a principal contribution of this work, we use this survey as a foundation to introduce and define what we consider to be five of the most important properties of specific curiosity: 1) directedness towards inostensible referents, 2) cessation when satisfied, 3) voluntary exposure, 4) transience, and 5) coherent long-term learning. As a second main contribution of this work, we show how these properties may be implemented together in a proof-of-concept reinforcement learning agent: we demonstrate how the properties manifest in the behaviour of this agent in a simple non-episodic grid-world environment that includes curiosity-inducing locations and induced targets of curiosity. As we would hope, our example of a computational specific curiosity agent exhibits short-term directed behaviour while updating long-term preferences to adaptively seek out curiosity-inducing situations. This work, therefore, presents a landmark synthesis and translation of specific curiosity to the domain of machine learning and reinforcement learning and provides a novel view into how specific curiosity operates and in the future might be integrated into the behaviour of goal-seeking, decision-making computational agents in complex environments.

READ FULL TEXT

page 36

page 38

page 40

page 41

research
05/20/2022

Prototyping three key properties of specific curiosity in computational reinforcement learning

Curiosity for machine agents has been a focus of intense research. The s...
research
03/17/2022

The Frost Hollow Experiments: Pavlovian Signalling as a Path to Coordination and Communication Between Agents

Learned communication between agents is a powerful tool when approaching...
research
01/17/2022

Detecting danger in gridworlds using Gromov's Link Condition

Gridworlds have been long-utilised in AI research, particularly in reinf...
research
10/24/2022

Evaluating Long-Term Memory in 3D Mazes

Intelligent agents need to remember salient information to reason in par...
research
01/27/2020

Reinforcement Learning-based Autoscaling of Workflows in the Cloud: A Survey

Reinforcement Learning (RL) has demonstrated a great potential for autom...
research
09/09/2019

Partner Approximating Learners (PAL): Simulation-Accelerated Learning with Explicit Partner Modeling in Multi-Agent Domains

Mixed cooperative-competitive control scenarios such as human-machine in...
research
01/15/2022

Deciding Not To Decide

Sometimes unexpected, novel, unconceivable events enter our lives. The c...

Please sign up or login with your details

Forgot password? Click here to reset