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Home / Proceedings / Proceedings of the AAAI Conference on Artificial Intelligence

Gamma-Nets: Generalizing Value Estimation over Timescale

February 1, 2023

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Authors

Craig Sherstan

University of Alberta


Shibhansh Dohare

University of Alberta


James MacGlashan

Cogitai


Johannes Günther

University of Alberta


Patrick M. Pilarski

University of Alberta


DOI:

10.1609/aaai.v34i04.6027


Abstract:

Temporal abstraction is a key requirement for agents making decisions over long time horizons—a fundamental challenge in reinforcement learning. There are many reasons why value estimates at multiple timescales might be useful; recent work has shown that value estimates at different time scales can be the basis for creating more advanced discounting functions and for driving representation learning. Further, predictions at many different timescales serve to broaden an agent's model of its environment. One predictive approach of interest within an online learning setting is general value function (GVFs), which represent models of an agent's world as a collection of predictive questions each defined by a policy, a signal to be predicted, and a prediction timescale. In this paper we present Γ-nets, a method for generalizing value function estimation over timescale, allowing a given GVF to be trained and queried for arbitrary timescales so as to greatly increase the predictive ability and scalability of a GVF-based model. The key to our approach is to use timescale as one of the value estimator's inputs. As a result, the prediction target for any timescale is available at every timestep and we are free to train on any number of timescales. We first provide two demonstrations by 1) predicting a square wave and 2) predicting sensorimotor signals on a robot arm using a linear function approximator. Next, we empirically evaluate Γ-nets in the deep reinforcement learning setting using policy evaluation on a set of Atari video games. Our results show that Γ-nets can be effective for predicting arbitrary timescales, with only a small cost in accuracy as compared to learning estimators for fixed timescales. Γ-nets provide a method for accurately and compactly making predictions at many timescales without requiring a priori knowledge of the task, making it a valuable contribution to ongoing work on model-based planning, representation learning, and lifelong learning algorithms.

Topics: AAAI

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HOW TO CITE:

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski Gamma-Nets: Generalizing Value Estimation over Timescale Proceedings of the AAAI Conference on Artificial Intelligence (2020) 5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski Gamma-Nets: Generalizing Value Estimation over Timescale AAAI 2020, 5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski (2020). Gamma-Nets: Generalizing Value Estimation over Timescale. Proceedings of the AAAI Conference on Artificial Intelligence, 5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. Gamma-Nets: Generalizing Value Estimation over Timescale. Proceedings of the AAAI Conference on Artificial Intelligence 2020 p.5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. 2020. Gamma-Nets: Generalizing Value Estimation over Timescale. "Proceedings of the AAAI Conference on Artificial Intelligence". 5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. (2020) "Gamma-Nets: Generalizing Value Estimation over Timescale", Proceedings of the AAAI Conference on Artificial Intelligence, p.5717-5725

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski, "Gamma-Nets: Generalizing Value Estimation over Timescale", AAAI, p.5717-5725, 2020.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. "Gamma-Nets: Generalizing Value Estimation over Timescale". Proceedings of the AAAI Conference on Artificial Intelligence, 2020, p.5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. "Gamma-Nets: Generalizing Value Estimation over Timescale". Proceedings of the AAAI Conference on Artificial Intelligence, (2020): 5717-5725.

Craig Sherstan||Shibhansh Dohare||James MacGlashan||Johannes Günther||Patrick M. Pilarski. Gamma-Nets: Generalizing Value Estimation over Timescale. AAAI[Internet]. 2020[cited 2023]; 5717-5725.


ISSN: 2374-3468


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