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https://research.matf.bg.ac.rs/handle/123456789/470
Title: | Neural Algorithmic Reasoners are Implicit Planners | Authors: | Deac, Andreea Velǐckovíc, Petar Milinković, Ognjen Bacon, Pierre Luc Tang, Jian Nikolić, Mladen |
Affiliations: | Informatics and Computer Science Informatics and Computer Science |
Issue Date: | 1-Jan-2021 | Rank: | M33 | Related Publication(s): | Advances in Neural Information Processing Systems | Abstract: | Implicit planning has emerged as an elegant technique for combining learned models of the world with end-to-end model-free reinforcement learning. We study the class of implicit planners inspired by value iteration, an algorithm that is guaranteed to yield perfect policies in fully-specified tabular environments. We find that prior approaches either assume that the environment is provided in such a tabular form-which is highly restrictive-or infer "local neighbourhoods" of states to run value iteration over-for which we discover an algorithmic bottleneck effect. This effect is caused by explicitly running the planning algorithm based on scalar predictions in every state, which can be harmful to data efficiency if such scalars are improperly predicted. We propose eXecuted Latent Value Iteration Networks (XLVINs), which alleviate the above limitations. Our method performs all planning computations in a high-dimensional latent space, breaking the algorithmic bottleneck. It maintains alignment with value iteration by carefully leveraging neural graph-algorithmic reasoning and contrastive self-supervised learning. Across eight low-data settings-including classical control, navigation and Atari-XLVINs provide significant improvements to data efficiency against value iteration-based implicit planners, as well as relevant model-free baselines. Lastly, we empirically verify that XLVINs can closely align with value iteration. |
URI: | https://research.matf.bg.ac.rs/handle/123456789/470 | ISBN: | 9781713845393 | ISSN: | 10495258 |
Appears in Collections: | Research outputs |
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