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ICML 2024: Paper Review #7

ICML 2024: Paper Review #7

24 September 2024
  • Quantitative Research

Machine Learning (ML) is a fast evolving discipline, which means conference attendance and hearing about the very latest research is key to the ongoing development and success of our quantitative researchers and ML engineers.

In this paper review series, our ICML 2024 attendees reveal the research and papers they found most interesting.

Here, discover the perspectives of Quantitative Researcher, Ingmar, as he discusses his most compelling findings from the conference.

Offline Actor-Critic Reinforcement Learning Scales to Large Models

Jost Tobias Springenberg, Abbas Abdolmaleki, Jingwei Zhang, Oliver Groth, Michael Bloesch, Thomas Lampe, Philemon Brakel, Sarah Bechtle, Steven Kapturowski, Roland Hafner, Nicolas Heess, Martin Riedmiller

Large-scale models for policy learning in control/robotics have shown impressive mutli-task and generalisation capabilities in recent years, but so far policy learning in the generalist large-model regime has mostly relied on Behaviour Cloning, requiring near-optimal demonstrations during training. This work demonstrates the benefits of large-scale models for offline RL.

The key contribution is an offline actor-critic algorithm that allows to smoothly trade off RL and BC loss terms. This is combined with a scalable transformer-based multi-modal architecture to represent policy and value function. The experiments include scaling analysis as well as comparisons to strong BC baselines such as Gato (Reed et al., 2022) and RoboCat (Bousmalis et al., 2023) for pre-training, as well as an analysis of fine tuning with the critic. [1] [2]

[1] A Generalist Agent

[2] RoboCat: A Self-Improving Generalist Agent for Robotic Manipulation

Offline Actor-Critic Reinforcement Learning Scales to Large Models
ICML 2023 Paper Reviews

Read paper reviews from ICML 2023 from a number of our quantitative researchers and machine learning practitioners.

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Information-Directed Pessimism for Offline Reinforcement Learning

Alec Koppel, Sujay Bhatt, Jiacheng Guo, Joe Eappen, Mengdi Wang, Sumitra Ganesh

In the offline reinforcement learning setting, this paper introduces a new type of penalty to restrict the mismatch between offline data distribution and online policy-induced distribution. Because of its interpretation as Stein information, the authors refer to this as information-directed pessimism.

Importantly, this allows for a the next-state distribution to be represented as a mixture of distributions, allowing for explicitly multi-modal state transition functions. Among others, the authors demonstrate improved performance of their method on a toy portfolio optimisation problem (Neuneier, 1997). [3]

[3] Enhancing Q-Learning for Optimal Asset Allocation

Information-Directed Pessimism for Offline Reinforcement Learning

Quantitative Research and Machine Learning

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