Set-to-sequence methods in machine learning: A review

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Abstract

Machine learning on sets towards sequential output is an important and ubiquitous task, with applications ranging from language modelling and meta-learning to multi-agent strategy games and power grid optimization. Combining elements of representation learning and structured prediction, its two primary challenges include obtaining a meaningful, permutation invariant set representation and subsequently utilizing this representation to output a complex target permutation. This paper provides a comprehensive introduction to the field as well as an overview of important machine learning methods tackling both of these key challenges, with a detailed qualitative comparison of selected model architectures.

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Jurewicz, M., & Derczynski, L. (2021). Set-to-sequence methods in machine learning: A review. Journal of Artificial Intelligence Research. AI Access Foundation. https://doi.org/10.1613/JAIR.1.12839

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