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arxiv: 1912.13107 · v1 · pith:JYNOB7ZQ · submitted 2019-12-30 · cs.LG · cs.MA· stat.ML

Improved Structural Discovery and Representation Learning of Multi-Agent Data

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classification cs.LG cs.MAstat.ML
keywords representationdatalearningmulti-agentstructureagentsgroupsystems
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Central to all machine learning algorithms is data representation. For multi-agent systems, selecting a representation which adequately captures the interactions among agents is challenging due to the latent group structure which tends to vary depending on context. However, in multi-agent systems with strong group structure, we can simultaneously learn this structure and map a set of agents to a consistently ordered representation for further learning. In this paper, we present a dynamic alignment method which provides a robust ordering of structured multi-agent data enabling representation learning to occur in a fraction of the time of previous methods. We demonstrate the value of this approach using a large amount of soccer tracking data from a professional league.

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