Efficient human-like semantic representations via the Information Bottleneck principle

9 Aug 2018Noga ZaslavskyCharles KempTerry RegierNaftali Tishby

Maintaining efficient semantic representations of the environment is a major challenge both for humans and for machines. While human languages represent useful solutions to this problem, it is not yet clear what computational principle could give rise to similar solutions in machines... (read more)

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