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Learning to Draw: Emergent Communication through Sketching

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Evidence that visual communication preceded written language and provided a basis for it goes back to prehistory, in forms such as cave and rock paintings depicting traces of our distant ancestors. Emergent communication research has sought to explore how agents can learn to communicate in order to collaboratively solve tasks. Existing research has focused on language, with a learned communication channel transmitting sequences of discrete tokens between the agents. In this work, we explore a visual communication channel between agents that are allowed to draw with simple strokes. Our agents are parameterised by deep neural networks, and the drawing procedure is differentiable, allowing for end-to-end training. In the framework of a referential communication game, we demonstrate that agents can not only successfully learn to communicate by drawing, but with appropriate inductive biases, can do so in a fashion that humans can interpret. We hope to encourage future research to consider visual communication as a more flexible and directly interpretable alternative of training collaborative agents.

Daniela Mihai, Jonathon Hare• 2021

Related benchmarks

TaskDatasetResultRank
Image ClassificationSTL-10 (test)
Accuracy50.81
357
Rightmost object color inference (RC)CLEVR
Accuracy62.29
13
Rightmost object shape inferenceCLEVR
Accuracy43.96
13
Rightmost object material inferenceCLEVR
Accuracy54.47
13
Shifted rightmost object color inferenceCLEVR
Accuracy (Shifted Rightmost Color)17.21
13
Third object from right color inferenceCLEVR
Accuracy16.47
13
Bottommost object color inference (BC)CLEVR
BC Accuracy15.84
13
Leftmost object color inference (LC)CLEVR
Accuracy14.01
13
Rightmost object size inferenceCLEVR
Accuracy63.98
13
Geometric Concept ClassificationGeoclidean Constraints 1.0 (test)
Accuracy57.26
10
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