As deep networks begin to be deployed as autonomous agents, the issue of how they can communicate with each other becomes important. Here, we train two deep nets from scratch to perform realistic referent identification through unsupervised emergent communication. We show that the largely interpretable emergent protocol allows the nets to successfully communicate even about object types they did not see at training time. The visual representations induced as a by-product of our training regime, moreover, show comparable quality, when re-used as generic visual features, to a recent self-supervised learning model. Our results provide concrete evidence of the viability of (interpretable) emergent deep net communication in a more realistic scenario than previously considered, as well as establishing an intriguing link between this field and self-supervised visual learning.
翻译:随着深层网络开始作为自主代理人部署,如何相互沟通的问题就变得很重要了。在这里,我们从零开始训练两个深网,以便通过不受监督的突发通信进行现实的参考识别。我们表明,大部分可解释的突发协议使得网络能够成功地就培训时看不到的物体类型进行沟通。 此外,作为我们培训制度副产品而出现的视觉表现显示,当他们作为通用视觉特征重新使用时,其质量与最近的自我监督的学习模式相当。我们的结果提供了具体的证据,证明(可解释的)新发现的深层网络通信在比以前考虑的更现实的情景下是可行的,并在这个领域和自我监督的视觉学习之间建立了令人感兴趣的联系。