Ferrone Lorenzo, Zanzotto Fabio Massimo
Department of Enterprise Engineering, University of Rome Tor Vergata, Rome, Italy.
Front Robot AI. 2020 Jan 21;6:153. doi: 10.3389/frobt.2019.00153. eCollection 2019.
Natural language is inherently a discrete symbolic representation of human knowledge. Recent advances in machine learning (ML) and in natural language processing (NLP) seem to contradict the above intuition: discrete symbols are fading away, erased by vectors or tensors called and . However, there is a strict link between distributed/distributional representations and discrete symbols, being the first an approximation of the second. A clearer understanding of the strict link between distributed/distributional representations and symbols may certainly lead to radically new deep learning networks. In this paper we make a survey that aims to renew the link between symbolic representations and distributed/distributional representations. This is the right time to revitalize the area of interpreting how discrete symbols are represented inside neural networks.
自然语言本质上是人类知识的离散符号表示。机器学习(ML)和自然语言处理(NLP)的最新进展似乎与上述直觉相矛盾:离散符号正在逐渐消失,被称为 和 的向量或张量所取代。然而,分布式/分布表示与离散符号之间存在着紧密的联系,前者是后者的一种近似。更清楚地理解分布式/分布表示与符号之间的紧密联系,肯定可能会带来全新的深度学习网络。在本文中,我们进行了一项调查,旨在重新建立符号表示与分布式/分布表示之间的联系。现在是振兴解释离散符号在神经网络中如何表示这一领域的时候了。