Emergence of Machine Language: Towards Symbolic Intelligence with Neural Networks
Yuqi Wang, Xu-Yao Zhang, Cheng-Lin Liu, Zhaoxiang Zhang

TL;DR
This paper proposes a novel approach called machine language that combines symbolic and neural representations, enabling machines to generate a discrete, semantic language with improved interpretability, generalization, and robustness.
Contribution
It introduces a method to derive discrete language representations from neural networks, bridging the gap between symbolic and connectionist AI paradigms.
Findings
Discrete language representations improve interpretability.
Discrete language enhances generalization capabilities.
Machines can generate flexible, semantic languages through cooperation.
Abstract
Representation is a core issue in artificial intelligence. Humans use discrete language to communicate and learn from each other, while machines use continuous features (like vector, matrix, or tensor in deep neural networks) to represent cognitive patterns. Discrete symbols are low-dimensional, decoupled, and have strong reasoning ability, while continuous features are high-dimensional, coupled, and have incredible abstracting capabilities. In recent years, deep learning has developed the idea of continuous representation to the extreme, using millions of parameters to achieve high accuracies. Although this is reasonable from the statistical perspective, it has other major problems like lacking interpretability, poor generalization, and is easy to be attacked. Since both paradigms have strengths and weaknesses, a better choice is to seek reconciliation. In this paper, we make an…
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Taxonomy
TopicsNeural Networks and Applications
