NEAILGDec 9, 2020

On the Binding Problem in Artificial Neural Networks

arXiv:2012.05208v1318 citations
AI Analysis

This paper addresses a foundational problem for the entire field of AI: how to achieve human-level generalization by enabling neural networks to handle symbolic information processing.

This paper argues that the inability of contemporary neural networks to dynamically and flexibly bind distributed information is the root cause of their limited generalization capacity. It proposes a unifying framework for compositional AI, focusing on segregating, representing, and composing meaningful entities from sensory inputs.

Contemporary neural networks still fall short of human-level generalization, which extends far beyond our direct experiences. In this paper, we argue that the underlying cause for this shortcoming is their inability to dynamically and flexibly bind information that is distributed throughout the network. This binding problem affects their capacity to acquire a compositional understanding of the world in terms of symbol-like entities (like objects), which is crucial for generalizing in predictable and systematic ways. To address this issue, we propose a unifying framework that revolves around forming meaningful entities from unstructured sensory inputs (segregation), maintaining this separation of information at a representational level (representation), and using these entities to construct new inferences, predictions, and behaviors (composition). Our analysis draws inspiration from a wealth of research in neuroscience and cognitive psychology, and surveys relevant mechanisms from the machine learning literature, to help identify a combination of inductive biases that allow symbolic information processing to emerge naturally in neural networks. We believe that a compositional approach to AI, in terms of grounded symbol-like representations, is of fundamental importance for realizing human-level generalization, and we hope that this paper may contribute towards that goal as a reference and inspiration.

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