LOAIMay 23, 2024

Logical Characterizations of Recurrent Graph Neural Networks with Reals and Floats

arXiv:2405.14606v419 citationsh-index: 3NIPS
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This provides foundational insights for researchers in graph neural networks and logic, linking computational models to formal logics.

The paper tackles the problem of characterizing the expressive power of recurrent graph neural networks (GNNs) with real and floating-point numbers, showing that they match specific logics: a rule-based modal logic with counting for floats and an infinitary modal logic for reals, and proving that both have the same expressive power over monadic second-order logic (MSO)-definable properties.

In pioneering work from 2019, Barceló and coauthors identified logics that precisely match the expressive power of constant iteration-depth graph neural networks (GNNs) relative to properties definable in first-order logic. In this article, we give exact logical characterizations of recurrent GNNs in two scenarios: (1) in the setting with floating-point numbers and (2) with reals. For floats, the formalism matching recurrent GNNs is a rule-based modal logic with counting, while for reals we use a suitable infinitary modal logic, also with counting. These results give exact matches between logics and GNNs in the recurrent setting without relativising to a background logic in either case, but using some natural assumptions about floating-point arithmetic. Applying our characterizations, we also prove that, relative to graph properties definable in monadic second-order logic (MSO), our infinitary and rule-based logics are equally expressive. This implies that recurrent GNNs with reals and floats have the same expressive power over MSO-definable properties and shows that, for such properties, also recurrent GNNs with reals are characterized by a (finitary!) rule-based modal logic. In the general case, in contrast, the expressive power with floats is weaker than with reals. In addition to logic-oriented results, we also characterize recurrent GNNs, with both reals and floats, via distributed automata, drawing links to distributed computing models.

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