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Logical Characterizations of Recurrent Graph Neural Networks with Reals and Floats

Ahvonen, Veeti; Heiman, Damian; Kuusisto, Antti; Lutz, Carsten (2024-12-10)

 
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6218_Logical_characterizations.pdf (548.2Kt)
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https://openreview.net/forum?id=atDcnWqG5n


Ahvonen, Veeti
Heiman, Damian
Kuusisto, Antti
Lutz, Carsten
10.12.2024

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Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-202501171513

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Peer reviewed
Tiivistelmä
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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Kalevantie 5
PL 617
33014 Tampereen yliopisto
oa[@]tuni.fi | Tietosuoja | Saavutettavuusseloste