LGAIJan 27

FloydNet: A Learning Paradigm for Global Relational Reasoning

arXiv:2601.19094v1
Originality Highly original
AI Analysis

This addresses the problem of global reasoning in AI for domains like algorithmic tasks and optimization, offering a novel paradigm beyond message-passing GNNs.

The paper tackles the limitation of Graph Neural Networks (GNNs) in global relational reasoning by introducing FloydNet, a dynamic programming-based architecture that achieves state-of-the-art results, including near-perfect scores (>99%) on the CLRS-30 benchmark and high exact solution rates for the Traveling Salesman Problem.

Developing models capable of complex, multi-step reasoning is a central goal in artificial intelligence. While representing problems as graphs is a powerful approach, Graph Neural Networks (GNNs) are fundamentally constrained by their message-passing mechanism, which imposes a local bottleneck that limits global, holistic reasoning. We argue that dynamic programming (DP), which solves problems by iteratively refining a global state, offers a more powerful and suitable learning paradigm. We introduce FloydNet, a new architecture that embodies this principle. In contrast to local message passing, FloydNet maintains a global, all-pairs relationship tensor and learns a generalized DP operator to progressively refine it. This enables the model to develop a task-specific relational calculus, providing a principled framework for capturing long-range dependencies. Theoretically, we prove that FloydNet achieves 3-WL (2-FWL) expressive power, and its generalized form aligns with the k-FWL hierarchy. FloydNet demonstrates state-of-the-art performance across challenging domains: it achieves near-perfect scores (often >99\%) on the CLRS-30 algorithmic benchmark, finds exact optimal solutions for the general Traveling Salesman Problem (TSP) at rates significantly exceeding strong heuristics, and empirically matches the 3-WL test on the BREC benchmark. Our results establish this learned, DP-style refinement as a powerful and practical alternative to message passing for high-level graph reasoning.

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