Graph Mixing Additive Networks
Maya Bechler-Speicher · Andrea Zerio · Maor Huri · Marie Vestergaard · Ran Gilad-Bachrach · Tine Jess · Samir Bhatt · Aleksejs Sazonovs
Abstract
We introduce GMAN, a flexible, interpretable, and expressive framework that extends Graph Neural Additive Networks (GNANs) to learn from sets of sparse time-series data. GMAN represents each time-dependent trajectory as a directed graph and applies an enriched, more expressive GNAN to each graph. It allows users to control the interpretability-expressivity trade-off by grouping features and graphs to encode priors, and it provides feature, node, and graph-level interpretability. On real-world datasets, including mortality prediction from blood tests and fake-news detection, GMAN outperforms strong non-interpretable black-box baselines while delivering actionable, domain-aligned explanations.
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