2018
DOI: 10.48550/arxiv.1806.08297
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Learning Graph Weighted Models on Pictures

Philip Amortila,
Guillaume Rabusseau

Abstract: Graph Weighted Models (GWMs) have recently been proposed as a natural generalization of weighted automata over strings and trees to arbitrary families of labeled graphs (and hypergraphs). A GWM generically associates a labeled graph with a tensor network and computes a value by successive contractions directed by its edges. In this paper, we consider the problem of learning GWMs defined over the graph family of pictures (or 2dimensional words). As a proof of concept, we consider regression and classification t… Show more

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