Graph Convolutions over Constituent Trees for Syntax-Aware Semantic Role Labeling
This addresses the need for better SRL systems that leverage constituent syntax, which is incremental as it adapts existing GCN methods to a different syntactic representation.
The paper tackled the problem of syntax-aware semantic role labeling (SRL) by proposing a method using graph convolutional networks (GCNs) over constituent trees, showing its effectiveness on standard benchmarks like CoNLL-2005, CoNLL-2012, and FrameNet.
Semantic role labeling (SRL) is the task of identifying predicates and labeling argument spans with semantic roles. Even though most semantic-role formalisms are built upon constituent syntax and only syntactic constituents can be labeled as arguments (e.g., FrameNet and PropBank), all the recent work on syntax-aware SRL relies on dependency representations of syntax. In contrast, we show how graph convolutional networks (GCNs) can be used to encode constituent structures and inform an SRL system. Nodes in our SpanGCN correspond to constituents. The computation is done in 3 stages. First, initial node representations are produced by `composing' word representations of the first and the last word in the constituent. Second, graph convolutions relying on the constituent tree are performed, yielding syntactically-informed constituent representations. Finally, the constituent representations are `decomposed' back into word representations which in turn are used as input to the SRL classifier. We evaluate SpanGCN against alternatives, including a model using GCNs over dependency trees, and show its effectiveness on standard CoNLL-2005, CoNLL-2012, and FrameNet benchmarks.