We propose a quantitative and qualitative analysis of the performances of statistical models for frame semantic structure extraction. We report on a replication study on FrameNet 1.7 data and show that preprocessing toolkits play a major role in argument identification performances, observing gains similar in their order of magnitude to those reported by re- cent models for frame semantic parsing. We report on the robustness of a recent statistical classifier for frame semantic parsing to lexical configurations of predicate-argument structures, relying on an artificially augmented dataset generated using a rule-based algorithm combining valence pattern matching and lexical substitution. We prove that syntactic preprocessing plays a major ro...
We develop a probabilistic latent-variable model to discover semantic frames—types of events and the...
Word embeddings have gained a lot of traction in recent years since their multidimensional represent...
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...
Frame semantics is a linguistic theory that has been instantiated for English in the FrameNet lexico...
We present a brief history and overview of statistical methods in frame-semantic parsing – the autom...
This paper contributes a formalization of frame-semantic parsing as a structure prediction problem a...
We present a novel technique for semantic frame identification using distributed rep-resentations of...
We address the question of which syntactic representation is best suited for FrameNet-based semantic...
Frame Semantic Role Labeling (FSRL) identifies arguments and labels them with frame semantic roles d...
This thesis focuses on robust analysis of natural language semantics. A primary bottleneck for seman...
We propose two general and robust methods for enriching resources annotated in the Frame Semantic pa...
This thesis presents an in-depth contrastive error analysis of a set of semantic dependency parsing ...
Abstract. Compared to other existing semantic role repositories, FrameNet is characterized by an ext...
En traitement automatique de la langue, les différentes étapes d'analyse usuelles ont tour à tour am...
Abstract. Determining the semantic role of sentence constituents is a key task in determining senten...
We develop a probabilistic latent-variable model to discover semantic frames—types of events and the...
Word embeddings have gained a lot of traction in recent years since their multidimensional represent...
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...
Frame semantics is a linguistic theory that has been instantiated for English in the FrameNet lexico...
We present a brief history and overview of statistical methods in frame-semantic parsing – the autom...
This paper contributes a formalization of frame-semantic parsing as a structure prediction problem a...
We present a novel technique for semantic frame identification using distributed rep-resentations of...
We address the question of which syntactic representation is best suited for FrameNet-based semantic...
Frame Semantic Role Labeling (FSRL) identifies arguments and labels them with frame semantic roles d...
This thesis focuses on robust analysis of natural language semantics. A primary bottleneck for seman...
We propose two general and robust methods for enriching resources annotated in the Frame Semantic pa...
This thesis presents an in-depth contrastive error analysis of a set of semantic dependency parsing ...
Abstract. Compared to other existing semantic role repositories, FrameNet is characterized by an ext...
En traitement automatique de la langue, les différentes étapes d'analyse usuelles ont tour à tour am...
Abstract. Determining the semantic role of sentence constituents is a key task in determining senten...
We develop a probabilistic latent-variable model to discover semantic frames—types of events and the...
Word embeddings have gained a lot of traction in recent years since their multidimensional represent...
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...