Multi-Task Semantic Dependency Parsing with Policy Gradient for Learning Easy-First Strategies

06/04/2019
by   Shuhei Kurita, et al.
0

In Semantic Dependency Parsing (SDP), semantic relations form directed acyclic graphs, rather than trees. We propose a new iterative predicate selection (IPS) algorithm for SDP. Our IPS algorithm combines the graph-based and transition-based parsing approaches in order to handle multiple semantic head words. We train the IPS model using a combination of multi-task learning and task-specific policy gradient training. Trained this way, IPS achieves a new state of the art on the SemEval 2015 Task 18 datasets. Furthermore, we observe that policy gradient training learns an easy-first strategy.

READ FULL TEXT

page 3

page 5

page 6

page 7

page 8

page 10

page 12

page 13

research
05/27/2020

Transition-based Semantic Dependency Parsing with Pointer Networks

Transition-based parsers implemented with Pointer Networks have become t...
research
10/21/2020

Open-Domain Frame Semantic Parsing Using Transformers

Frame semantic parsing is a complex problem which includes multiple unde...
research
02/28/2019

Better, Faster, Stronger Sequence Tagging Constituent Parsers

Sequence tagging models for constituent parsing are faster, but less acc...
research
06/27/2019

Compositional Semantic Parsing Across Graphbanks

Most semantic parsers that map sentences to graph-based meaning represen...
research
04/17/2018

Learning Joint Semantic Parsers from Disjoint Data

We present a new approach to learning semantic parsers from multiple dat...
research
05/01/2019

Context-Dependent Semantic Parsing over Temporally Structured Data

We describe a new semantic parsing setting that allows users to query th...
research
07/19/2011

Towards Open-Text Semantic Parsing via Multi-Task Learning of Structured Embeddings

Open-text (or open-domain) semantic parsers are designed to interpret an...

Please sign up or login with your details

Forgot password? Click here to reset