Introducing DRAIL - a Step Towards Declarative Deep Relational Learning

Xiao Zhang     María Leonor Pacheco     Chang Li     Dan Goldwasser    
EMNLP 16 Workshop on Structured Prediction for NLP, 2016
[pdf]

Abstract

We introduce DRAIL, a new declarative framework for specifying Deep Relational Models. Our framework separates structural considerations, which express domain knowledge, from the learning architecture to simplify the process of building complex structural models. We show the DRAIL formulation of two NLP tasks, Twitter Part-of-Speech tagging and Entity-Relation extraction. We compare the performance of different deep learning architectures for these structural learning tasks.


Bib Entry

  @article{ZPLG_ws_2016,
    author = "Xiao Zhang and María Leonor Pacheco and Chang Li and Dan Goldwasser",
    title = "Introducing DRAIL - a Step Towards Declarative Deep Relational Learning",
    booktitle = "EMNLP 16 Workshop on Structured Prediction for NLP",
    year = "2016"
  }