Building a Syntactic-Semantic Interface for aSemi-Automatically Generated TAG for Arabic

Building a Syntactic-Semantic Interface for aSemi-Automatically Generated TAG for Arabic

 

Cherifa Ben Khelil1,2, Chiraz Ben OthmaneZribi1, Denys Duchier2, and Yannick Parmentier3
1RIADI-ENSI, Université La Manouba, Tunisia
2LIFO, Université d'Orléans, France
3LORIA-Projet SYNALP, Université de Lorraine, France

 

Abstract: Syntactic and semantic resources play an important role for various Natural Language Processing (NLP) tasks by providing information about the correct structural representations of the sentences and their meaning. To date, there is not a wide-coverage electronic grammar for the Arabic language. In this context, we present a new approach for building a Tree Adjoining Grammar (TAG) to represent the syntax and the semantic of modern standard Arabic. This grammar is produced semi-automatically with the eXtensible MetaGrammar (XMG) description language. First the syntax of Arabic is described using the defined Arab-XMG meta-grammar. Then semantic information is added by introducing semantic frame-based dimension into the meta-grammar. This is achieved by exploiting lexical resources such as ArabicVerbNet. Finally, the link between semantic and syntax is established using a syntax-semantic interface that allows the construction of sentence meaning through semantic role labeling. Experiments were performed to check grammar coverage as well as the syntactic-semantic analysis. The results showed that the generated grammar can cover the basic syntactic structures of Arabic sentences and the different phrasal structures with a precision rate of about 92%. Moreover, it confirms the effectiveness of the proposed approach as we were able to parse semantically a set of sentences and build their semantic representations with a precision rate of about 72%.

Keywords: TAG, meta-grammar, syntax-semantic interface, semantic frame, semantic role, Arabic language.

Received February 19, 2018; accepted April 18, 2018

 
Read 2481 times
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…