This paper presents (AraSAS) the first open-source Arabic semantic analysis tagging system. AraSAS is a software framework that provides full semantic tagging of text written in Arabic. AraSAS is based on the UCREL Semantic Analysis System (USAS) which was first developed to semantically tag English text. Similarly to USAS, AraSAS uses a hierarchical semantic tag set that contains 21 major discourse fields and 232 fine-grained semantic field tags. The paper describes the creation, validation and evaluation of AraSAS. In addition, we demonstrate a first case study to illustrate the affordances of applying USAS and AraSAS semantic taggers on the Zayed University Arabic-English Bilingual Undergraduate Corpus (ZAEBUC) (Palfreyman and Habash, 20...
We present a comprehensive Arabic tagging system: from the raw text to tagging disambiguation. For ...
AbstractDetecting semantic errors in a text is still a challenging area of investigation. A lot of r...
Abstract—Assigning the appropriate grammatical category to a word given a context is very important ...
Applications of statistical Arabic NLP in general, and text mining in specific, along with the tools...
In this paper we report on an experimental syntactically and morphologically driven rule-based Arabi...
Preview available at https://www.cambridge.org/core/journals/natural-language-engineering/firstviewI...
Extended version of a paper presented at ACIT 2017.International audienceSyntactic and semantic reso...
The study described in this paper belongs to the area of computational linguistics. Computational li...
This thesis presents a novel framework for developing an Arabic Short Text Semantic Similarity (STSS...
A semantic tagger aiming to detect relevant entities in Arabic medical documents and tagging them wi...
Arabic language is very rich in derivations, vocabulary, and grammatical structures. The problem of ...
Arabic language is the most spoken languages in the Semitic languages group, and one of the most com...
The part of speech (PoS) tagging is a core component in many natural language processing (NLP) appli...
AbstractAutomatic extraction of semantic relationships among Arabic concepts to formulate ontology m...
Part 4: Learning and Data MiningInternational audienceA number of POS-taggers for Arabic have been p...
We present a comprehensive Arabic tagging system: from the raw text to tagging disambiguation. For ...
AbstractDetecting semantic errors in a text is still a challenging area of investigation. A lot of r...
Abstract—Assigning the appropriate grammatical category to a word given a context is very important ...
Applications of statistical Arabic NLP in general, and text mining in specific, along with the tools...
In this paper we report on an experimental syntactically and morphologically driven rule-based Arabi...
Preview available at https://www.cambridge.org/core/journals/natural-language-engineering/firstviewI...
Extended version of a paper presented at ACIT 2017.International audienceSyntactic and semantic reso...
The study described in this paper belongs to the area of computational linguistics. Computational li...
This thesis presents a novel framework for developing an Arabic Short Text Semantic Similarity (STSS...
A semantic tagger aiming to detect relevant entities in Arabic medical documents and tagging them wi...
Arabic language is very rich in derivations, vocabulary, and grammatical structures. The problem of ...
Arabic language is the most spoken languages in the Semitic languages group, and one of the most com...
The part of speech (PoS) tagging is a core component in many natural language processing (NLP) appli...
AbstractAutomatic extraction of semantic relationships among Arabic concepts to formulate ontology m...
Part 4: Learning and Data MiningInternational audienceA number of POS-taggers for Arabic have been p...
We present a comprehensive Arabic tagging system: from the raw text to tagging disambiguation. For ...
AbstractDetecting semantic errors in a text is still a challenging area of investigation. A lot of r...
Abstract—Assigning the appropriate grammatical category to a word given a context is very important ...