A logical representation of Arabic questions toward automatic passage extraction from the Web
Patrice Bellot (LSIS, DIMAG), Wided Bakari, Mahmoud Neji

TL;DR
This paper presents a method for analyzing Arabic questions and generating logical representations to improve passage retrieval in an Arabic question-answering system, achieving promising accuracy rates.
Contribution
It introduces a novel approach for logical question representation in Arabic, aiding in more accurate passage extraction from web data.
Findings
64% accuracy in question analysis and translation into logic form
87% accuracy in passage retrieval
98% precision at rank 1 (c@1)
Abstract
With the expanding growth of Arabic electronic data on the web, extracting information, which is actually one of the major challenges of the question-answering, is essentially used for building corpus of documents. In fact, building a corpus is a research topic that is currently referred to among some other major themes of conferences, in Natural Language Processing (NLP), such as, Information Retrieval (IR), Question-Answering (QA), Automatic Summary (AS), etc. Generally, a question-answering system provides various passages to answer the user questions. To make these passages truly informative, this system needs access to an underlying knowledge base; this requires the construction of a corpus. The aim of our research is to build an Arabic question-answering system. In addition, analyzing the question must be the first step. Next, it is essential to retrieve a passage from the web…
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