Retrieving Relevant Passages Using N-grams for Open-Domain Question Answering

Author:

Faiz Rim1,Othman Nouha2

Affiliation:

1. University of Carthage, Institute of Higher Commercial Studies of Carthage, Rue Victor Hugo 2016, Carthage-Présidence, Tunisia

2. Higher Institute of Management of Tunis, University of Tunis 41, Avenue de la Liberté, Cité Bouchoucha, Le Bardo 2000, Tunisia

Abstract

Question Answering is most likely one of the toughest tasks in the field of Natural Language Processing. It aims at directly returning accurate and short answers to questions asked by users in human language over a huge collection of documents or database. Recently, the continuously exponential rise of digital information has imposed the need for more direct access to relevant answers. Thus, question answering has been the subject of a widespread attention and has been extensively explored over the last few years. Retrieving passages remains a crucial but also a challenging task in question answering. Although there has been an abundance of work on this task, this latter still implies non-trivial endeavor. In this paper, we propose an ad-hoc passage retrieval approach for Question Answering using n-grams. This approach relies on a new measure of similarity between a passage and a question for the extraction and ranking of the different passages based on n-gram overlapping. More concretely, our measure is based on the dependency degree of n-gram words of the question in the passage. We validate our approach by the development of the “SysPex” system that automatically returns the most relevant passages to a given question.

Publisher

World Scientific Pub Co Pte Lt

Subject

Artificial Intelligence,Artificial Intelligence

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