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AuthorAl Otaibi, Jameela
AuthorHassaine, Abdelali
AuthorSafi, Zeineb
AuthorJaoua, Ali
Available date2020-10-01T11:39:52Z
Publication Date2017
Publication NameAdvanced Science Letters
ResourceScopus
URIhttp://dx.doi.org/10.1166/asl.2017.8893
URIhttp://hdl.handle.net/10576/16340
AbstractInconsistency detection is a large research area that has many applications. In the scope of Islamic content mining, this topic is of a particular interest because of the continuously increasing content and the need of people to find out more about its authenticity. Inconsistency detection is usually performed using linguistic analysis as well as the application of logic rules. We propose here a new method for inconsistency detection based on multilevel text categorization. For each categorization level, discriminative keywords are extracted using the hyper rectangular decomposition method which outputs the keywords in a hierarchical rank of importance. Then, those keywords are fed into the random forest classifier which automatically detects the category of each advisory opinion. Inconsistency detection is performed using an algorithm that detects inconsistent paths of advisory opinions. This study has been validated on a set of Islamic advisory opinions related to vows. The results are very interesting and show that our method is very promising in the field.
SponsorThis contribution was made possible by NPRP grant 06-1220-1-233 from the Qatar National Research Fund (a member of Qatar Foundation).
Languageen
PublisherAmerican Scientific Publishers
SubjectHyper rectangular decomposition
Inconsistency detection
Random forest
Text categorization
TitleInconsistency detection in Islamic advisory opinions using multilevel text categorization
TypeArticle
Pagination4591-4595
Issue Number5
Volume Number23


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