Semantic Tagging-Based Document Retrieval Using Non-Negative Matrix Factorization | ||
| النشرة المعلوماتية في الحاسبات والمعلومات | ||
| Article 3, Volume 1, Issue 1 - Serial Number 20190101, January 2019, Pages 29-34 PDF (430.32 K) | ||
| Document Type: المقالة الأصلية | ||
| DOI: 10.21608/fcihib.2019.107513 | ||
| Authors | ||
| Fatma Sayed Gadelrab; Mohammed H. Haggag; Rowayda A. Sadek | ||
| Abstract | ||
| Many document retrieval methods focusing on unstructured text to deliver more meaningful information on the user. Tag-based document retrieval aims to address a challenge to searching relevant text-documents given a set of tags. Tag-based approaches received a wide attention as a possible solution to the big-content related IR, showing a high performance through a combination of its effectiveness and efficiency. This paper use word sense isambiguation with non-negative matrix factorization to generate topic model based semantic. | ||
| Keywords | ||
| semantic tagging; topic model; semantic document retrieval; non-negative matrix factorization | ||
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