Djazia AMGHAR

Work place: Department of Computer Science, Biomedical Engineering Laboratory, University Abou Bekr Belkaid – Tlemcen, B.P.230- Tlemcen 13000, Algérie

E-mail: djazia_d12@hotmail.com

Website:

Research Interests: Computer systems and computational processes, Data Mining, Decision Support System, Data Structures and Algorithms

Biography

Djazia AMGHAR, Received her License degree in Computer Sciences from the Tlemcen University,Algeria in 2008. In 2010 he obtains a master degree in the same field. And is currently pursuing her PhD Thesis in the Biomedical Engineering Laboratory from the University of Tlemcen (Algeria), She is especially interested in research in Data Mining, medical and biologic data classification and intelligent decision support systems.

Author Articles
Extracting a Linguistic Summary from a Medical Database

By Djazia AMGHAR Amine.M.CHIKH

DOI: https://doi.org/10.5815/ijisa.2018.12.02, Pub. Date: 8 Dec. 2018

In general, medical clustering concerns a big database. The present paper aims at extracting a fuzzy linguistic summary from a large medical database. A linguistic summary is used to reduce large volumes of data to simple sentences. It is worth noting that with the increase of the amount of medical data, different techniques of machine learning have been developed recently.
In this article, an attempt is made to build a medical linguistic summary template. Our linguistic summary model is based on the calculated fuzzy cardinality. It deals with semantic queries in natural language.
Our proposal is to develop a classification system based on the linguistic summary of two medical databases in which the calculation of similarity between different sets of linguistic summaries is used; the patient’s class is then identified by calculating the Sugeno integral.
The present study was successful in developing a classification system that is based on the linguistic summary of two datasets from the UCI Machine Learning Repository, i.e. Pima Indians
Diabetes dataset and Wisconsin Diagnostic Breast Cancer (WDBC) dataset. The results obtained were then employed for a benchmark test.

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