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An Intelligent Recommender System Based on Association Rule Analysis for Requirement Engineering
Author(s) -
Mohammad I. Muhairat,
Shadi Bi,
Bilal Hawashin,
Mohammad Elbes,
Mahmoud AlAyyoub
Publication year - 2020
Publication title -
jucs - journal of universal computer science
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.284
H-Index - 53
eISSN - 0948-695X
pISSN - 0948-6968
DOI - 10.3897/jucs.2020.003
Subject(s) - association rule learning , computer science , recommender system , completeness (order theory) , apriori algorithm , requirements engineering , data mining , process (computing) , requirements analysis , software , data science , machine learning , mathematical analysis , mathematics , programming language , operating system
Requirement gathering is a vital step in software engineering. Even though many recent researches concentrated on the improvement of the requirement gathering process, many of their works lack completeness especially when the number of users is large. Data Mining techniques have been recently employed in various domains with promising results. In this work, we propose an intelligent recommender system for requirement engineering based on association rule analysis, which is a main category in Data Mining. Such recommender would contribute in enhancing the accuracy of the gathered requirements and provide more comprehensive results. Conducted experiments in this work prove that FP Growth outperformed Apriori in terms of execution and space consumption, while both methods were efficient in term of accuracy.

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