基于人工蜂群和粗糙集的肝炎疾病诊断知识推理

P. KauserAhmed, D. Acharjya
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引用次数: 4

摘要

数字世界每天都会产生大量的原始数据。从这些数据中获取有用的信息和主要特征是具有挑战性的,它已成为当前研究的主要领域。另一个关键领域是知识推理。在这两个方向上都进行了大量的研究。群体智能用于特征选择,而对于知识推理,则广泛使用模糊计算或粗糙计算。近年来,智能和群体智能技术的融合正在蓬勃发展。在本研究中,作者对人工蜂群和粗糙集进行了杂交。在初始阶段,他们使用一个人工蜂群来寻找主要特征。进一步,使用粗糙集生成规则对这些主要特征进行了分析。所提出的模型确实有助于仔细诊断疾病。对肝炎数据集进行了实证分析。此外,还进行了比较研究。分析表明了所提模型的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Inferencing Using Artificial Bee Colony and Rough Set for Diagnosis of Hepatitis Disease
Vast volumes of raw data are generated from the digital world each day. Acquiring useful information and chief features from this data is challenging, and it has become a prime area of current research. Another crucial area is knowledge inferencing. Much research has been carried out in both directions. Swarm intelligence is used for feature selection whereas for knowledge inferencing either fuzzy or rough computing is widely used. Hybridization of intelligent and swarm intelligence techniques are booming recently. In this research work, the authors hybridize both artificial bee colony and rough set. At the initial phase, they employ an artificial bee colony to find the chief features. Further, these main features are analyzed using rough set generating rules. The proposed model indeed helps to diagnose a disease carefully. An empirical analysis is carried out on hepatitis dataset. In addition, a comparative study is also presented. The analysis shows the viability of the proposed model.
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