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Bioinformatics Data Mining Using Artificial Immune Systems and Neural Networks

机译:使用人工免疫系统和神经网络的生物信息学数据挖掘

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Bioinformatics is a data-intensive field of research and development. The purpose of bioinformatics data mining is to discover the relationships and patterns in large databases to provide useful information for biomedical analysis and diagnosis. In this research, algorithms based on artificial immune systems (AIS) and artificial neural networks (ANN) are employed for bioinformatics data mining. Three different variations of the real-valued negative selection algorithm and a multi-layer feedforward neural network model are discussed, tested and compared via computer simulations. It is shown that the ANN model yields the best overall result while the AIS algorithm is advantageous when only the “normal” (or “self”) data is available.
机译:生物信息学是数据密集型研究与开发领域。生物信息学数据挖掘的目的是发现大型数据库中的关系和模式,从而为生物医学分析和诊断提供有用的信息。在这项研究中,基于人工免疫系统(AIS)和人工神经网络(ANN)的算法被用于生物信息学数据挖掘。通过计算机仿真,对实值否定选择算法和多层前馈神经网络模型的三种不同形式进行了讨论,测试和比较。结果表明,当只有“正常”(或“自身”)数据可用时,ANN模型产生最佳的总体结果,而AIS算法则是有利的。

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