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Artificial immune systems for Artificial Olfaction data analysis: Comparison between AIRS and ANN models

机译:用于人工嗅觉数据分析的人工免疫系统:AIRS和ANN模型之间的比较

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Artificial Olfaction (AO) data analysts have gained long term experience on nervous system based machine learning metaphors such as Artificial Neural Networks. In this work we propose and evaluate the use of a novel tool based on an emerging, however, powerful metaphor: the Artificial Immune Systems (AIS). AIS models were developed in the '90s; ever since they have reached significant maturity, and were to show good performance in both explorative data analysis and classification tasks. After selecting different artificial olfaction databases, we compare the utility of classic Back-Propagation Neural Network (BPNN) models with Artificial Immune Recognition Systems (AIRS) algorithms for classification problems, discussing its architectural strengths and weaknesses. Although BPNN retained a slight performance advantage on the investigated datasets, we were able to show that the AIS metaphor can express interesting characteristics for artificial olfaction data analysis. As an example, in a preliminary setup, the AIRS classifier showed superior performance when the sensor signals are affected by drift.
机译:人工嗅觉(AO)数据分析员已经在基于神经系统的机器学习隐喻(例如人工神经网络)上获得了长期经验。在这项工作中,我们提出并评估了基于新兴但功能强大的隐喻的新型工具的使用:人工免疫系统(AIS)。 AIS模型是在90年代开发的;从那时起,它们就已经非常成熟,并且在探索性数据分析和分类任务中均显示出良好的性能。在选择了不同的人工嗅觉数据库之后,我们将经典的反向传播神经网络(BPNN)模型与人工免疫识别系统(AIRS)算法进行分类的问题进行了比较,讨论了其体系结构的优缺点。尽管BPNN在所研究的数据集上保留了轻微的性能优势,但我们能够证明AIS隐喻可以表达用于人工嗅觉数据分析的有趣特征。例如,在初步设置中,当传感器信号受漂移影响时,AIRS分类器显示出卓越的性能。

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