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Algorithms for enhancing pattern separability, feature selection and incremental learning with applications to gas-sensing electronic nose systems.

机译:应用于气敏电子鼻系统的算法,用于增强模式可分离性,特征选择和增量学习。

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Three major issues in pattern recognition and data analysis have been addressed in this study and applied to the problem of identification of volatile organic compounds (VOC) for gas sensing applications. Various approaches have been proposed and discussed. These approaches are not only applicable to the VOC identification, but also to a variety of pattern recognition and data analysis problems. In particular, (1) enhancing pattern separability for challenging classification problems, (2) optimum feature selection problem, and (3) incremental learning for neural networks have been investigated.; Three different approaches are proposed for enhancing pattern separability for classification of closely spaced, or possibly overlapping clusters. In the neurofuzzy approach, a fuzzy inference system that considers the dynamic ranges of individual features is developed. Feature range stretching (FRS) is introduced as an alternative approach for increasing intercluster distances by mapping the tight dynamic range of each feature to a wider range through a nonlinear function. Finally, a third approach, nonlinear cluster transformation (NCT), is proposed, which increases intercluster distances while preserving intracluster distances. It is shown that NCT achieves comparable, or better, performance than the other two methods at a fraction of the computational burden. The implementation issues and relative advantages and disadvantages of these approaches are systematically investigated.; Selection of optimum features is addressed using both a decision tree based approach, and a wrapper approach. The hill-climb search based wrapper approach is applied for selection of the optimum features for gas sensing problems.; Finally, a new method, Learn++, is proposed that gives classification algorithms, the capability of incrementally learning from new data. Learn++ is introduced for incremental learning of new data, when the original database is no longer available. Learn++ algorithm is based on strategically combining an ensemble of classifiers, each of which is trained to learn only a small portion of the pattern space. Furthermore, Learn++ is capable of learning new data even when new classes are introduced, and it also features a built-in mechanism for estimating the reliability of its classification decision.; All proposed methods are explained in detail and simulation results are discussed along with directions for future work.
机译:这项研究解决了模式识别和数据分析中的三个主要问题,并将其应用于气体传感应用中挥发性有机化合物(VOC)的识别问题。已经提出并讨论了各种方法。这些方法不仅适用于VOC识别,而且适用于各种模式识别和数据分析问题。特别是,(1)研究了具有挑战性的分类问题的增强模式可分离性,(2)优化特征选择问题,以及(3)用于神经网络的增量学习。提出了三种不同的方法来增强模式可分离性,以对紧密间隔的或可能重叠的群集进行分类。在神经模糊方法中,开发了一种考虑各个特征的动态范围的模糊推理系统。引入了特征范围拉伸(FRS),作为通过使用非线性函数将每个特征的紧密动态范围映射到更宽范围来增加簇间距离的替代方法。最后,提出了第三种方法,即非线性聚类转换(NCT),它可以在保持簇内距离的同时增加簇间距离。结果表明,NCT的计算量仅为其他两种方法的相当或更好。系统地研究了这些方法的实现问题以及相对优缺点。使用基于决策树的方法和包装器方法来解决最佳功能的选择。应用基于爬山搜索的包装方法来选择用于气体传感问题的最佳特征。最后,提出了一种新的方法Learn ++,该方法为分类算法提供了从新数据中逐步学习的功能。当原始数据库不再可用时,将引入Learn ++来增量学习新数据。 Learn ++算法基于策略性地结合一系列分类器,每个分类器都经过训练以仅学习模式空间的一小部分。此外,即使引入了新的类,Learn ++仍能够学习新数据,并且它还具有内置的机制来估计其分类决策的可靠性。详细说明了所有提出的方法,并讨论了仿真结果以及未来工作的方向。

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