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A unified framework for Volatile Organic Compound classification and regression

机译:挥发性有机化合物分类和回归的统一框架

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Motivated by the insect olfactory system, which resolves both the identity and the quantity of a nectar in parallel based on the same sensory cue, we address the problem of Volatile Organic Compound (VOC) classification and regression in a unified setting. We derive a maximum margin formulation for minimizing the empirical regression error and the classification error jointly, and then call the sequential minimal optimization procedure for solution. The solution yields a pool of support vectors that achieves both tasks almost equally accurately as individual performances of a support vector machine classifier and a support vector regressor designed independently. We investigate empirically the advantages and inconveniences of handling these two problems under a single formulation for odor identification and quantification. We demonstrate the method on an extensive dataset acquired by an array metal-oxide sensors for five VOC identities and a wide range of concentrations.
机译:由昆虫嗅觉系统的激励,其基于同一感官提示并行地解决了花蜜的身份和数量,我们在统一环境中解决了挥发性有机化合物(VOC)分类和回归的问题。我们引导了最大的保证金制度,以便将经验回归误差和分类误差联合,然后调用序列最小优化过程进行解决方案。该解决方案产生了一种支持矢量池,其几乎同样准确地实现了两个任务,作为支持向量机分类器的个体性能和独立设计的支持向量回归线。我们在经验上调查了在单一配方下处理这两个问题的优点和不便,以进行气味鉴定和量化。我们展示了由阵列金属氧化物传感器获取的广泛数据集的方法,用于五个VOC身份和广泛的浓度。

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