DATA MINING IN IDENTIFYING PREMIUM AND REGULAR GASOLINE USING SUPPORT VECTOR MACHINES AS NOVEL APPROACH FOR ARSON AND FUEL SPILL INVESTIGATION

S. Olatunji, I. Adeleke
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引用次数: 1

Abstract

In this work, a novel data mining model based on Support Vector Machines (SVM) for the identification of gasoline types has been investigated and developed. Detection and correct identification of gasoline types during Arson and Fuel Spill Investigation are very important in forensic science. As the number of arson and spillage becomes a common place, it becomes more important to have an accurate means of detecting and classifyin gg asoline found at such sites of incidence. However, currently only a very few number of classification models have been explored in this germane field of forensic science, particularly as relates to gasoline identification. Thus, we have developed Support Vector Machines (SVM) based identification model for identifyin gg asoline types. The model was constructed usin gg as chromatography–mass spectrometry (GC–MS) spectral data obtained from gasoline sold in Canada over one calendar year. Prediction accuracy of the model was evaluated and compared with earlier used methods on the same datasets. Empirical results from simulation showed that SVM based model produced accurate and promising results better than the best among the other earlier implemented Artificial Neural Network and Principal Component Analysis methods on the same datasets.
基于支持向量机的优质汽油和普通汽油数据挖掘为纵火案和燃油泄漏调查提供了新方法
本文研究并开发了一种基于支持向量机(SVM)的汽油类型识别数据挖掘模型。在火灾和燃油泄漏调查中,汽油类型的检测和正确鉴定是法医学研究的重要内容。随着纵火案和泄漏事件的频繁发生,有一种准确的方法来检测和分类在这些事件发生地点发现的任何一种汽油就变得更加重要。然而,目前在法医科学的这一密切领域,特别是在汽油鉴定方面,只探索了很少的几种分类模式。因此,我们开发了基于支持向量机(SVM)的识别模型来识别gg - sol类型。该模型是用gg作为色谱-质谱(GC-MS)的光谱数据来构建的,这些数据来自加拿大销售的汽油在一个日历年内。在相同的数据集上,对模型的预测精度进行了评估,并与早期使用的方法进行了比较。仿真的实证结果表明,在相同的数据集上,基于SVM的模型比其他早期实现的人工神经网络和主成分分析方法得到的结果更准确、更有希望。
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