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CRANFIELD UNIVERSITY Eleni Anthippi Chatzimichali ...

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appear to be similar (the differences are less than 1%). However, CPCA clearly<br />

improves the outcome of the integration between HPLC and e-nose, since the overall<br />

accuracies of all classifiers have increased by approximately 10% compared to GPA.<br />

Based on all documented classification results, the highest overall accuracy, equal to<br />

80%, was obtained for standalone HPLC prior and after the application of PCA. Even<br />

though the analysis of integrated datasets did demonstrate relatively good<br />

performance, the results were not as great as standalone HPLC.<br />

Figure 4-7 Overall accuracies (%CC) for the standalone datasets of case study 1<br />

The figure illustrates the overall performance of all implemented classification ensembles on the<br />

standalone datasets of case study 1. The bars represent the percentages of correctly classified samples<br />

(%CC) and are coloured according to the classification model under study (PLS-DA, linear and RBF<br />

SVMs). Analyses have been conducted both prior (raw data) and after PCA. In all implemented<br />

classifiers, bootstrapping was applied for hyperparameter optimisation. The overall accuracies have<br />

been rounded towards the nearest integer.<br />

95

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