“…Additionally, fewer topics are dedicated to extracting or explaining (see Interpretability column in Table 1), spectroscopic features. To this end, they mainly applied model-based feature selection techniques to identify and remove noisy features in order to improve prediction accuracy and computational efficiency [64,61,62,65,25,66,57,26,60,67]. In another body of work, popular feature selection methods such as PCA [68], and PLS [69] were employed to discover the correlation between decomposed fuel spectra and fuel sample clustering results [54], help isolate certain chemical groups responsible for the deviation in predicted values [49,25], and correlate certain spectra regions of pharmaceutical tablets to the concentration of antiviral drug [62].…”