%0 Conference Paper %1 magnussen2023leveraging %A Magnussen, Birk Martin %A Stern, Claudius %A Sick, Bernhard %B International Conference on Computational Intelligence and Intelligent Systems (CIIS) %D 2023 %I ACM %K imported itegpub isac-www noisy_data inhomogeneous_labels neural_networks semi-supervised_learning reflection_spectroscopy %P 1--6 %T Leveraging Repeated Unlabelled Noisy Measurements to Augment Supervised Learning %U https://dl.acm.org/doi/10.1145/3638209.3638210 %X Often, producing large labelled datasets for supervised machine learning is difficult and expensive. In cases where the expensive part is due to labelling and obtaining ground truth, it is often comparably easy to acquire large datasets containing unlabelled data points. For reproducible measurements, it is possible to record information on multiple data points being from the same reproducible measurement series, which should thus have an equal but unknown ground truth. In this article, we propose a method to incorporate a dataset of such unlabelled data points for which some data points are known to be equal in end-to-end training of otherwise labelled data. We show that, with the example of predicting the carotenoid concentration in human skin from optical multiple spatially resolved reflection spectroscopy data, the proposed method is capable of reducing the required number of labelled data points to achieve the same prediction accuracy for different model architectures. In addition, we show that the proposed method is capable of reducing the negative impact of noisy data when performing a repeated measurement of the same sample.