American Astronomical Society Meeting Abstracts
This project is focused on different ways to detect outliers. We present the first results of this work which is part of an ongoing project that classifies MaNGA galaxies using unsupervised machine learning techniques. So far, outliers had not been studied in detail, hence when dividing the galaxy classes, outliers included in the sample could be slightly modifying the outcome. Furthermore, these outliers could be an interesting source of information to investigate, thus allowing us to find exotic galaxies. Therefore, developing a method to detect outliers is crucial both to improving the classification and the study of unique galaxies. We use different methods for anomaly detection and present preliminary results.