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Outlier Analysis in BP/RP Spectral Bands

机译:BP / RP谱带中的异常值分析

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摘要

Most astronomic databases include a certain amount of exceptional values that are generally called outliers. Isolating and analysing these "outlying objects" is important to improve the quality of the original dataset, to reduce the impact of anomalous observations, and most importantly, to discover new types of objects that were hitherto unknown because of their low frequency or short lifespan. We propose an unsuper-vised technique, based on artificial neural networks and combined with a specific study of the trained network, to treat the problem of outliers management. This work is an integrating part of the GAIA mission of the European Space Agency.
机译:大多数天文学数据库都包含一定数量的异常值,通常被称为离群值。隔离和分析这些“外围对象”对于提高原始数据集的质量,减少异常观测的影响以及最重要的是发现由于频率低或寿命短而迄今未知的新型对象很重要。我们提出了一种基于人工神经网络的无监督技术,并结合对受过训练的网络的具体研究,来解决离群值管理的​​问题。这项工作是欧洲航天局GAIA任务的有机组成部分。

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