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首页> 外文期刊>Publications of the Astronomical Society of the Pacific >Comparison of Multi-class and Binary Classification Machine Learning Models in Identifying Strong Gravitational Lenses
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Comparison of Multi-class and Binary Classification Machine Learning Models in Identifying Strong Gravitational Lenses

机译:多级和二元分类机学习模型识别强引力镜头的比较

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Typically, binary classification lens-finding schemes are used to discriminate between lens candidates and non-lenses. However, these models often suffer from substantial false-positive classifications. Such false positives frequently occur due to images containing objects such as crowded sources, galaxies with arms, and also images with a central source and smaller surrounding sources. Therefore, a model might confuse the stated circumstances with an Einstein ring. It has been proposed that by allowing such commonly misclassified image types to constitute their own classes, machine learning models will more easily be able to learn the difference between images that contain real lenses, and images that contain lens imposters. Using Hubble Space Telescope images, in the F814W filter, we compare the usage of binary and multi-class classification models applied to the lens finding task. From our findings, we conclude there is not a significant benefit to using the multi-class model over a binary model. We will also present the results of a simple lens search using a multi-class machine learning model, and potential new lens candidates.
机译:通常,二进制分类镜头找到方案用于区分镜头候选和非透镜。然而,这些模型经常遭受大量假阳性分类。由于含有诸如拥挤源,带臂的星系的图像,以及具有中央源和较小的周围源的图像,经常发生这种误报。因此,模型可能会使所规定的情况与爱因斯坦戒指混为一组。已经提出,通过允许这种通常错误分类的图像类型构成自己的类,更容易能够学习包含真实镜头的图像的差异,以及包含镜头驾驶器的图像之间的差异。在F814W过滤器中使用哈勃空间望远镜图像,我们比较应用于镜头查找任务的二进制和多级分类模型的使用情况。从我们的调查结果来看,我们得出结论在二元模型中使用多级模型没有显着的好处。我们还将使用多级机器学习模型以及潜在的新镜头候选展示简单镜头搜索的结果。

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