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Classifying bent radio galaxies from a mixture of point-like/extended images with Machine Learning

机译:使用机器学习对点状/扩展图像混合后的弯曲射电星系进行分类

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The hypothesis that bent radio sources are supposed to be found in rich, massive galaxy clusters and the avalibility of huge amount of data from radio surveys have fueled our motivation to use Machine Learning (ML) to identify bent radio sources and as such use them as tracers for galaxy clusters. The shapelet analysis allowed us to decompose radio images into 256 features that could be fed into the ML algorithm. Additionally, ideas from the field of neuro-psychology helped us to consider training the machine to identify bent galaxies at different orientations. From our analysis, we found that the Random Forest algorithm was the most effective with an accuracy rate of 92% for a classification of point and extended sources as well as an accuracy of 80% for bent and unbent classification.
机译:弯曲无线电源应该在丰富的大型星系团中发现的假设以及来自无线电调查的大量数据的可用性推动了我们使用机器学习(ML)识别弯曲无线电源并以此来使用弯曲无线电源的动机银河星团的示踪剂。小波分析使我们能够将无线电图像分解为256个可以输入到ML算法中的特征。此外,来自神经心理学领域的想法帮助我们考虑对机器进行培训,以识别不同方向的弯曲星系。通过我们的分析,我们发现随机森林算法最有效,对点和扩展源进行分类的准确率为92%,对弯曲和不弯曲的分类的准确率为80%。

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