首页> 外文期刊>Astronomy and astrophysics >Automated novelty detection in the WISE survey with one-class support vector machines
【24h】

Automated novelty detection in the WISE survey with one-class support vector machines

机译:一类支持向量机在WISE调查中自动进行新颖性检测

获取原文
获取外文期刊封面目录资料

摘要

Wide-angle photometric surveys of previously uncharted sky areas or wavelength regimes will always bring in unexpected sources – novelties or even anomalies – whose existence and properties cannot be easily predicted from earlier observations. Such objects can be efficiently located with novelty detection algorithms. Here we present an application of such a method, called one-class support vector machines (OCSVM), to search for anomalous patterns among sources preselected from the mid-infrared AllWISE catalogue covering the whole sky. To create a model of expected data we train the algorithm on a set of objects with spectroscopic identifications from the SDSS DR13 database, present also in AllWISE. The OCSVM method detects as anomalous those sources whose patterns – WISE photometric measurements in this case – are inconsistent with the model. Among the detected anomalies we find artefacts, such as objects with spurious photometry due to blending, but more importantly also real sources of genuine astrophysical interest. Among the latter, OCSVM has identified a sample of heavily reddened AGN/quasar candidates distributed uniformly over the sky and in a large part absent from other WISE-based AGN catalogues. It also allowed us to find a specific group of sources of mixed types, mostly stars and compact galaxies. By combining the semi-supervised OCSVM algorithm with standard classification methods it will be possible to improve the latter by accounting for sources which are not present in the training sample, but are otherwise well-represented in the target set. Anomaly detection adds flexibility to automated source separation procedures and helps verify the reliability and representativeness of the training samples. It should be thus considered as an essential step in supervised classification schemes to ensure completeness and purity of produced catalogues.
机译:对以前未知的天空区域或波长范围进行广角光度测量,总是会带来意想不到的来源-新奇甚至异常-无法通过早期观察轻易预测其存在和性质。可以使用新颖性检测算法有效地定位此类对象。在这里,我们介绍一种称为一类支持向量机(OCSVM)的方法的应用,以从覆盖整个天空的中红外AllWISE目录中预选的源中搜索异常模式。为了创建期望数据的模型,我们在SDW DR13数据库(也存在于AllWISE中)中通过光谱识别在一组对象上训练算法。 OCSVM方法将异常模式(在这种情况下为WISE光度测量)与模型不一致的那些源检测为异常。在检测到的异常中,我们发现了伪影,例如由于混合而具有伪光度学的物体,但更重要的是,还有真正的天体物理学兴趣的真实来源。在后者中,OCSVM确定了一个样本,这些样本被严重发红的AGN /类星体候选均匀分布在天空中,而大部分其他基于WISE的AGN目录中则没有。它还使我们能够找到一组特定类型的混合类型源,主要是恒星和紧凑星系。通过将半监督的OCSVM算法与标准分类方法结合起来,将有可能通过考虑训练样本中不存在但在目标集中可以很好表示的来源来改进后者。异常检测为自动源分离程序增加了灵活性,并有助于验证训练样本的可靠性和代表性。因此,在确保分类目录的完整性和纯度的监督分类方案中,应将其视为必不可少的步骤。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号