首页> 外文会议>International Astronomical Union., Symposium >Adapting Predictive Models for Cepheid Variable Star Classification Using Linear Regression and Maximum Likelihood
【24h】

Adapting Predictive Models for Cepheid Variable Star Classification Using Linear Regression and Maximum Likelihood

机译:使用线性回归和最大可能性适应Cepheid变量星分类的预测模型

获取原文

摘要

We describe an approach to automate the classification of Cepheid variable stars into two subtypes according to their pulsation mode. Automating such classification is relevant to obtain a precise determination of distances to nearby galaxies, which in addition helps reduce the uncertainty in the current expansion of the universe. One main difficulty lies in the compatibility of models trained using different galaxy datasets; a model trained using a training dataset may be ineffectual on a testing set. A solution to such difficulty is to adapt predictive models across domains; this is necessary when the training and testing sets do not follow the same distribution. The gist of our methodology is to train a predictive model on a nearby galaxy (e.g., Large Magellanic Cloud), followed by a model-adaptation step to make the model operable on other nearby galaxies. We follow a parametric approach to density estimation by modeling the training data (anchor galaxy) using a mixture of linear models. We then use maximum likelihood to compute the right amount of variable displacement, until the testing data closely overlaps the training data. At that point, the model can be directly used in the testing data (target galaxy).
机译:我们描述了一种根据其脉动模式将Cepheid变量恒星自动化成两个亚型的方法。自动化此类分类是相关的,以获得对附近星系的距离精确测定,此外,该距离还有助于降低宇宙的当前扩展中的不确定性。一个主要困难在于使用不同的Galaxy数据集培训的模型的兼容性;使用训练数据集训练的模型可能在测试集上无效。这种难度的解决方案是在域中调整预测模型;这是必要的,当训练和测试集不遵循相同的分发时。我们的方法的主旨是在附近的Galaxy(例如,大麦哲伦云)上培训预测模型,然后是模型适应步骤,使模型在其他附近的星系上可操作。我们遵循使用线性模型的混合物建模训练数据(锚星形)来遵循参数估计的参数估计。然后,我们使用最大可能性来计算适量的可变位移量,直到测试数据与训练数据密切相关。此时,该模型可以直接用于测试数据(目标星系)。

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