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Quasar Detection using Linear Support Vector Machine with Learning From Mistakes Methodology

机译:利用错误支持方法学习的线性支持向量机进行类星体检测

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The field of Astronomy requires the collection and assimilation of vast volumes of data. The data handling and processing problem has become severe as the sheer volume of data produced by scientific instruments each night grows exponentially. This problem becomes extensive for conventional methods of processing the data, which was mostly manual, but is the perfect setting for the use of Machine Learning approaches. While building classifiers for Astronomy, the cost of losing a rare object like supernovae or quasars to detection losses is far more severe than having many false positives, given the rarity and scientific value of these objects. In this paper, a Linear Support Vector Machine (LSVM) is explored to detect Quasars, which are extremely bright objects in which a supermassive black hole is surrounded by a luminous accretion disk. In Astronomy, it is vital to correctly identify quasars, as they are very rare in nature. Their rarity creates a class-imbalance problem that needs to be taken into consideration. The class-imbalance problem and high cost of misclassification are taken into account while designing the classifier. To achieve this detection, a novel classifier is explored, and its performance is evaluated. It was observed that LSVM along with Ensemble Bagged Trees (EBT) achieved a 10x reduction in the False Negative Rate, using the Learning from Mistakes methodology.
机译:天文领域需要收集和同化巨大的数据。数据处理和处理问题变得严重,因为每晚都会呈指数级化的科学仪器产生的数据量。对于处理数据的传统方法,此问题变得广泛,这主要是手动的,但是使用机器学习方法的完美设置。在为天文学进行构建分类器时,鉴于这些物体的罕见和科学价值,赋予超新星或差异为检测损失的罕见物体的成本远远严重。在本文中,探索了线性支持向量机(LSVM)以检测Quasars,这是极亮的物体,其中超大的黑洞被发光的吸收盘包围。在天文学中,正确识别Quasars至关重要,因为它们本质上非常罕见。他们的稀有性创造了一个需要考虑的类别不平衡问题。在设计分类器的同时考虑类别 - 不平衡问题和高成本的错误分类。为了实现这种检测,探索了一种新颖的分类器,并评估其性能。观察到LSVM与集合袋树(EBT)一起达到了错误的负率为10倍,使用错误方法的学习。

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