Quasar Detection using Linear Support Vector Machine with Learning From Mistakes Methodology
Aniruddh Herle, Janamejaya Channegowda, Dinakar Prabhu

TL;DR
This paper presents a novel approach using Linear Support Vector Machine combined with Learning from Mistakes to improve quasar detection accuracy, significantly reducing false negatives in astronomical data classification.
Contribution
The study introduces a new classifier that effectively addresses class imbalance and misclassification costs in quasar detection, outperforming traditional methods.
Findings
10x reduction in False Negative Rate
Effective handling of class imbalance
Improved detection of rare astronomical objects
Abstract
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…
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