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Towards Reliable Rare Category Analysis on Graphs via Individual Calibration

Longfeng Wu, Bowen Lei, Dongkuan Xu, Dawei Zhou

202313 citationsDOI

Abstract

Rare categories abound in a number of real-world networks and play a pivotal role in a variety of high-stakes applications, including financial fraud detection, network intrusion detection, and rare disease diagnosis. Rare category analysis (RCA) refers to the task of detecting, characterizing, and comprehending the behaviors of minority classes in a highly-imbalanced data distribution. While the vast majority of existing work on RCA has focused on improving the prediction performance, a few fundamental research questions heretofore have received little attention and are less explored: How confident or uncertain is a prediction model in rare category analysis? How can we quantify the uncertainty in the learning process and enable reliable rare category analysis?

Topics & Concepts

Computer scienceVariety (cybernetics)Task (project management)Process (computing)Rare eventsMachine learningArtificial intelligenceIntrusion detection systemData miningData scienceMathematicsStatisticsEngineeringSystems engineeringOperating systemImbalanced Data Classification TechniquesText and Document Classification TechnologiesAdvanced Graph Neural Networks
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