SNARE: a link analytic system for graph labeling and risk detection

  title={SNARE: a link analytic system for graph labeling and risk detection},
  author={Mary McGlohon and Stephen Bay and Markus G. Anderle and David M. Steier and Christos Faloutsos},
Classifying nodes in networks is a task with a wide range of applications. It can be particularly useful in anomaly and fraud detection. Many resources are invested in the task of fraud detection due to the high cost of fraud, and being able to automatically detect potential fraud quickly and precisely allows human investigators to work more efficiently. Many data analytic schemes have been put into use; however, schemes that bolster link analysis prove promising. This work builds upon the… CONTINUE READING
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