ODD 2 Workshop on Outlier Detection & Description under Data Diversity

نویسندگان

  • Leman Akoglu
  • Charu Aggarwal
  • Emmanuel Müller
  • Raymond T. Ng
چکیده

In this talk I will briefly discuss recent advances in outlier detection, with a focus on distance-based techniques and discuss possible future directions in the context of rank-driven interactive analysis and data-guided explanations and visualizations. Time permitting we will examine such techniques in the context of real world analysis of multi-modal data including time series, graphs, text and factorial designs to help understand interactions among various optimizations for

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تاریخ انتشار 2014