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EDIST2

This repository presents "EDIST2: Error Distance Approach for Drift Detection and Monitoring" proposed by Imen Khamassi et al.(Self-Adaptive Windowing Approach for Handling Complex Concept Drift).

Getting Started

Prerequisites

  • JDK 7+
  • MOA 2016+

Features

  • EDIST2 was proposed in order to deal with these complex drifts EDIST2 monitors the learner performance through a self-adaptive window that is autonomously adjusted through a statistical hypothesis test. This statistical test provides theoretical guarantees, regarding the false alarm rate, which were experimentally confirmed.

Authors

  • Jorge C. Chamby-Diaz - Initial work - jchambyd

License

This project is licensed under the MIT License - see the LICENSE.md file for details