Defying the gravity of learning curve: a characteristic of nearest neighbour anomaly detectors

作者:Kai Ming Ting, Takashi Washio, Jonathan R. Wells, Sunil Aryal

摘要

Conventional wisdom in machine learning says that all algorithms are expected to follow the trajectory of a learning curve which is often colloquially referred to as ‘more data the better’. We call this ‘the gravity of learning curve’, and it is assumed that no learning algorithms are ‘gravity-defiant’. Contrary to the conventional wisdom, this paper provides the theoretical analysis and the empirical evidence that nearest neighbour anomaly detectors are gravity-defiant algorithms.

论文关键词:Learning curve, Anomaly detection, Nearest neighbour, Computational geometry, AUC

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论文官网地址:https://doi.org/10.1007/s10994-016-5586-4