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학술논문한국경영과학회지2010.06 발행KCI 피인용 3

대용량 자료 분석을 위한 밀도기반 이상치 탐지

Density-based Outlier Detection for Very Large Data

김승(서울대학교); 조남욱(서울대학교); 강석호(서울대학교)

35권 2호, 71~88쪽

초록

A density-based outlier detection such as an LOF (Local Outlier Factor) tries to find an outlying observation by using density of its surrounding space. In spite of several advantages of a density-based outlier detection method, the computational complexity of outlier detection has been one of major barriers in its application. In this paper, we present an LOF algorithm that can reduce computation time of a density based outlier detection algorithm. A kd-tree indexing and approximated k-nearest neighbor search algorithm (ANN) are adopted in the proposed method. A set of experiments was conducted to examine performance of the proposed algorithm. The results show that the proposed method can effectively detect local outliers in reduced computation time.

Abstract

A density-based outlier detection such as an LOF (Local Outlier Factor) tries to find an outlying observation by using density of its surrounding space. In spite of several advantages of a density-based outlier detection method, the computational complexity of outlier detection has been one of major barriers in its application. In this paper, we present an LOF algorithm that can reduce computation time of a density based outlier detection algorithm. A kd-tree indexing and approximated k-nearest neighbor search algorithm (ANN) are adopted in the proposed method. A set of experiments was conducted to examine performance of the proposed algorithm. The results show that the proposed method can effectively detect local outliers in reduced computation time.

발행기관:
한국경영과학회
분류:
경영학

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대용량 자료 분석을 위한 밀도기반 이상치 탐지 | 한국경영과학회지 2010 | AskLaw | 애스크로 AI