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A publicação pode ser exportada nos seguintes formatos: referência da APA (American Psychological Association), referência do IEEE (Institute of Electrical and Electronics Engineers), BibTeX e RIS.

Exportar Referência (APA)
Yao, H., Fu, X., Yang, Y. & Postolache, O. (2018). An incremental local outlier detection method in the Data Stream. Applied Sciences. 8 (8)
Exportar Referência (IEEE)
Haiqing et al.,  "An incremental local outlier detection method in the Data Stream", in Applied Sciences, vol. 8, no. 8, 2018
Exportar BibTeX
@article{haiqing2018_1769567203120,
	author = "Yao, H. and Fu, X. and Yang, Y. and Postolache, O.",
	title = "An incremental local outlier detection method in the Data Stream",
	journal = "Applied Sciences",
	year = "2018",
	volume = "8",
	number = "8",
	doi = "10.3390/app8081248",
	url = "https://www.mdpi.com/2076-3417/8/8/1248"
}
Exportar RIS
TY  - JOUR
TI  - An incremental local outlier detection method in the Data Stream
T2  - Applied Sciences
VL  - 8
IS  - 8
AU  - Yao, H.
AU  - Fu, X.
AU  - Yang, Y.
AU  - Postolache, O.
PY  - 2018
SN  - 2076-3417
DO  - 10.3390/app8081248
UR  - https://www.mdpi.com/2076-3417/8/8/1248
AB  - Outlier detection has attracted a wide range of attention for its broad applications, such as fault diagnosis and intrusion detection, among which the outlier analysis in data streams with high uncertainty and infinity is more challenging. Recent major work of outlier detection has focused on principle research of the local outlier factor, and there are few studies on incremental updating strategies, which are vital to outlier detection in data streams. In this paper, a novel incremental local outlier detection approach is introduced to dynamically evaluate the local outlier in the data stream. An extended local neighborhood consisting of k nearest neighbors, reverse nearest neighbors and shared nearest neighbors is estimated for each data. The theoretical evidence of algorithm complexity for the insertion of new data and deletion of old data in the composite neighborhood shows that the amount of affected data in the incremental calculation is finite. Finally, experiments performed on both synthetic and real datasets verify its scalability and outlier detection accuracy. All results show that the proposed approach has comparable performance with state-of-the-art k nearest neighbor-based methods
ER  -