• Corpus ID: 15631423

Outlier Detection: Applications And Techniques

@inproceedings{Singh2012OutlierDA,
  title={Outlier Detection: Applications And Techniques},
  author={Karanjit Singh and Shuchita Upadhyaya},
  year={2012}
}
Outliers once upon a time regarded as noisy data in statistics, has turned out to be an important problem which is being researched in diverse fields of research and application domains. Many outlier detection techniques have been developed specific to certain application domains, while some techniques are more generic. Some application domains are being researched in strict confidentiality such as research on crime and terrorist activities. The techniques and results of such techniques are not… 
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