Online Anomaly Detection under Over-sampling PCA

Abstract

Anomaly detection is the process of identifying unusual behavior. Outlier detection is an important issue in data mining and has been studied in different research areas. In this paper we use “Leave One Out” procedure to check each individual point the “with or without” effect on the variation of principal directions. Based on this idea, an over-sampling principal component analysis (osPCA) outlier detection method is proposed for emphasizing the influence of an abnormal instance. Except for identifying the suspicious outliers, we also design an online anomaly detection to detect the new arriving anomaly. In addition, we also study the quick updating of the principal directions for the effective computation and satisfying the online detecting demand. It is widely used in data mining; the proposed framework is favored for online applications which have computation or memory limitations. Compared with the all existing algorithms, our proposed method is in terms of flexibility, accuracy and efficiency.

Authors and Affiliations

P. Chinababu, Mrs. A. Vanathi

Keywords

Related Articles

A Study on the Strength Development of Geopolymer Concrete using GGBS at Ambient Temperature

Today Concrete usage around the globe is second only to water. The demand of concrete is increasing day by day and cement is used for satisfying the need of development of infrastructure facilities. The production of on...

An overview of Multiplicative data perturbation for privacy preserving Data mining

Privacy is an important issue when one wants to make use of data that involves individuals’ sensitive information. Research on protecting the privacy of individuals and the confidentiality of data has received contribut...

Quality of Work Life among Employees Working in Mahindra & Mahindra Auto Private Limited

The most interesting approach in Motivation is the Quality of work life. QWL induces the employees to participate actively in molding and shaping the work environment accordingly. This helps employees working in the org...

Analysis and Simulation of Modified Cockcroft Walton Voltage Multiplier for High Step Up DC to DC Converter

This paper presents a high step-up DC-DC converter based on the Modified Cockcroft-Walton voltage multiplier (MCWVM). In this project is high voltage is generated from very low input voltage by using the proposed conver...

A Quality Function Deployment Methodology for Product Development

A constant challenge for any fast paced industry, such as consumer electronics, is the very short technology life span needed to successfully take a product from conception to market while staying competitive with other...

Download PDF file
  • EP ID EP19178
  • DOI -
  • Views 261
  • Downloads 4

How To Cite

P. Chinababu, Mrs. A. Vanathi (2014). Online Anomaly Detection under Over-sampling PCA. International Journal for Research in Applied Science and Engineering Technology (IJRASET), 2(12), -. https://europub.co.uk/articles/-A-19178