Support Vector Clustering for Outlier Detection
نویسندگان
چکیده
In this paper a novel Support vector clustering(SVC) method for outlier detection is proposed. Outlier detection algorithms have application in several tasks such as data mining, data preprocessing, data filter-cleaner, time series analysis and so on. Traditionally outlier detection methods are mostly based on modeling data based on its statistical properties and these approaches are only preferred when large scale set is available. To solve this problem, in this paper we focus on establishing the context of support vector clustering approach for outlier detection. Compared to traditional outlier detection methods , the performance of the SVC is not sensitive to the selection of needed parameters. The experiment results proved the efficiency of our method. Keywords-Support vector clustering; Outlier detection; Nearest Distance.
منابع مشابه
Outlier Detection for Support Vector Machine using Minimum Covariance Determinant Estimator
The purpose of this paper is to identify the effective points on the performance of one of the important algorithm of data mining namely support vector machine. The final classification decision has been made based on the small portion of data called support vectors. So, existence of the atypical observations in the aforementioned points, will result in deviation from the correct decision. Thus...
متن کاملA review of Support Vector Clustering with different Kernel function for Reduction of noise and outlier for Large Database
For a long decade clustering faced a problem of noise and outliers. Support Vector Clustering is one of the techniques in pattern recognition. Support Vector Clustering is Kernel-Based Clustering. Division of patterns, data items, and feature vectors into groups (clusters) is a complicated task since clustering does not assume any prior knowledge, which are the clusters to be searched for. Nois...
متن کاملThe main essence of using statistical methods for outlier detection in anomaly-based approach lies in analyzing and mining information from raw data, to improve learning
Intrusion detection is an effective mechanism to deal with challenges in network security. The rapid development in networking technology has raised the need for an effective intrusion detection system (IDS) as traditional intrusion detection methods cannot compete against the newly advanced intrusion attacks. With increasing number of data being transmitted daily to/from a network, the system ...
متن کاملAn efficient Support Vector Clustering with combined core outlier and boundary value for pre-processing of data
The performance of support vector clustering suffered Due to noisy data. The pre-processing of data play important role in support vector cluster. In support vector clustering the mapping of data from one sphere to another sphere found some unwanted behaviour of data, these behaviour are boundary point, core and outlier. These data point degrade the performance and efficiency of support vector ...
متن کاملA Spectral Clustering Based Outlier Detection Technique
Outlier detection shows its increasingly high practical value in many application areas such as intrusion detection, fraud detection, discovery of criminal activities in electronic commerce and so on. Many techniques have been developed for outlier detection, including distribution-based outlier detection algorithm, depth-based outlier detection algorithm, distance-based outlier detection algor...
متن کامل