K-NS: Section-Based Outlier Detection in High Dimensional Space

05/05/2014
by   Zhana Bao, et al.
0

Finding rare information hidden in a huge amount of data from the Internet is a necessary but complex issue. Many researchers have studied this issue and have found effective methods to detect anomaly data in low dimensional space. However, as the dimension increases, most of these existing methods perform poorly in detecting outliers because of "high dimensional curse". Even though some approaches aim to solve this problem in high dimensional space, they can only detect some anomaly data appearing in low dimensional space and cannot detect all of anomaly data which appear differently in high dimensional space. To cope with this problem, we propose a new k-nearest section-based method (k-NS) in a section-based space. Our proposed approach not only detects outliers in low dimensional space with section-density ratio but also detects outliers in high dimensional space with the ratio of k-nearest section against average value. After taking a series of experiments with the dimension from 10 to 10000, the experiment results show that our proposed method achieves 100 precision and 100 space, and better improvement in low dimensional space compared to our previously proposed method.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/05/2014

Robust Subspace Outlier Detection in High Dimensional Space

Rare data in a large-scale database are called outliers that reveal sign...
research
05/05/2014

Finding Inner Outliers in High Dimensional Space

Outlier detection in a large-scale database is a significant and complex...
research
01/29/2019

Throttling Malware Families in 2D

Malicious software are categorized into families based on their static a...
research
07/25/2022

C3-SL: Circular Convolution-Based Batch-Wise Compression for Communication-Efficient Split Learning

Most existing studies improve the efficiency of Split learning (SL) by c...
research
08/05/2014

Computing With Contextual Numbers

Self Organizing Map (SOM) has been applied into several classical modeli...
research
05/31/2018

Ratio Matching MMD Nets: Low dimensional projections for effective deep generative models

Deep generative models can learn to generate realistic-looking images on...
research
02/07/2023

Revised Conditional t-SNE: Looking Beyond the Nearest Neighbors

Conditional t-SNE (ct-SNE) is a recent extension to t-SNE that allows re...

Please sign up or login with your details

Forgot password? Click here to reset