Exploring Network Data

Exploring Network Data

Yu Wang
ISBN13: 9781599047089|ISBN10: 159904708X|ISBN13 Softcover: 9781616925048|EISBN13: 9781599047102
DOI: 10.4018/978-1-59904-708-9.ch005
Cite Chapter Cite Chapter

MLA

Yun Wang . "Exploring Network Data." Statistical Techniques for Network Security: Modern Statistically-Based Intrusion Detection and Protection, IGI Global, 2009, pp.124-171. https://doi.org/10.4018/978-1-59904-708-9.ch005

APA

Y. Wang (2009). Exploring Network Data. IGI Global. https://doi.org/10.4018/978-1-59904-708-9.ch005

Chicago

Yun Wang . "Exploring Network Data." In Statistical Techniques for Network Security: Modern Statistically-Based Intrusion Detection and Protection. Hershey, PA: IGI Global, 2009. https://doi.org/10.4018/978-1-59904-708-9.ch005

Export Reference

Mendeley
Favorite

Abstract

In this chapter, we will review the basic concepts and procedures for data explanatory analysis, which provides the first step toward understanding and evaluating data. Data exploration is extremely important in network security because the volume of network traffic data is very large. We will discuss descriptive analysis, visualizing analysis and data transformation techniques in this chapter. The general idea behind explanatory analysis is to examine data without pre-conceived beliefs or notions and to let the data tell us about the phenomena of the subject(s) being studied. It not just focuses on displaying or extracting any “signal” from the data in the presence of noise, and discovers the type of information that the data holds (Everitt, 2005), but it also provides an essential direction for converting data from a high-dimensional space to a low-dimensional space. We may not know what the data looks like and we may not have specific questions in mind to analyze the data, but data exploration seeks patterns and variable relationships in the data, and provides paths for further data examinations. For example, outliers in traffic streams could represent important information about attacks (Petrovskiy, 2003; Angiulli & Fassetti, 2007; Kundur, Luh, Okorafor, & Zourntos, 2008; Nayyar & Ghorbani, 2008), but also could represent data errors. Data explanatory analysis provides a quickly and simply approach to discover such a paradox. Readers who like to obtain a comprehensive introduction to data exploration analysis should refer to Blaikie (2003). Recently, with advances in computer hardware and software, visualizing large datasets has become possible, and more exploratory data analyses have been conducted based on the graphical method that visually conveys the information. Although the graphical method alone does not present rich convincing evidence for drawing robust conclusions, it does provide a road map for future analyses. It is also an important tool for illustrating data to those who have little to no statistical knowledge.

Request Access

You do not own this content. Please login to recommend this title to your institution's librarian or purchase it from the IGI Global bookstore.