Book Image

Java Data Analysis

By : John R. Hubbard
Book Image

Java Data Analysis

By: John R. Hubbard

Overview of this book

Data analysis is a process of inspecting, cleansing, transforming, and modeling data with the aim of discovering useful information. Java is one of the most popular languages to perform your data analysis tasks. This book will help you learn the tools and techniques in Java to conduct data analysis without any hassle. After getting a quick overview of what data science is and the steps involved in the process, you’ll learn the statistical data analysis techniques and implement them using the popular Java APIs and libraries. Through practical examples, you will also learn the machine learning concepts such as classification and regression. In the process, you’ll familiarize yourself with tools such as Rapidminer and WEKA and see how these Java-based tools can be used effectively for analysis. You will also learn how to analyze text and other types of multimedia. Learn to work with relational, NoSQL, and time-series data. This book will also show you how you can utilize different Java-based libraries to create insightful and easy to understand plots and graphs. By the end of this book, you will have a solid understanding of the various data analysis techniques, and how to implement them using Java.
Table of Contents (20 chapters)
Java Data Analysis
Credits
About the Author
About the Reviewers
www.PacktPub.com
Customer Feedback
Preface
Index

Google's PageRank algorithm


Within a few years of the birth of the web in 1990, there were over a dozen search engines that users could use to search for information. Shortly after it was introduced in 1995, AltaVista became the most popular among them. These search engines would categorize web pages according to the topics that the pages themselves specified.

But the problem with these early search engines was that unscrupulous web page writers used deceptive techniques to attract traffic to their pages. For example, a local rug-cleaning service might list "pizza" as a topic in their web page header, just to attract people looking to order a pizza for dinner. These and other tricks rendered early search engines nearly useless.

To overcome the problem, various page ranking systems were attempted. The objective was to rank a page based upon its popularity among users who really did want to view its contents. One way to estimate that is to count how many other pages have a link to that page...