Applied User Data Collection and Analysis Using JavaScript and PHP

Regular price €173.60
Quantity:
Ships in 10-20 days
Delivery/Collection within 10-20 working days
Shipping & Delivery
A01=Kyle Goslin
A01=Markus Hofmann
advanced feedback analysis for researchers
API Key
Author_Kyle Goslin
Author_Markus Hofmann
Average Star Rating
behavioural data mining
Category=UDBR
Category=UGB
Category=UNN
CDN.
Cron Job
dashboard development methods
Data Set
Database Table
Div Class
Div Tag
eq_bestseller
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
Feedback Records
Feedback Score
H5 Class
Id Column
JavaScript
JSON Document
JSON File
JSON Format
passive user tracking
PHP
PHP Code
Php File
PHP Script
SAMPLE CODE
Script Src
Select Count
SQL Query
statistical data visualisation
Stop Words
text sentiment analysis
User data collection
User's IP Address
User’s IP Address
Variable Titled
web analytics techniques
Web application
Web-based analysis

Product details

  • ISBN 9780367756826
  • Weight: 660g
  • Dimensions: 156 x 234mm
  • Publication Date: 28 Apr 2021
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
Secure checkout Fast Shipping Easy returns

Applied User Data Collection and Analysis Using JavaScript and PHP is designed to provide the technical skills and competency to gather a wide range of user data from web applications in both active and passive methods. This is done by providing the reader with real-world examples of how a variety of different JavaScript- and PHP-based libraries can be used to gather data using custom feedback forms and embedded data gathering tools.

Once data has been gathered, this book explores the process of working with numerical data, text analysis, visualization approaches, statistics, and rolling out developed applications to both data analysts and users alike.

Using the collected data, this book aims to provide a deeper understanding of user behavior and interests, allowing application developers to further enhance web-application development.

Key Features:

  • Complete real-world examples of gathering data from users and web environments
  • Offers readers the fundamentals of text analysis using JavaScript and PHP
  • Allows the user to understand and harness JavaScript data-visualization tools
  • Integration of new and existing data sources into a single, bespoke web-based analysis environment

Dr. Kyle Goslin is currently a Lecturer in Computing at the Technological University Dublin in Ireland, specializing in web application development, information retrieval, text analysis and data visualization. Kyle has taught for over 10 years at third level in Ireland, teaching a wide range of web development related subjects. During this time, he has been involved in several different web-based data driven start-up companies with the aim of reducing time to market for businesses.

Kyle has contributed to several different open-source learning platforms with the aim of making education accessible to all learners by aiding both teachers and students. Kyle has developed and defended a number of different third level computing courses validated by Quality and Qualifications Ireland. He has published peer-reviewed articles relating to information retrieval, text analysis and learning environments. In his spare time, he is a technical reviewer for data and software development related books. He holds a Bachelor of Science (Honours) and Doctor of Philosophy from the Technological University Dublin, where he currently lectures and lives. For more information, visit www.kylegoslin.ie

Dr. Markus Hofmann is currently Senior Lecturer at the Technological University Dublin in Ireland where he focuses on the areas of data mining, text mining, data exploration and visualization as well as business intelligence. He holds a Ph.D. from Trinity College Dublin, an MSc in Computing (Information Technology for Strategic Management) from the Dublin Institute of Technology and a BA in Information Management Systems. He has taught extensively at undergraduate and postgraduate level in the fields of Data Mining, Information Retrieval, Text/Web Mining, Data Mining Applications, Data Pre-processing and Exploration and Databases. Dr. Hofmann published widely at national as well as international level and specialized in recent years in the areas of Data/Text Mining, learning object creation, and virtual learning environments. Further he has strong connections to the Business Intelligence and Predictive Analytics sector both on an academic as well as industry level.

Dr. Hofmann has worked as technology expert together with over 30 different organizations in recent years including companies such as Intel, RapidMiner and many successful start-ups. Most of his involvement was on the innovation side of technology services and products where his contributions had significant impact on the success of such projects.

He is a member of the Register of Expert Panellists of Quality and Qualifications Ireland, external examiner for three third level institutes and a specialist in undergraduate and postgraduate course development. He has been internal as well as external examiner of postgraduate thesis submissions. He was also general, local and technical chair of national and international conferences. Dr. Hofmann is the editor two data science books published by Chapman & Hall.

More from this author