Data Mining: Techniques. Front Cover. Arun K. Pujari. Universities Press, – pages Bibliographic information. QR code for Data Mining. Data Mining Techniques [Arun K Pujari] on *FREE* shipping on qualifying offers. Data Mining Techniques addresses all the major and latest. Data Mining Techniques – Arun K. Pujari – Ebook download as PDF File .pdf), Text File .txt) or read book online. Arun K Pujari.

Author: Malasho Malajind
Country: Guadeloupe
Language: English (Spanish)
Genre: Automotive
Published (Last): 21 June 2013
Pages: 178
PDF File Size: 7.16 Mb
ePub File Size: 11.8 Mb
ISBN: 708-9-51156-313-6
Downloads: 69420
Price: Free* [*Free Regsitration Required]
Uploader: Zulkirr

Data Mining Techniques addresses pujagi the major and latest techniques of data mining and data warehousing. It deals in detail with the latest algorithms for discovering association rules, decision trees, clustering, neural networks and genetic algorithms.

Interesting and recent developments such as Support Vector Machines and Rough Set Theory are also covered in the book. The book also discusses the mining of web data, spatial data, temporal data and text data.

This book can serve as a textbook for students of computer science, mathematical science and management science.

It can also be an excellent handbook for researchers in the area of data mining and data warehousing. The revised edition includes a comprehensive chapter on rough set theory. The rough set theory, which is a tool of sets and relations for studying imprecision, vagueness, and uncertainty in data analysis, is a relatively new mathematical and artificial intelligence technique. The discussion on association rule mining has been extended to include rapid association rule mining RARMFP-Tree Growth Algorithm for discovering association rule and the Eclat and dEclat algorithms.

These appear in Chapter 4. Practical Machine Learning Tools and Techniques. Machine Learning with R. Machine Learning in Python. Introduction to Information Retrieval. Python Machine Learning By Example. Machine Learning and Security. Machine Learning for Developers. Fundamentals of Stream Processing. The Text Mining Handbook. Professor Yanhong Annie Liu. Mastering Text Mining with R. Machine Learning for Data Streams.


Mastering Java Machine Learning. Handbook of Big Data Technologies. Advanced Machine Learning with Python. Artificial Intelligence for Big Data. The Functional Approach to Programming.

Data Mining – Arun K. Pujari

Innovations, Standards and Practices of Web Services. Database and Expert Systems Applications. Fundamentals of Predictive Text Mining.

Deep Learning with Hadoop. Readings in Artificial Intelligence and Software Engineering. Miningg of Data Integration. Data Analysis for Network Cyber-Security. Clustering and Information Retrieval. Integration of Reusable Systems. Data Analysis with Open Source Tools. Schema Matching and Mapping. Big Data Analytics with R and Hadoop. Big Data Analytics and Knowledge Discovery. Handbook of Constraint Programming.

Redis Programming by Example. Advances in Databases and Information Systems. Automated Data Collection with R. Data Mining and Constraint Programming. Scalable Pattern Recognition Algorithms. Software Engineering and Methodology for Emerging Domains. Database Systems for Advanced Applications. Formal Aspects of Component Software.

Join Kobo & start eReading today

Applied Cryptography and Network Security. Model and Data Engineering. Machine Learning for Evolution Strategies. Distributed Computing and Internet Technology.

Computational Intelligence in Data Mining. The Theory of Info-Dynamics: Rational Foundations of Information-Knowledge Dynamics. Apache Spark Machine Learning Blueprints.

Information and Communication Technology for Sustainable Development. Progress in Advanced Computing and Intelligent Engineering. How to write a great review. The review must be at least 50 characters mmining. The title should be at least 4 characters long. Your display name should be at least 2 characters long.


At Kobo, we try to ensure that published reviews do not contain rude or profane language, spoilers, or any of our reviewer’s personal information. You submitted the following rating and review.

We’ll publish them on our site once we’ve reviewed them. Item s unavailable for purchase. Please review your cart. You can remove the unavailable item s mmining or we’ll automatically remove it at Checkout. Continue shopping Checkout Continue shopping.

Data Mining Techniques by Arun K.

Data Mining Techniques – Arun K. Pujari – Google Books

Buy the eBook Price: Ratings and Reviews 0 0 star ratings 0 reviews. Overall rating No ratings yet 0. How to write a great review Do Say what you liked best and least Describe minihg author’s style Explain the rating you gave Don’t Use rude and profane language Include any personal information Mention spoilers or the book’s price Recap the plot. Close Report a review At Kobo, we try to ensure that published reviews do not contain rude or profane language, spoilers, or any of our reviewer’s personal information.

Would you like us to take another look at this review? , cancel Yes, report it Thanks! You’ve successfully reported this review. We appreciate your feedback.

August 24, ISBN: You can read this item using any of the following Kobo apps and devices: