Open Access Open Access  Restricted Access Subscription or Fee Access

Data Mining Techniques – A Study

B. Gobinath, Dr. K. Meenakshisundaram


Data mining is the technique of hidden, valid, and potentially useful patterns in huge data sets. Data Mining is all about discovering the previously unknown relationships amongst the data. It is a multi-disciplinary method that uses Machine Learning, Statistics, AI and Database Technologies. Data mining is also called as Knowledge Discovery, Knowledge Extraction, Data analysis, Information harvesting, etc. Data mining can able to handle the various types of data like Relational databases, Data warehouses, Object-Oriented and Object-Relational databases, Transactional and Spatial databases, Text mining and Web mining. This paper describes and discusses the various techniques associated with Data Mining Process.


Organization, Data Mining, Artificial Intelligence, Machine Learning, Supervised Machine Learning, Expert Systems

Full Text:



Arun K Pujari, Data Mining Techniques, Kindley Edition, University Press

Backus P, Janakiram M, Mowzoon S, Runger G C, Bhargava A. Factory Cycle-Time Prediction With a Data-Mining Approach. IEEE Transactions on Semiconductor Manufacturing 2006, 19:252-258.

Choudhary A, Harding J, Tiwari M Data Mining in manufacturing - A Review based on the kind of knowledge. Journal of Intelligent Manufacturing, 20:501-521. 2009

ElMaraghy H, Schuh G, ElMaraghy W, Piller F, Schönsleben P, Tseng M, Bernard A. Product Aariety Management. CIRP Annals 2013, 62:629- 652.

Harding J A, Shahbaz M, Srinivas, Kusiak A. Data Mining in Manufacturing - A Review International Journal of Production Research 2006, 128:969-976.

Knoll D, Reinhart G, Prüglmeier M. Enabling Value stream mapping for internal logistics using multidimensional process mining. Expert Systems with Applications 2019, 124:130-142.

LeCun Y, Bengio Y, Hinton G. Deep learning using Nature 2015, 521:436- 444.

Process Mining: data science in action by Van Der Aalst W M. Berlin Heidelberg Springer; 2016.

Russell S, Norvig P. Artificial intelligence - A modern approach. 3rd edition. Upper Saddle River, NJ: Prentice-Hall; 2010.

Schuh G, Reuter C, Prote J, Brambring F, Ays J. Increasing Data Integrity for improving Decision Making in Production planning and control. CIRP Annals 2017, 66:425-8.


  • There are currently no refbacks.

Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.