Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/14068
Title: Data Analysis Using Probabilistic Graphical Models
Authors: Timani, Heena
Pandya, Mayuri
Keywords: Data Mining;Bayesian Networks;Machine Learning;Knowledge Discovery
Issue Date: 2015
Publisher: Indian Institute of Management, Ahmedabad
Citation: Timani, H., & Pandya, M.. (2015). Data Analysis Using Probabilistic Graphical Models. 4th IIMA International Conference on Advanced Data Analysis, Business Analytics and Intelligence. Indian Institute of Management, Ahmedabad
Series/Report no.: IC 15;119
Abstract: Data mining is a multidisciplinary field, drawn from varying areas as artificial intelligence, database technology, data visualization and machine learning. Using a combination of machine learning, statistical analysis, modeling techniques and database technology, data mining finds patterns and subtle relationships in data and infers rules that allow the prediction of future results. Data mining offers tools for discovery of relationship, patterns and knowledge from a massive database in order to guide decision about future activity. Probabilistic Graphical Models also known as Bayesian networks are popular and powerful tool in data mining. They have many applications in commercial decision support. Typical applications include market segmentation, customer profiling, fraud detection, evaluation of retail promotions, credit risk analysis and banking sector. In this paper the knowledge discovery from various databases using Bayesian network and Bayesian classification techniques are discussed. Practical machine learning data mining open source software are used for knowledge discovery and data analysis.
URI: http://hdl.handle.net/11718/14068
Appears in Collections:4th IIMA International Conference on Advanced Data Analysis, Business Analytics and Intelligence

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