2012
DOI: 10.5121/ijaia.2012.3110
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A Framework: Cluster Detection and Multidimensional Visualization of Automated Data Mining Using Intelligent Agents

Abstract: Data Mining techniques plays a vital role like extraction of required knowledge, finding unsuspected information to make strategic decision in a novel way which in term understandable by domain experts. A generalized frame work is proposed by considering non -domain experts during mining process for better understanding, making better decision and better finding new patters in case of selecting suitable data mining techniques based on the user profile by means of intelligent agents.

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Cited by 5 publications
(1 citation statement)
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“…It will be a digital clone of Real-I and will need Input, Information Processing and its related output. We need to collect data [12], [13] on all the 10 aspects of Brain Intelligence and HIPS (as discussed earlier in paper) for building a PCC for an individual. For making a Personalized Cyber Clone of an individual we need to conduct various studies of that individual to cover all 10 aspects of his typical type.…”
Section: Proposed Personalized Cyber Clone Frameworkmentioning
confidence: 99%
“…It will be a digital clone of Real-I and will need Input, Information Processing and its related output. We need to collect data [12], [13] on all the 10 aspects of Brain Intelligence and HIPS (as discussed earlier in paper) for building a PCC for an individual. For making a Personalized Cyber Clone of an individual we need to conduct various studies of that individual to cover all 10 aspects of his typical type.…”
Section: Proposed Personalized Cyber Clone Frameworkmentioning
confidence: 99%