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What is Data Mining?
Data Mining is a set of processes related to analyzing and discovering useful, actionable knowledge buried deep beneath large volumes of data stores or data sets. This knowledge discovery involves finding patterns or behaviors within the data that lead to some profitable business action. Data Mining requires generally large volumes of data including history data as well as current data to explore the knowledge. Once the required amount of data has been accumulated from various sources, it is cleaned, validated and prepared for storing it in the data warehouse or data mart. BI reporting Tools capture the required facts from these data to be used by the knowledge discovery process. Data Mining can be accomplished by utilizing one or more of the traditional knowledge discovery techniques like Market Basket Analysis, Clustering, Memory Based Reasoning, Link Analysis, Neural Networks and so on. Data Mining Life Cycle:
OLAP helps organizations to find out the measures like sales drop, productivity, service response time, inventory in hand etc. Simply, OLAP tell us 'What has happened' and Data Mining helps to find out 'Why it has happened' at the first place. Data Mining can also be used to predict 'What will happen in the future' with the help of data patterns available within the organization and publicly available data. For example if a borrower with bad credit and employment history apllies for a mortgage loan, his/her application may be denied by a mortgage lender since he/she may default the loan if approved. The mortgage lender would have come to this decision based upon the historical data previously mined following a similar pattern. [>>>Next: BI Reporting Tools Guide>>>] |
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