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Use of Data Mining by Government Agencies and Practical Applications

In: Computers and Technology

Submitted By Raghunath
Words 4505
Pages 19
Project Title Use of Data mining by government agencies and practical applications

(Describe the Data Mining technologies, how these are being used in government agencies. Provide practical applications and examples)

Compiled By:-

Sneha Gang (Student # - 84114)
Karan Sawhney (Student # - 85471)
Raghunath Cherancheri Balan (Student # - 86088)
Sravan Yella (Student # - 87041)
Mrinalini Shah (Student # - 86701)

Use of Data mining by government agencies and practical applications * Abstract (Sneha Garg)

With an enormous amount of data stored in databases and data warehouses, it is increasingly important to develop powerful tools for analysis of such data and mining interesting knowledge from it. Data mining is a process of inferring knowledge from such huge data. It is a modern and powerful tool, automatizing the process of discovering relationships and combinations in raw data and using the results in an automatic decision support. This project provides an overview of data mining, how government uses it quoting some practical examples.
Data mining can help in extracting predictive information from large quantities of data. It uses mathematical and statistical calculations to uncover trends and correlations among the large quantities of data stored in a database. It is a blend of artificial intelligence technology, statistics, data warehousing, and machine learning. These patterns play a very important role in the decision making because they emphasize areas where business processes require improvement. Using the data mining solutions, organizations can increase their profitability, can detect fraud, or may enhance the risk management activities. The models discovered by using data mining solutions are helping organizations to make better decisions in a shorter amount of…...

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