How can we use the data warehouse and data mining concept in census data. Discuss

Datawarehouse and data mining in Census Data

 The registered general and census commissions of India decennially compile information of all individuals, villages, population groups, etc. This information is wide-ranging such as the individual slip, a compilation of information on individual households of which a database of 5%. The sample is maintained for analysis

Data mining can be performed for analysis and knowledge discovery. A village-level database was originally developed by the national informatics center at Hyderabad under the general information services terminal of the national informatics center (GISTNIC) for the 1999 census.

Primary census abstract and village amenities. Subsequently, a data warehouse was also developed for village amenities in Tamil Nadu. This enables multi-dimensional analysis of the village-level data in such as education, health, and infrastructure. As the census compilation is performed once in ten years, the data is quasi-static and therefore no refreshing of the warehouse needs to be done on a periodic basis. Only the new data needs to be either appended to the data warehouse or alternatively, a new data warehouse can be built.



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