关系数据库中基于SQL查询和udf的投影集群的实现

Sandhya Harikumar, H. Haripriya, M. D. Kaimal
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引用次数: 6

摘要

投影聚类是确定高维数据子空间中聚类的一种聚类方法。尽管可以在关系数据库之外高效地对非常大的数据集进行聚类,但是导出和导入数据集所花费的时间和精力可能非常大。在商业rdbms中,任何类型的子空间集群都没有SQL查询可用,更适合高维、大量记录的大型数据库。在当今的大数据世界中,使用SQL将集群与关系DBMS集成是一个重要而具有挑战性的问题。投影聚类能够找到密切相关的维度,并在相应的子空间中找到聚类。我们设计了一个SQL版本的投影聚类,它可以使用单个SQL语句获得数据库中记录的集群,该SQL语句本身调用我们定义的其他SQL函数。我们使用PostgreSQL DBMS来验证我们的实现,并对合成数据和真实数据进行了实验。
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Implementation of projected clustering based on SQL queries and UDFs in relational databases
Projected clustering is one of the clustering approaches that determine the clusters in the subspaces of high dimensional data. Although it is possible to efficiently cluster a very large data set outside a relational database, the time and effort to export and import it can be significant. In commercial RDBMSs, there is no SQL query available for any type of subspace clustering, which is more suitable for large databases with high dimensions and large number of records. Integrating clustering with a relational DBMS using SQL is an important and challenging problem in todays world of Big Data. Projected clustering has the ability to find the closely correlated dimensions and find clusters in the corresponding subspaces. We have designed an SQL version of projected clustering which helps to get the clusters of the records in the database using a single SQL statement which in itself calls other SQL functions defined by us. We have used PostgreSQL DBMS to validate our implementation and have done experimentation with synthetic as well as real data.
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