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Data Management and Mining in Astrophysical Databases

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arxiv cs/0307032 v2 pith:2C3W3WAA submitted 2003-07-12 cs.DB astro-phphysics.data-an

Data Management and Mining in Astrophysical Databases

classification cs.DB astro-phphysics.data-an
keywords dataastrophysicalmanagementclassificationclusteringminingaccessapproach
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We analyse the issues involved in the management and mining of astrophysical data. The traditional approach to data management in the astrophysical field is not able to keep up with the increasing size of the data gathered by modern detectors. An essential role in the astrophysical research will be assumed by automatic tools for information extraction from large datasets, i.e. data mining techniques, such as clustering and classification algorithms. This asks for an approach to data management based on data warehousing, emphasizing the efficiency and simplicity of data access; efficiency is obtained using multidimensional access methods and simplicity is achieved by properly handling metadata. Clustering and classification techniques, on large datasets, pose additional requirements: computational and memory scalability with respect to the data size, interpretability and objectivity of clustering or classification results. In this study we address some possible solutions.

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