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Making Database Systems Usable

Making Database Systems Usable. H.V. Jagadish Adriane Chapman Aaron Elkiss Magesh Jayapandian Yanyao Li Arnab Nandi Cong Yu By Shahana Shamim. MimI A deep integration of the best-regarded protein interaction databases It allows users to access data through various interfaces

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Making Database Systems Usable

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  1. Making Database Systems Usable H.V. Jagadish Adriane Chapman Aaron Elkiss Magesh Jayapandian Yanyao Li Arnab Nandi Cong Yu By Shahana Shamim

  2. MimI A deep integration of the best-regarded protein interaction databases • It allows users to access data through various interfaces • Provenance was retained to describe where the data originated

  3. Miml • XML • XQuery • Forms-based interface • MQuery

  4. Complains against MimI • Different results were found by going through different interfaces • Inability to explore and manipulate the data directly. This issue was addressed by integrating a graphical tool, Cytoscope which helped in graphically manipulating the results. • It was hard for the users to put their scientific results into MimI for easy access by others

  5. Search Engine • Directly connects users with the web • Almost instantaneous response • It does not address all the usability problems database systems face

  6. Major Issues • Unexpected Pain • Unable to Query • Painful Options • Unexpected Results • Unseen Pain • Birthing Pain

  7. Unexpected Pain • Frustrates users when the database produces results that are unexpected with no explanation. • Search engine strategy does not work with database because when the user queries the database she kind of knows what is in the database. Whereas the web is huge and no one knows what is exactly there and can’t point out that he or she missed something vital. • 2 forms: • Unable to Query • Unexpected Results

  8. Unexpected Results: • List of Cheap Flights: • 1) Los Angeles $75 • 2) Boston $100 • 3) San Francisco $400 • Why is San Francisco in this list? • The database should be able to explain “where” and “why”

  9. Painful Options * A software with too many options is costly * As we like to limit options, it is not easy to determine which options to keep and which options to leave out.

  10. Unseen Pain • A user issues a query, it doesn’t produce the required output, so she revises the query, resubmits • Significance of query specification is result construction • WYSIWYG: Constant predictive capability on the part of the system

  11. Birthing Pain • Database evolves continuously • Users do not have a clear idea about what the final structure of the database will be so a comprehensive design of the database can not be done The database system should be able to provide interfaces for users to create information and to fluidly manipulate the structure.

  12. The Painless Future • Geographic Mashups have been tremendously successful in presenting joins between data sets using a geographic location as the basis • Network It is easier to point and click than to type • Multidimensional While the data in the warehouse may be stored in multiple tables the users think of the data as points in multidimensional space with the aggregates of attributes. • Tabular Excel spreadsheets show data in simple two-dimensional tables which people like to see as joins across multiple normalized tables may be difficult for them

  13. Data Provenance • What we see is most often extracted from a database, which in turn was extracted from other databases, and so on. Provenance information has to be understandable to the user. Direct Data Manipulation • Point-and-click, drag-and-drop and filling in textboxes (to a lesser extent) improves user interaction with the database “Schema-later” and “Heterogeneous” Database Design **Creation of database with structured or unstructured data ** Taking advantage of the existing data structure ** Provide convenient functionality to add structure

  14. Thank you

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