MIMSY: A System for Analyzing Time Series Data in the Stock Market Domain

نویسندگان

  • William G. Roth
  • Raghu Ramakrishnan
  • Praveen Seshadri
چکیده

MIMSY: A SYSTEM FOR ANALYZING TIME SERIES DATA IN THE STOCK MARKET DOMAIN In this thesis I describe a real{world application built on top of the CORAL deductive database system. This application is meant to demonstrate the power of CORAL not only as a deductive database but also as a generic extensible database system. The application, Mimsy, is a stock market historical reporting system that can answer questions about daily stock market pricing data. I will describe the use of the Mimsy system, and issues related to its implementation. vi Chapter 1 Overview 'Twas brillig, and the slithy toves Did gyre and gimble in the wabe: All mimsy were the borogoves, And the mome raths outgrabe. { Lewis Carroll , \Jabberwocky" 1.

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تاریخ انتشار 1993