Data Warehouse Software Used in the Decisional Process on the Capital Market

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Capital market provides strong opportunities for investors who know how to adopt favorable decision in real time. The decision to invest on the capital market involves deep knowledge on the mechanisms and characteristics of this market, the factors that determine the consequences of investment decisions and the performance of allocated capital. As the data volume related to the capital market evolution reaches a sizable amount, we consider appropriate to propose a multidimensional data structure that would be able to assist the investor in analyzing the shares in which he would like to invest. This structure could be designed by using an accessible support system, as the dimensional model proposed is valid for any DSS based on OLAP.

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1-8

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October 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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