METHODS AND OPTIMIZATION TECHNIQUES OF THE CAPITAL MARKET MODELING

Raluca FAT, Liana MIC, Tiberiu LETIA

Abstract


The current research looks to offer an image over the developments in the last years in the domain of automated transactions on the financial markets around the world, exposing the needs of those processes in the context of markets globalization and the growth of the competition among players, knowing the fact that a major part of the information related to the trading algorithms and the real dimension of this sector remain partially unknown because of the politics of confidentiality. The modeling of the markets, processes and transactions is done by means of software modeling tools such as UML diagrams (use-case, activity, sequence, and component).

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