Enhancing the context‑aware FOREX market simulation using a parallel elastic network model
Author/s
Contreras, Antonio Vicente; Llanes, Antonio; Herrera, Francisco José; Navarro, Sergio; López Espín, José Juan; [et al.]Date
2019Discipline/s
Ingeniería, Industria y ConstrucciónSubject/s
FOREX simulationTrading
Context-aware
Big data
Bioinspired computing
Parallel computing
Abstract
Foreign exchange (FOREX) market is a decentralized global marketplace in which different participants, such as international banks, companies or investors, can buy, sell, exchange and speculate on currencies. This market is considered to be the largest financial market in the world in terms of trading volume. Indeed, the just-intime price prediction for a currency pair exchange rate (e.g., EUR/USD) provides valuable information for companies and investors as they can take different actions to improve their business. The trading volume in the FOREX market is huge, disperses, in continuous operations (24 h except weekends), and the context significantly affects the exchange rates. This paper introduces a context-aware algorithm to model the behavior of the FOREX Market, called parallel elastic network model (PENM). This algorithm is inspired by natural procedures like the behavior of macromolecules in dissolution. The main results of this work include the possibility to represent the mar...





