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Similarly, the paper documents evidence of asymmetry in the effectiveness of forex interventions.
We show that the fabrication cost of the single-use robot does not increase the operation expenses drastically.
Proceedings ArticleDOI
Joarder Kamruzzaman, Ruhul A. Sarker 
01 Jan 2003
119 Citations
Experimental results demonstrate that ANN based model can closely forecast the forex market.
Experimental results on real world Forex market data shows that the proposed mechanism yields significantly higher profits against various popular benchmarks.
Proceedings ArticleDOI
Ma Li, Fan Suo-hai 
03 Dec 2013
10 Citations
Therefore, SVR optimized by the improved artificial fish swarm algorithm can be effectively used in forex prediction.
However, the predictability of the model is not sufficient to generate a profitable trading strategy, thus, Forex market turns out to be efficient, at least most of the time.

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What is forex?3 answersForex, or foreign exchange, is the largest financial market in the world where the value of one country's currency is traded for another country's currency. It involves four main participants: companies and individuals, capital market, hedgers, and speculators. Forex transactions and the related market have been regulated, but there are uncertainties regarding taxation, especially for individual investors and corporate tax. Investing in the forex market differs from investing in the capital market, with the main challenge being the management of profit/loss ratio. Forex can also be used as an expert system to access data for forest management, providing information on optimal timing, volume, and value of tree harvesting. Overall, forex offers opportunities for investment and trading, but it requires proper understanding and management of risks and rewards.
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