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applications of some deep learning algorithms to predict trend in the forex exchange market
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نویسنده
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jafari mohammad ali ,ghasemilo sina
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منبع
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journal of mathematics and modeling in finance - 2025 - دوره : 5 - شماره : 2 - صفحه:65 -75
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چکیده
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Predicting time series has always been one of the challenges in the financial markets. with the increase in the amount of data, the need to use modern tools instead of classical statistical and time series methods has become clear. in this paper, some deep learning algorithms such as multilayer perceptrons (mlps), keras classification, temporal fusion transformer (tft, developed by google), extreme learning machine classification (elmc) and propagation hierarical learning network (philnet) are used for trading on the foreign exchange market. the efficiency and accuracy of these algorithms are presented. in this order, the eur/usd data is used as input for the above algorithms.
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کلیدواژه
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deep learning ,forex market ,trend of the eur/usd
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آدرس
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kharazmi university, finance faculty, financial mathematics department, iran, kharazmi university, finance faculty, financial mathematics department, iran
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پست الکترونیکی
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ghasemilosina1376@gmail.com
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Authors
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