In this paper, we consider 2 types of instruments traded on the markets, stocks and cryptocurrencies. In particular, stocks are traded in a market subject to opening hours, while cryptocurrencies are traded in a 24-hour market. What we want to demonstrate through the use of a particular type of generative neural network (GAN) is that the instruments of the non-timetable market have a different amount of information, and are therefore more suitable for forecasting. In particular, through the use of real data we will also show that there are stocks following same rules as cryptocurrencies.

Generative Adversarial Network for Market Hourly Discrimination

luca grilli
;
2020-01-01

Abstract

In this paper, we consider 2 types of instruments traded on the markets, stocks and cryptocurrencies. In particular, stocks are traded in a market subject to opening hours, while cryptocurrencies are traded in a 24-hour market. What we want to demonstrate through the use of a particular type of generative neural network (GAN) is that the instruments of the non-timetable market have a different amount of information, and are therefore more suitable for forecasting. In particular, through the use of real data we will also show that there are stocks following same rules as cryptocurrencies.
2020
978-625-409-146-9
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11369/392941
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