Page 8 - Fister jr., Iztok, Andrej Brodnik, Matjaž Krnc and Iztok Fister (eds.). StuCoSReC. Proceedings of the 2019 6th Student Computer Science Research Conference. Koper: University of Primorska Press, 2019
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00 LSTM 600
12000 PASSIVE 500
10000
8000Portfolio value 400
6000 Number of stocks
4000 300
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200
00
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100 200 300 400 500 600 7000
Trading days

Figure 3: Comparison between the automated MTS with LSTM trading strategy and passive trading strategy.

only. We conclude that either stock is inefficient, or the flood forecasting. Water, 11(7):1387, 2019.
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