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Machine Learning for Forecasting Excess Stock Returns – The Five-Year-View. (2019). Scholz, Michael ; Nielsen, Jens Perch ; Mousavi, Parastoo ; Kyriakou, Ioannis.
In: Graz Economics Papers.
RePEc:grz:wpaper:2019-06.

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  1. Machine Learning Algorithms for Financial Asset Price Forecasting. (2020). Ndikum, Philip.
    In: Papers.
    RePEc:arx:papers:2004.01504.

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