Deep Learning Based Financial Forecasting Models
DOI:
https://doi.org/10.5281/zenodo.8071617Anahtar Kelimeler:
Deep learning- Financial planning- Financial forecastingÖz
Financial planning involves systematical forecasting and calculation of cash and financial flows into and out of the company. Financial planning is the reconciliation of cash inflows and outflows, both in terms of amount and time by forecasting all types of cash inflows and outflows that will occur during the company's operations. It allows to quickly determine the solution process, make analysis, forecasts and strategic decisions. This study aims to develop financial forecasting models using univariate deep learning methods. For this purpose Long Short Term Memory (LSTM), Bi-directional Long Short Term Memory (Bi-LSTM) and Convolutional Long Short Term Memory (ConvLSTM) have been used. The performance of the developed models has been evaluated using Mean Absolute Percentage Error (MAPE). The dataset includes 464 rows and total inbound and total outbound invoice amount data from June 22nd, 2020 to March 31st, 2022. Forecast models have been developed for 2 different weeks (28.02.2022 – 04.03.2022 and 21.03.2022 – 25.03.2022) and 2 different months (January 2022 and March 2022) randomly selected from the dataset. When the forecast models developed for inbound invoice amount and outbound invoice amount are examined, it is found that satisfactory results have not been obtained for the monthly forecasts. For the weekly forecasts, MAPE’s of the forecast models were found to be less than 20% in general.
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Telif Hakkı (c) 2022 AINTELIA Science Notes Journal

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