Araştırma Makalesi
BibTex RIS Kaynak Göster
Yıl 2023, Cilt: 12 Sayı: 2, 91 - 101, 30.07.2023
https://doi.org/10.17261/Pressacademia.2023.1741

Öz

Kaynakça

  • Adebiyi, A. A., Adewumi, A. O., & Ayo, C. K. (2014). Comparison of ARIMA and Artificial Neural Networks Models for Stock Price Prediction. Journal of Applied Mathematics, 2014, 1–7.
  • Chen, S. J., Billings, S. A., & Grant, P. J. (1990). Non-linear system identification using neural networks. International Journal of Control, 51(6), 1191–1214.
  • Cornell, B., & Damodaran, A. (2020). Valuing ESG: doing good or sounding good? Social Science Research Network. https://doi.org/10.2139/ssrn.3557432
  • Damodaran, A. (2011). The Little Book of Valuation: How to Value a Company, Pick a Stock and Profit. John Wiley & Sons.
  • Damodaran, A. (2011a). Applied corporate finance. In Wiley eBooks.https://pages.stern.nyu.edu/~adamodar/pdfiles/execs/cf1day2007notes.pdf
  • Fernandez, P. (2002). Valuation methods and shareholder value creation. In Elsevier eBooks. https://doi.org/10.1016/b978-0-12-253841-4.x5000-8
  • Komo, D., Chang, C., & Ko, H. (2002). Neural network technology for stock market index prediction. https://doi.org/10.1109/sipnn.1994.344854
  • Husain, T., Sarwani, Sunardi, N., & Lisdawati. (2020). Firm’s value prediction based on profitability ratios and dividend policy. Finance & Economics Review, 2(2), 13–26.
  • Menezes, J., & Barreto, G. A. (2008). Long-term time series prediction with the NARX network: An empirical evaluation. Neurocomputing, 71(16–18), 3335–3343.
  • Lin, T., Horne, B. G., & Giles, C. L. (1998). How embedded memory in recurrent neural network architectures helps learning long-term temporal dependencies. Neural Networks, 11(5), 861–868.
  • Narendra, K. S., & Parthasarathy, K. (1990). Identification and control of dynamical systems using neural networks. IEEE Transactions on Neural Networks, 1(1), 4–27.
  • Oztemel, E. (2020). Yapay Sinir Agları. Papatya Publishing.
  • Ozturk, H. (2009). Sirket Degerlemenin Esasları. Turkmen Publishing.
  • Patel, M. B., & Yalamalle, S. R. (2014). Stock Price Prediction Using Artificial Neural Network. International Journal of Innovative Research in Science, Engineering and Technology, 3(16). http://ijirset.com/upload/2014/june/76_Stock.pdf
  • Di Persio, L., & Honchar, O. (2016). Artificial Neural Networks architectures for stock price prediction: comparisons and applications. International Journal of Circuits, Systems and Signal Processing, 10, 403–413. https://iris.univr.it/handle/11562/955101
  • Rather, A. M. (2011). A prediction-based approach for stock returns using autoregressive neural networks. https://doi.org/10.1109/wict.2011.6141431
  • Jordan, B., Westerfield, R., & Ross, S. (2012). Fundamentals of Corporate Finance Standard Edition. McGraw-Hill Education.
  • Samarasinghe, S. (2006). Neural networks for applied sciences and engineering: From Fundamentals to Complex Pattern Recognition. Auerbach Publications.
  • Wilimowska, Z., & Krzysztoszek, T. (2013). The use of artificial neural networks in company valuation process. In Studies in computational intelligence (pp. 279–288). https://doi.org/10.1007/978-3-642-34300-1_27
  • Wunsch, A., Liesch, T., & Broda, S. (2018). Forecasting groundwater levels using nonlinear autoregressive networks with exogenous input (NARX). Journal of Hydrology, 567, 743–758.
  • Zhang, G. (2003). Time series forecasting using a hybrid ARIMA and neural network model. Neurocomputing, 50, 159–175. https://doi.org/10.1016/s0925-2312(01)00702-0

AN ARTIFICIAL NEURAL NETWORK BASED METHOD FOR COMPANY VALUATION

Yıl 2023, Cilt: 12 Sayı: 2, 91 - 101, 30.07.2023
https://doi.org/10.17261/Pressacademia.2023.1741

Öz

Purpose - Company value is a crucial issue for everyone operating in financial markets. Both firm managers and investors should calculate the value of a firm, and there are many methods available to do so. Calculating valuation methods is challenging due to the multiple parameters and stages that are involved. Due to these reasons, it's possible for managers, owners, investors, and other stakeholders to estimate a company's value inaccurately or with difficulty. The main objective of this essay is to demonstrate how to evaluate a company's value using the NARX model as an alternative to other models.
Methodology – It is estimated that the firm value using an artificial neural network nonlinear external input autoregressive network model for 50 companies operating in the consumer products and industrial products and services sectors in the Euro Stoxx 50 index. The dataset covers the period from 2000 to 2021, and 20 financial ratios were included as input to the model, with FCFF as the output.
Findings- The NARX model with a 20-6-6-1 or 20-10-10-1 network structure provided the best value for both R and MSE at two-time delays. However, the 20-12-12-1 network structure of the NARX model with a time delay of three has a lower error rate after training and the best R value. The model's prediction success rate is 90.82% using the 20-12-12-1 network structure with a time delay of three.
Conclusion- As a result, this model can be used by investors and business managers to value a company. By using this method, businesses may gain access to more precise and unbiased appraisals that can guide resource allocation and strategic decision-making. By including macroeconomic factors that have an impact on the sector and employing a longer time frame, the study could be improved.

Kaynakça

  • Adebiyi, A. A., Adewumi, A. O., & Ayo, C. K. (2014). Comparison of ARIMA and Artificial Neural Networks Models for Stock Price Prediction. Journal of Applied Mathematics, 2014, 1–7.
  • Chen, S. J., Billings, S. A., & Grant, P. J. (1990). Non-linear system identification using neural networks. International Journal of Control, 51(6), 1191–1214.
  • Cornell, B., & Damodaran, A. (2020). Valuing ESG: doing good or sounding good? Social Science Research Network. https://doi.org/10.2139/ssrn.3557432
  • Damodaran, A. (2011). The Little Book of Valuation: How to Value a Company, Pick a Stock and Profit. John Wiley & Sons.
  • Damodaran, A. (2011a). Applied corporate finance. In Wiley eBooks.https://pages.stern.nyu.edu/~adamodar/pdfiles/execs/cf1day2007notes.pdf
  • Fernandez, P. (2002). Valuation methods and shareholder value creation. In Elsevier eBooks. https://doi.org/10.1016/b978-0-12-253841-4.x5000-8
  • Komo, D., Chang, C., & Ko, H. (2002). Neural network technology for stock market index prediction. https://doi.org/10.1109/sipnn.1994.344854
  • Husain, T., Sarwani, Sunardi, N., & Lisdawati. (2020). Firm’s value prediction based on profitability ratios and dividend policy. Finance & Economics Review, 2(2), 13–26.
  • Menezes, J., & Barreto, G. A. (2008). Long-term time series prediction with the NARX network: An empirical evaluation. Neurocomputing, 71(16–18), 3335–3343.
  • Lin, T., Horne, B. G., & Giles, C. L. (1998). How embedded memory in recurrent neural network architectures helps learning long-term temporal dependencies. Neural Networks, 11(5), 861–868.
  • Narendra, K. S., & Parthasarathy, K. (1990). Identification and control of dynamical systems using neural networks. IEEE Transactions on Neural Networks, 1(1), 4–27.
  • Oztemel, E. (2020). Yapay Sinir Agları. Papatya Publishing.
  • Ozturk, H. (2009). Sirket Degerlemenin Esasları. Turkmen Publishing.
  • Patel, M. B., & Yalamalle, S. R. (2014). Stock Price Prediction Using Artificial Neural Network. International Journal of Innovative Research in Science, Engineering and Technology, 3(16). http://ijirset.com/upload/2014/june/76_Stock.pdf
  • Di Persio, L., & Honchar, O. (2016). Artificial Neural Networks architectures for stock price prediction: comparisons and applications. International Journal of Circuits, Systems and Signal Processing, 10, 403–413. https://iris.univr.it/handle/11562/955101
  • Rather, A. M. (2011). A prediction-based approach for stock returns using autoregressive neural networks. https://doi.org/10.1109/wict.2011.6141431
  • Jordan, B., Westerfield, R., & Ross, S. (2012). Fundamentals of Corporate Finance Standard Edition. McGraw-Hill Education.
  • Samarasinghe, S. (2006). Neural networks for applied sciences and engineering: From Fundamentals to Complex Pattern Recognition. Auerbach Publications.
  • Wilimowska, Z., & Krzysztoszek, T. (2013). The use of artificial neural networks in company valuation process. In Studies in computational intelligence (pp. 279–288). https://doi.org/10.1007/978-3-642-34300-1_27
  • Wunsch, A., Liesch, T., & Broda, S. (2018). Forecasting groundwater levels using nonlinear autoregressive networks with exogenous input (NARX). Journal of Hydrology, 567, 743–758.
  • Zhang, G. (2003). Time series forecasting using a hybrid ARIMA and neural network model. Neurocomputing, 50, 159–175. https://doi.org/10.1016/s0925-2312(01)00702-0
Toplam 21 adet kaynakça vardır.

Ayrıntılar

Birincil Dil İngilizce
Konular Finans, İşletme
Bölüm Articles
Yazarlar

Pinar Unal Guner Bu kişi benim 0000-0002-8408-4648

Seyma Nur Unal Bu kişi benim 0000-0002-3475-7226

Yayımlanma Tarihi 30 Temmuz 2023
Yayımlandığı Sayı Yıl 2023 Cilt: 12 Sayı: 2

Kaynak Göster

APA Guner, P. U., & Unal, S. N. (2023). AN ARTIFICIAL NEURAL NETWORK BASED METHOD FOR COMPANY VALUATION. Journal of Business Economics and Finance, 12(2), 91-101. https://doi.org/10.17261/Pressacademia.2023.1741

Journal of Business, Economics and Finance (JBEF) is a scientific, academic, double blind peer-reviewed, quarterly and open-access journal. The publication language is English. The journal publishes four issues a year. The issuing months are March, June, September and December. The journal aims to provide a research source for all practitioners, policy makers and researchers working in the areas of business, economics and finance. The Editor of JBEF invites all manuscripts that that cover theoretical and/or applied researches on topics related to the interest areas of the Journal. JBEF charges no submission or publication fee.



Ethics Policy - JBEF applies the standards of Committee on Publication Ethics (COPE). JBEF is committed to the academic community ensuring ethics and quality of manuscripts in publications. Plagiarism is strictly forbidden and the manuscripts found to be plagiarized will not be accepted or if published will be removed from the publication. Authors must certify that their manuscripts are their original work. Plagiarism, duplicate, data fabrication and redundant publications are forbidden. The manuscripts are subject to plagiarism check by iThenticate or similar. All manuscript submissions must provide a similarity report (up to 15% excluding quotes, bibliography, abstract, method).


Open Access - All research articles published in PressAcademia Journals are fully open access; immediately freely available to read, download and share. Articles are published under the terms of a Creative Commons license which permits use, distribution and reproduction in any medium, provided the original work is properly cited. Open access is a property of individual works, not necessarily journals or publishers. Community standards, rather than copyright law, will continue to provide the mechanism for enforcement of proper attribution and responsible use of the published work, as they do now.