Çambas¸ı H, Kuru Ö, Amasyalı MF, and Tahar S (2019). Comparison of Dynamic Bayesian Network Tools, In 2019 Innovations in Intelligent Systems and Applications Conference (ASYU) 2019 Oct 31 (pp. 1-6). IEEE.
Chang J, Bai Y, Xue J et al. (2023). Dynamic Bayesian networks with application in environmental modeling and management: A review, Environmental Modelling & Software, 2023 Sep 26:105835.
Cho DH, Moon SH, and Kim YH (2020). A daily stock index predictor using feature selection based on a genetic wrapper, Proceedings of the 2020 Genetic and Evolutionary Computation Conference Companion, Jul 8, 31-32.
Cho DH, Moon SH, and Kim YH (2021). Genetic feature selection applied to KOSPI and cryptocurrency price prediction, Mathematics, 9, 2574.
Chung H and Shin KS (2020). Genetic algorithm-optimized multi-channel convolutional neural network for stock market prediction, Neural Computing and Applications, 32, 7897-914.
Chung HK and SongW(2023). Impacts of COVID-19 on Various Financial Assets in Korea: A Bayesian Network Approach, Available at SSRN 4333917
Dagum P, Galper A, and Horvitz E (1992). Dynamic network models for forecasting, Proceedings of the Eighth Conference on Uncertainty in Artificial Intelligence, AUAI Press, 41-48.
Friedman N, Goldszmidt M, and Wyner A (2013). Data analysis with Bayesian networks: A bootstrap approach, arXiv preprint arXiv:1301.6695.
Han JJ and Kim HJ (2023). Prediction of investor-specific trading trends in South Korean stock markets using a BiLSTM prediction model based on sentiment analysis of financial news articles, Journal of Behavioral Finance, 24, 398-410.
Jo M, Oh R, and Oh M (2022). Prediction of PM10 concentration in Seoul, Korea using Bayesian Network, Communications for Statistical Applications and Methods, 30, 517-530.
Kyrimi E, McLachlan S, Dube K, Neves MR, Fahmi A, and Fenton N (2021). A comprehensive scoping review of Bayesian networks in healthcare: Past, present and future, Artificial Intelligence in Medicine, 117, 102108.
Korea Securities Depository (2022).
Künsch HR (1989). The jackknife and the bootstrap for general stationary observations, The Annals of Statistics, 17, 1217-1241.
Lee D and Kwon K (2023). Dynamic Bayesian network model for comprehensive risk analysis of fatigue-critical structural details, Reliability Engineering & System Safety, Jan 1;229:108834.
Liu Y, Feng H, and Guo K (2021). The dynamic relationship between macroeconomy and stock market in China: Evidence from Bayesian network, Complexity, 2021 Dec 16;2021:1-2.
Malagrino LS, Roman NT, and Monteiro AM (2018). Forecasting stock market index daily direction: A Bayesian Network approach, Expert Systems with Applications, 105, 11-22.
Oluseun Olayungbo D, Al-Faryan MA, and Zhuparova A (2023). Network granger causality linkages in Nigeria and developed stock markets: Bayesian graphical analysis, Journal of African Business, 17, 1-25.
Park J and Kim D (2021). How do Bitcoin and gold affect KOSPI? - focusing on Bayesian network model analysis, Journal of New Industry and Business, 39, 47-64.
Pearl J (1988). Probabilistic reasoning in intelligent systems: networks of plausible inference, Morgan kaufmann.
Pearl J (2009). Causality, Cambridge University Press, Cambridge.
Pourret O, Na P, and Marcot B (2008). Bayesian networks: A Practical Guide to Applications, John Wiley & Sons, West Sussex.
Quesada D (2022). dbnR: Dynamic Bayesian Network Learning and Inference. r package version 0.7.8. https://cran.r-project.org/web/packages/dbnR/index.html.
Scutari M and Denis JB (2021). Bayesian Networks: With Examples in R, CRC press, New York.
Scutari M, Kerob D, and Salah S (2023). Inferring Skin-Brain-Skin Connections from Infodemiology Data using Dynamic Bayesian Networks, medRxiv preprint doi: https://doi.org/10.1101/2023.05.15.23290003.
Tsamardinos I, Brown LE, and Aliferis CF (2006). The max-min hill-climbing Bayesian network structure learning algorithm, Machine Learning, 65, 31-78.
Yoon I (2016). Impact of macroeconomic indicators on Korea’s stock markets, Regional Industry Review, 39, 37-53.