Uneingeschränkter Zugang

Intelligent decision support systems in information systems: integrated learning algorithms and applications

,  und   
17. März 2025

Zitieren
COVER HERUNTERLADEN

[1] Dyczkowski, K. (2018). Intelligent medical decision support system based on imperfect information. Studies in Computational Intelligence. Springer, Cham, Switzerland. doi, 10, 978-3. Dyczkowski K. ( 2018 ). Intelligent medical decision support system based on imperfect information . Studies in Computational Intelligence. Springer, Cham, Switzerland. doi , 10 , 978 - 3 . Search in Google Scholar

[2] Şuşnea, E. (2013). Improving decision making process in universities: A conceptual model of intelligent decision support system. Procedia-Social and Behavioral Sciences, 76, 795-800. Şuşnea E. ( 2013 ). Improving decision making process in universities: A conceptual model of intelligent decision support system . Procedia-Social and Behavioral Sciences , 76 , 795 - 800 . Search in Google Scholar

[3] Lytvyn, V., Vysotska, V., Dosyn, D., Lozynska, O., & Oborska, O. (2018, August). Methods of building intelligent decision support systems based on adaptive ontology. In 2018 IEEE Second International Conference on Data Stream Mining & Processing (DSMP) (pp. 145-150). IEEE. Lytvyn V. Vysotska V. Dosyn D. Lozynska O. Oborska O. ( 2018 , August ). Methods of building intelligent decision support systems based on adaptive ontology . In 2018 IEEE Second International Conference on Data Stream Mining & Processing (DSMP) (pp. 145 - 150 ). IEEE . Search in Google Scholar

[4] Zong, K., Yuan, Y., Montenegro-Marin, C. E., & Kadry, S. N. (2021). Or-based intelligent decision support system for e-commerce. Journal of Theoretical and Applied Electronic Commerce Research, 16(4), 1150-1164. Zong K. Yuan Y. Montenegro-Marin C. E. Kadry S. N. ( 2021 ). Or-based intelligent decision support system for e-commerce . Journal of Theoretical and Applied Electronic Commerce Research , 16 ( 4 ), 1150 - 1164 . Search in Google Scholar

[5] Mahdi, Q. A., Shyshatskyi, A., Prokopenko, Y., Ivakhnenko, T., Kupriyenko, D., Golian, V., ... & Momit, A. (2021). Development of estimation and forecasting method in intelligent decision support systems. Eastern-European Journal of Enterprise Technologies, 3(9), 111. Mahdi Q. A. Shyshatskyi A. Prokopenko Y. Ivakhnenko T. Kupriyenko D. Golian V. Momit A. ( 2021 ). Development of estimation and forecasting method in intelligent decision support systems . Eastern-European Journal of Enterprise Technologies , 3 ( 9 ), 111 . Search in Google Scholar

[6] Sperandio, F., Gomes, C., Borges, J., Brito, A. C., & Almada-Lobo, B. (2013). An intelligent decision support system for the operating theater: A case study. IEEE transactions on automation science and engineering, 11(1), 265-273. Sperandio F. Gomes C. Borges J. Brito A. C. Almada-Lobo B. ( 2013 ). An intelligent decision support system for the operating theater: A case study . IEEE transactions on automation science and engineering , 11 ( 1 ), 265 - 273 . Search in Google Scholar

[7] Bonczek, R. H., Holsapple, C. W., & Whinston, A. B. (2014). Foundations of decision support systems. Academic Press. Bonczek R. H. Holsapple C. W. Whinston A. B. ( 2014 ). Foundations of decision support systems . Academic Press . Search in Google Scholar

[8] Leung, Y. (2012). Intelligent spatial decision support systems. Springer Science & Business Media. Leung Y. ( 2012 ). Intelligent spatial decision support systems . Springer Science & Business Media . Search in Google Scholar

[9] Dong, X., Yu, Z., Cao, W., Shi, Y., & Ma, Q. (2020). A survey on ensemble learning. Frontiers of Computer Science, 14, 241-258. Dong X. Yu Z. Cao W. Shi Y. Ma Q. ( 2020 ). A survey on ensemble learning . Frontiers of Computer Science , 14 , 241 - 258 . Search in Google Scholar

[10] Sagi, O., & Rokach, L. (2018). Ensemble learning: A survey. Wiley interdisciplinary reviews: data mining and knowledge discovery, 8(4), e1249. Sagi O. Rokach L. ( 2018 ). Ensemble learning: A survey . Wiley interdisciplinary reviews: data mining and knowledge discovery , 8 ( 4 ), e1249 . Search in Google Scholar

[11] Zhou, Z. H., & Zhou, Z. H. (2021). Ensemble learning (pp. 181-210). Springer Singapore. Zhou Z. H. Zhou Z. H. ( 2021 ). Ensemble learning (pp. 181 - 210 ). Springer Singapore . Search in Google Scholar

[12] Rincy, T. N., & Gupta, R. (2020, February). Ensemble learning techniques and its efficiency in machine learning: A survey. In 2nd international conference on data, engineering and applications (IDEA) (pp. 1-6). IEEE. Rincy T. N. Gupta R. ( 2020 , February ). Ensemble learning techniques and its efficiency in machine learning: A survey . In 2nd international conference on data, engineering and applications (IDEA) (pp. 1 - 6 ). IEEE . Search in Google Scholar

[13] Alzubi, J. A. (2015, September). Diversity based improved bagging algorithm. In Proceedings of the The International Conference on Engineering & MIS 2015 (pp. 1-5). Alzubi J. A. ( 2015 , September ). Diversity based improved bagging algorithm . In Proceedings of the The International Conference on Engineering & MIS 2015 (pp. 1 - 5 ). Search in Google Scholar

[14] Andiojaya, A., & Demirhan, H. (2019). A bagging algorithm for the imputation of missing values in time series. Expert Systems with Applications, 129, 10-26. Andiojaya A. Demirhan H. ( 2019 ). A bagging algorithm for the imputation of missing values in time series . Expert Systems with Applications , 129 , 10 - 26 . Search in Google Scholar

[15] Mayr, A., Binder, H., Gefeller, O., & Schmid, M. (2014). The evolution of boosting algorithms. Methods of information in medicine, 53(06), 419-427. Mayr A. Binder H. Gefeller O. Schmid M. ( 2014 ). The evolution of boosting algorithms . Methods of information in medicine , 53 ( 06 ), 419 - 427 . Search in Google Scholar

[16] Ferreira, A. J., & Figueiredo, M. A. (2012). Boosting algorithms: A review of methods, theory, and applications. Ensemble machine learning: Methods and applications, 35-85. Ferreira A. J. Figueiredo M. A. ( 2012 ). Boosting algorithms: A review of methods, theory, and applications . Ensemble machine learning: Methods and applications , 35 - 85 . Search in Google Scholar

[17] Tyralis, H., & Papacharalampous, G. (2021). Boosting algorithms in energy research: A systematic review. Neural Computing and Applications, 33(21), 14101-14117. Tyralis H. Papacharalampous G. ( 2021 ). Boosting algorithms in energy research: A systematic review . Neural Computing and Applications , 33 ( 21 ), 14101 - 14117 . Search in Google Scholar

[18] Bentéjac, C., Csörgő, A., & Martínez-Muñoz, G. (2021). A comparative analysis of gradient boosting algorithms. Artificial Intelligence Review, 54, 1937-1967. Bentéjac C. Csörgő A. Martínez-Muñoz G. ( 2021 ). A comparative analysis of gradient boosting algorithms . Artificial Intelligence Review , 54 , 1937 - 1967 . Search in Google Scholar

Sprache:
Englisch
Zeitrahmen der Veröffentlichung:
1 Hefte pro Jahr
Fachgebiete der Zeitschrift:
Biologie, Biologie, andere, Mathematik, Angewandte Mathematik, Mathematik, Allgemeines, Physik, Physik, andere