This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Abdelazim, H. Y., & Wahba, K. (2006). An artificial intelligence approach to portfolio selection and management. International Journal of Financial Services Management, 1(2–3), 243–254. https://doi:10.1504/ijfsm.2006.009629AbdelazimH. Y.WahbaK.2006An artificial intelligence approach to portfolio selection and management12–3243254https://doi:10.1504/ijfsm.2006.00962910.1504/IJFSM.2006.009629Search in Google Scholar
Ahn, M. J., & Chen, Y. C. (2022). Digital transformation toward AI-augmented public administration: The perception of government employees and the willingness to use AI in government. Government Information Quarterly, 39(2), Article 101664. https://doi:10.1016/j.giq.2021.101664AhnM. J.ChenY. C.2022Digital transformation toward AI-augmented public administration: The perception of government employees and the willingness to use AI in government392Article 101664.https://doi:10.1016/j.giq.2021.10166410.1016/j.giq.2021.101664Search in Google Scholar
Aktürk, C. (2021). Artificial intelligence in enterprise resource planning systems: A bibliometric study. Journal of International Logistics & Trade, 19(2), 69–82. https://doi:10.24006/jilt.2021.19.2.069AktürkC.2021Artificial intelligence in enterprise resource planning systems: A bibliometric study1926982https://doi:10.24006/jilt.2021.19.2.06910.24006/jilt.2021.19.2.069Search in Google Scholar
Aljarrah, A., Ababneh, M., Karagozlu, D., & Ozdamli, F. (2021). Artificial intelligence techniques for distance education: A systematic literature review. Tem Journal-Technology Education Management Informatics, 10(4), 1621–1629. https://doi:10.18421/TEM104-18AljarrahA.AbabnehM.KaragozluD.OzdamliF.2021Artificial intelligence techniques for distance education: A systematic literature review10416211629https://doi:10.18421/TEM104-1810.18421/TEM104-18Search in Google Scholar
Allen, R. D., Harding, J. A. & Newman, S. T. (2005). The application of STEP-NC using agent-based process planning. International Journal of Production Research, 43(4), 655–670. https://doi:10.1080/00207540412331314406AllenR. D.HardingJ. A.NewmanS. T.2005The application of STEP-NC using agent-based process planning434655670https://doi:10.1080/0020754041233131440610.1080/00207540412331314406Search in Google Scholar
Arditi, D., & Pulket, T. (2010). Predicting the outcome of construction litigation using an integrated artificial intelligence model. Journal of Computing in Civil Engineering, 24(1), 73–80. https://doi:10.1061/(ASCE)0887-3801(2010)24:1(73)ArditiD.PulketT.2010Predicting the outcome of construction litigation using an integrated artificial intelligence model2417380https://doi:10.1061/(ASCE)0887-3801(2010)24:1(73)10.1061/(ASCE)0887-3801(2010)24:1(73)Search in Google Scholar
Ascarza, E., Ross, M., & Hardie, B. G. S. (2021). Why you aren't getting more from your marketing AI. Harvard Business Review, 99(4), 48–54.AscarzaE.RossM.HardieB. G. S.2021Why you aren't getting more from your marketing AI9944854Search in Google Scholar
Babbar, S., & Rai, A. (1990). Computer integrated flexible manufacturing: An implementation framework. International Journal of Operations & Production Management, 10(1), 42–50. doi: 10.1108/01443579010005029BabbarS.RaiA.1990Computer integrated flexible manufacturing: An implementation framework101425010.1108/01443579010005029Open DOISearch in Google Scholar
Baker, R. (1990). Computer Integrated Manufacturing: Physical Modelling Systems Design. A Personal View. TAFE National Centre for Research and Development, 252 Kensington Road, Leabrook, South Australia 5068, Australia.BakerR.1990TAFE National Centre for Research and Development252 Kensington Road, Leabrook, South Australia 5068, AustraliaSearch in Google Scholar
Biggs, S. F., Mock, T., & Watkins, P. R. (1988). Auditor's use of analytical review in audit program design. Accounting Review, 63(1), 148–161.BiggsS. F.MockT.WatkinsP. R.1988Auditor's use of analytical review in audit program design631148161Search in Google Scholar
Blazek, L. (2021). Management and Administration of Companies Under the Influence of Development Industry 4.0. In ECMLG 2021: 17th European Conference on Management, Leadership & Governance, 44–54. Academic Conferences Ltd. https://doi:10.34190/MLG.21.088BlazekL.2021InECMLG 2021: 17th European Conference on Management, Leadership & Governance4454Academic Conferences Ltdhttps://doi:10.34190/MLG.21.088Search in Google Scholar
Bohm, A., & Jajcay, N. (2022). Technical and practical aspects of artificial intelligence in cardiology. Bratislava Medical Journal / Bratislavske Lekarske Listy, 123(1), 16–21. https://doi:10.4149/BLL_2022_003BohmA.JajcayN.2022Technical and practical aspects of artificial intelligence in cardiology12311621https://doi:10.4149/BLL_2022_00310.4149/BLL_2022_003Search in Google Scholar
Bouwman, M. J. (1983). Human diagnostic reasoning by computer: An illustration from financial analysis. Management Science, 29(6), 653–672. https://doi:10.1287/mnsc.29.6.653BouwmanM. J.1983Human diagnostic reasoning by computer: An illustration from financial analysis296653672https://doi:10.1287/mnsc.29.6.65310.1287/mnsc.29.6.653Search in Google Scholar
Bożejko, W., & Wodecki, M. (2010). Scheduling of construction projects. In Proceedings of the 6th European Conference on Management, Leadership & Governance (pp. 64–72). Academic Publishing Ltd.BożejkoW.WodeckiM.2010Scheduling of construction projectsIn6472Academic Publishing Ltd.Search in Google Scholar
Brock, J. K. U., & Von Wangenheim, F. (2019). Demystifying AI: What digital transformation leaders can teach you about realistic artificial intelligence. California Management Review, 61(4), 110–134. https://doi:10.1177/1536504219865226BrockJ. K. U.Von WangenheimF.2019Demystifying AI: What digital transformation leaders can teach you about realistic artificial intelligence614110134https://doi:10.1177/153650421986522610.1177/1536504219865226Search in Google Scholar
Buckner, G. D., & Shah, V. (1991). Management of knowledge-based organizations. American Business Review, 9(2), 70–79.BucknerG. D.ShahV.1991Management of knowledge-based organizations927079Search in Google Scholar
Byrd, T. A. (1993). Expert systems in production and operations management: Results of a survey. Interfaces, 23(2), 118–129. https://doi:10.1287/inte.23.2.118ByrdT. A.1993Expert systems in production and operations management: Results of a survey232118129https://doi:10.1287/inte.23.2.11810.1287/inte.23.2.118Search in Google Scholar
Chen, Y., Han, Z., Cao, K., Zheng, X., & Xu, X. (2020). Manufacturing upgrading in industry 4.0 era. Systems Research and Behavioral Science, 37(4), 766–771. https://doi:10.1002/sres.2717ChenY.HanZ.CaoK.ZhengX.XuX.2020Manufacturing upgrading in industry 4.0 era374766771https://doi:10.1002/sres.271710.1002/sres.2717Search in Google Scholar
Chen, Z. (1994). Enhancing Database Management to Knowledge Base Management: The Role of Information Retrieval Technology. Information Processing and Management, 30(3), 419–435.ChenZ.1994Enhancing Database Management to Knowledge Base Management: The Role of Information Retrieval Technology30341943510.1016/0306-4573(94)90054-XSearch in Google Scholar
Chuang, S., & Graham, C. M. (2020). Contemporary issues and performance improvement of mature workers in Industry 4.0. Performance Improvement, 59(6), 21–30. https://doi:10.1002/pfi.21921ChuangS.GrahamC. M.2020Contemporary issues and performance improvement of mature workers in Industry 4.05962130https://doi:10.1002/pfi.2192110.1002/pfi.21921Search in Google Scholar
Conway, R. W., Johnson, B. M., & Maxwell, W. L. (1959). Some problems of digital systems simulation. Management Science, 6(1), 92–110. https://doi:10.1287/mnsc.6.1.92ConwayR. W.JohnsonB. M.MaxwellW. L.1959Some problems of digital systems simulation6192110https://doi:10.1287/mnsc.6.1.9210.1287/mnsc.6.1.92Search in Google Scholar
Crijman, A.-M. (2021). Good business processes candidates for automation future of work: Robotic process automation. Annals of “Constantin Brancusi” University of Targu-Jiu. Economy Series, (4), 63–71. https://www.utgjiu.ro/revista/ec/pdf/2021-04/08_Crijman.pdfCrijmanA.-M.2021Good business processes candidates for automation future of work: Robotic process automation46371https://www.utgjiu.ro/revista/ec/pdf/2021-04/08_Crijman.pdfSearch in Google Scholar
Crunk, J., & North, M. M. (2007). Decision support systems and artificial intelligence technologies in aid of information systems based marketing. International Management Review, 3(2), 61–67.CrunkJ.NorthM. M.2007Decision support systems and artificial intelligence technologies in aid of information systems based marketing326167Search in Google Scholar
Curry, B., & Moutinho, L. (1994). Intelligent computer models for marketing decisions. Management Decision, 32(4), 30–35. https://doi:10.1108/00251749410058653CurryB.MoutinhoL.1994Intelligent computer models for marketing decisions3243035https://doi:10.1108/0025174941005865310.1108/00251749410058653Search in Google Scholar
Dahiya, N., & Sayyad, M. (2021). Artificial intelligence of things: A IoT in various markets of IoT deployments. International Journal of Recent Research Aspects, 8(3), 18–26.DahiyaN.SayyadM.2021Artificial intelligence of things: A IoT in various markets of IoT deployments831826Search in Google Scholar
Daskou, S., & Mangina, E. E. (2003). Artificial intelligence in managing market relationships: The use of intelligence agents. Journal of Relationship Marketing, 2(1–2), 85–102. https://doi:10.1300/J366v02n01_06DaskouS.ManginaE. E.2003Artificial intelligence in managing market relationships: The use of intelligence agents21–285102https://doi:10.1300/J366v02n01_0610.1300/J366v02n01_06Search in Google Scholar
Davenport, T., Guha, A., Grewal, D., & Bressgott, T. (2020). How artificial intelligence will change the future of marketing. Journal of the Academy of Marketing Science, 48(1), 24–42. https://doi:10.1007/s11747-019-00696-0DavenportT.GuhaA.GrewalD.BressgottT.2020How artificial intelligence will change the future of marketing4812442https://doi:10.1007/s11747-019-00696-010.1007/s11747-019-00696-0Search in Google Scholar
Dec, G., Stadnicka, D., Paśko, Ł., Mądziel, M., Figliè, R., Mazzei, D. ... Solé-Beteta, X. (2022). Role of academics in transferring knowledge and skills on artificial intelligence, Internet of Things and edge computing. Sensors, 22(7), Article 2496. https://doi:10.3390/s22072496DecG.StadnickaD.PaśkoŁ.MądzielM.FiglièR.MazzeiD.Solé-BetetaX.2022Role of academics in transferring knowledge and skills on artificial intelligence, Internet of Things and edge computing227Article 2496.https://doi:10.3390/s2207249610.3390/s22072496Search in Google Scholar
Dharmaraja, R. (2002). Is the debt-collection industry a suitable candidate for artificial intelligence? Business Credit, 104(1), 39–43.DharmarajaR.2002Is the debt-collection industry a suitable candidate for artificial intelligence?10413943Search in Google Scholar
Długosz, A., Rostek, K., & Zawiła-Niedźwiecki, J. (2018). Wpływ nowych technologii na zarządzanie - technologiczne wyzwania biznesu - sztuczna inteligencja: perspektywa Intel Polska [The impact of new technologies on management - technological challenges of business - artificial intelligence: intel Poland's perspective]. Przegląd Organizacji [Organization Review], 7, 54–56.DługoszA.RostekK.Zawiła-NiedźwieckiJ.2018Wpływ nowych technologii na zarządzanie - technologiczne wyzwania biznesu - sztuczna inteligencja: perspektywa Intel Polska [The impact of new technologies on management - technological challenges of business - artificial intelligence: intel Poland's perspective]75456Search in Google Scholar
Donovan, J. J., & Jacoby, H. D. (1977). Virtual machine communication for the implementation of decision support systems. IEEE Transactions on Software Engineering, 3(5), 333–342.DonovanJ. J.JacobyH. D.1977Virtual machine communication for the implementation of decision support systems3533334210.1109/TSE.1977.231158Search in Google Scholar
Drewniak, Z., & Posadzińska, I. (2019). Learning and development tools in supporting of artificial intelligence companies innovativeness. In European Conference on Management, Leadership & Governance (pp. 125–132). Academic Conferences International Limited.DrewniakZ.PosadzińskaI.2019Learning and development tools in supporting of artificial intelligence companies innovativenessIn125132Academic Conferences International LimitedSearch in Google Scholar
Easterby-Smith, M., Thorne, R. & Jackson, P. R. (2015). Management and business research. Sage.Easterby-SmithM.ThorneR.JacksonP. R.2015SageSearch in Google Scholar
Egan, J. (1993). Artificially intelligent investing. U.S. News & World Report, 56(10), 73.EganJ.1993Artificially intelligent investing561073Search in Google Scholar
Feigenbaum, E., & Feldman, J. (1963). Computers and thought. McGraw-Hill.FeigenbaumE.FeldmanJ.1963McGraw-HillSearch in Google Scholar
Frank, M. R., Autor, D., Bessen, J. E., Brynjolfsson, E., Cebrian, M., Deming, D. J. ... Rahwan, I. (2019). Toward understanding the impact of artificial intelligence on labor. Proceedings of the National Academy of Sciences, 116(14), 6531–6539. https://doi:10.1073/pnas.1900949116FrankM. R.AutorD.BessenJ. E.BrynjolfssonE.CebrianM.DemingD. J.RahwanI.2019Toward understanding the impact of artificial intelligence on labor1161465316539https://doi:10.1073/pnas.190094911610.1073/pnas.1900949116Search in Google Scholar
Ghandour, A. (2021). Opportunities and challenges of artificial intelligence in banking: Systematic literature review. TEM Journal, 10(4), 1581–1587. https://doi:10.18421/TEM104-12GhandourA.2021Opportunities and challenges of artificial intelligence in banking: Systematic literature review10415811587https://doi:10.18421/TEM104-1210.18421/TEM104-12Search in Google Scholar
Gladwin, L. A. (1984). The impact of artificial intelligence on training. Training & Development Journal, 38(12), 46–47.GladwinL. A.1984The impact of artificial intelligence on training38124647Search in Google Scholar
Gotthardt, M., Koivulaakso, D., Paksoy, O., Saramo, C., Martikainen, M., & Lehner, O. (2020). Current state and challenges in the implementation of smart robotic process automation in accounting and auditing. ACRN Journal of Finance and Risk Perspectives, 8, 31–46. https://doi.org/10.35944/jofrp.2020.9.1GotthardtM.KoivulaaksoD.PaksoyO.SaramoC.MartikainenM.LehnerO.2020Current state and challenges in the implementation of smart robotic process automation in accounting and auditing83146https://doi.org/10.35944/jofrp.2020.9.110.35944/jofrp.2020.9.1.007Search in Google Scholar
Gupta, S., Modgil, S., Bhattacharyya, S., & Bose, I. (2021). Artificial intelligence for decision support systems in the field of operations research: Review and future scope of research. Annals of Operations Research, 308(1/2), 215–274. https://doi:10.1007/s10479-020-03856-6GuptaS.ModgilS.BhattacharyyaS.BoseI.2021Artificial intelligence for decision support systems in the field of operations research: Review and future scope of research3081/2215274https://doi:10.1007/s10479-020-03856-610.1007/s10479-020-03856-6Search in Google Scholar
Gusc, J., Bosma, P., Jarka, S., & Biernat-Jarka, A. (2022). The big data, artificial intelligence, and blockchain in true cost accounting for energy transition in Europe. Energies, 15(3), Article 1089. https://doi:10.3390/en15031089GuscJ.BosmaP.JarkaS.Biernat-JarkaA.2022The big data, artificial intelligence, and blockchain in true cost accounting for energy transition in Europe153Article 1089.https://doi:10.3390/en1503108910.3390/en15031089Search in Google Scholar
Han, T., Zhu, J., Chen, X., Chen, R., Jiang, Y., Wang, S. ... Xu, C. (2022). Application of artificial intelligence in real-world research for predicting the risk of liver metastasis in T1 colorectal cancer. Cancer Cell International, 22(1), 1–15. https://doi:10.1186/s12935-021-02424-7HanT.ZhuJ.ChenX.ChenR.JiangY.WangS.XuC.2022Application of artificial intelligence in real-world research for predicting the risk of liver metastasis in T1 colorectal cancer221115https://doi:10.1186/s12935-021-02424-710.1186/s12935-021-02424-7Search in Google Scholar
Harvey, W., & SRI International (1985). Designing educational software for tomorrow. SRI International.HarveyW.SRI International1985SRI InternationalSearch in Google Scholar
Hauer, I. (2009). Some considerations about knowledge management: A view from knowledge management and artificial intelligence relationship. Megatrend Review, 6(2), 269–277.HauerI.2009Some considerations about knowledge management: A view from knowledge management and artificial intelligence relationship62269277Search in Google Scholar
Hawkins, S., & Pollock, A. M. (1996). Future of artificial intelligence is in streamlining care. Lancet, 347(9008), 1104–1104. https://doi:10.1016/S0140-6736(96)90290-1HawkinsS.PollockA. M.1996Future of artificial intelligence is in streamlining care347900811041104https://doi:10.1016/S0140-6736(96)90290-110.1016/S0140-6736(96)90290-1Search in Google Scholar
Heinrich, T., & Witko, C. (2021). Technology-induced job loss and the prioritization of economic problems in the mass public. Review of Policy Research, 38(2), 164–179. https://doi:10.1111/ropr.12418HeinrichT.WitkoC.2021Technology-induced job loss and the prioritization of economic problems in the mass public382164179https://doi:10.1111/ropr.1241810.1111/ropr.12418Search in Google Scholar
Hellvig, R., Dumitrescu, C., & Dumitrescu, M. (2020). Management of cybercrime in the financial field: Perspectives to combat the phenomenon. Internal Auditing & Risk Management, 15(3), 23–33. https://doi:10.5281/zenodo.4058353HellvigR.DumitrescuC.DumitrescuM.2020Management of cybercrime in the financial field: Perspectives to combat the phenomenon1532333https://doi:10.5281/zenodo.4058353Search in Google Scholar
Henning, P. A., Henning, J., & Glück, K. (2021). Artificial intelligence: Its future in the health sector and its role for medical education. Journal of European CME, 10(1), 1–6. https://doi:10.1080/21614083.2021.2014099HenningP. A.HenningJ.GlückK.2021Artificial intelligence: Its future in the health sector and its role for medical education10116https://doi:10.1080/21614083.2021.201409910.1080/21614083.2021.2014099Search in Google Scholar
Husby, O. (1990). Library automation. Higher Education Management, 2(3), 299–309.HusbyO.1990Library automation23299309Search in Google Scholar
Jaiswal, A., Arun, C. J., & Varma, A. (2022). Rebooting employees: upskilling for artificial intelligence in multinational corporations. International Journal of Human Resource Management, 33(6), 1179–1208. https://doi:10.1080/09585192.2021.1891114JaiswalA.ArunC. J.VarmaA.2022Rebooting employees: upskilling for artificial intelligence in multinational corporations33611791208https://doi:10.1080/09585192.2021.189111410.1080/09585192.2021.1891114Search in Google Scholar
Jayaram, A. (2021, March 21). Soon, AI-based robots to replace financial advisers: Oracle study. Business Today. Inhttps://www.businesstoday.in/latest/corporate/story/soon-ai-based-robots-to-replace-financial-advisers-oracle-study-291397-2021-03-21JayaramA.2021March21Soon, AI-based robots to replace financial advisers: Oracle studyInhttps://www.businesstoday.in/latest/corporate/story/soon-ai-based-robots-to-replace-financial-advisers-oracle-study-291397-2021-03-21Search in Google Scholar
João Correia, M., & Matos, F. (2021). The impact of artificial intelligence on innovation management: A literature review. In Proceedings of the European Conference on Innovation & Entrepreneurship (pp. 222–230). https://doi:10.34190/EIE.21.225João CorreiaM.MatosF.2021InProceedings of the European Conference on Innovation & Entrepreneurship222230https://doi:10.34190/EIE.21.22510.34190/EIE.21.225Search in Google Scholar
Kashiwagi, D. T., & Byfield, R. (2002). Testing of minimization of subjectivity in best value procurement by using artificial intelligence systems in state of Utah procurement. Journal of Construction Engineering & Management, 128(6), 496–502. https://doi:10.1061/(ASCE)0733-9364(2002)128:6(496KashiwagiD. T.ByfieldR.2002Testing of minimization of subjectivity in best value procurement by using artificial intelligence systems in state of Utah procurement1286496502https://doi:10.1061/(ASCE)0733-9364(2002)128:6(49610.1061/(ASCE)0733-9364(2002)128:6(496)Search in Google Scholar
Kastner, J. K., & Hong, S. J. (1984). A review of expert systems. European Journal of Operational Research, 18(3), 285–292. https://doi:10.1016/0377-2217(84)90150-4KastnerJ. K.HongS. J.1984A review of expert systems183285292https://doi:10.1016/0377-2217(84)90150-410.1016/0377-2217(84)90150-4Search in Google Scholar
Kathawala, Y., & Allen, W. R. (1993). Expert systems and job shop scheduling. International Journal of Operations & Production Management, 13(2), 23–35. https://doi:10.1108/01443579310025286KathawalaY.AllenW. R.1993Expert systems and job shop scheduling1322335https://doi:10.1108/0144357931002528610.1108/01443579310025286Search in Google Scholar
Keen, P. G. W. (1976). “Interactive” computer systems for managers: A modest proposal. Sloan Management Review, 18(1), 1–17.KeenP. G. W.1976“Interactive” computer systems for managers: A modest proposal181117Search in Google Scholar
Keen, P. G. W. (1980). Decision support systems: Translating analytic techniques into useful tools. Sloan Management Review, 21(3), 33–44.KeenP. G. W.1980Decision support systems: Translating analytic techniques into useful tools2133344Search in Google Scholar
Kernan, J. B. (1965). Thinking by machine? Advanced Management Journal, 30(2), 69–73.KernanJ. B.1965Thinking by machine?3026973Search in Google Scholar
Kerr, R. M., & Ebsary, R. V. (1988). Implementation of an expert system for production scheduling. European Journal of Operational Research, 33(1), 17–29. https://doi:10.1016/0377-2217(88)90250-0KerrR. M.EbsaryR. V.1988Implementation of an expert system for production scheduling3311729https://doi:10.1016/0377-2217(88)90250-010.1016/0377-2217(88)90250-0Search in Google Scholar
Kobbacy, K. A. H., Vadera, S., & Rasmy, M. H. (2007). AI and OR in management of operations: History and trends. Journal of the Operational Research Society, 58(1), 10–28. https://doi:10.1057/palgrave.jors.2602132KobbacyK. A. H.VaderaS.RasmyM. H.2007AI and OR in management of operations: History and trends5811028https://doi:10.1057/palgrave.jors.260213210.1057/palgrave.jors.2602132Search in Google Scholar
Kshirsagar, P. R., Tirth, V., Islam, S., Qaiyum, S., Al Duhayyim, M., & Waji, Y. A. (2022). IOT Based Smart Wastewater Treatment Model for Industry 4.0 Using Artificial Intelligence. Scientific Programming, 2022, Article 5134013. https://doi:10.1155/2022/5134013KshirsagarP. R.TirthV.IslamS.QaiyumS.Al DuhayyimM.WajiY. A.2022IOT Based Smart Wastewater Treatment Model for Industry 4.0 Using Artificial Intelligence2022Article 5134013. https://doi:10.1155/2022/513401310.1155/2022/5134013Search in Google Scholar
Kumar, I., Rawat, J., Mohd, N., & Husain, S. (2021). Opportunities of artificial intelligence and machine learning in the food industry. Journal of Food Quality, 2021, Article 4535567, 1–10. https://doi:10.1155/2021/4535567KumarI.RawatJ.MohdN.HusainS.2021Opportunities of artificial intelligence and machine learning in the food industry2021, Article 4535567,110https://doi:10.1155/2021/453556710.1155/2021/4535567Search in Google Scholar
Kumar, V., Rajan, B., Venkatesan, R., & Lecinski, J. (2019). Understanding the role of artificial intelligence in personalized engagement marketing. California Management Review, 61(4), 135–155. https://doi:10.1177/0008125619859317KumarV.RajanB.VenkatesanR.LecinskiJ.2019Understanding the role of artificial intelligence in personalized engagement marketing614135155https://doi:10.1177/000812561985931710.1177/0008125619859317Search in Google Scholar
Kumara, S., & Lehtihet, A. L. (1989). Artificial intelligence and expert systems: Their relevance to manufacturing. In International Handbook of Production & Operations Management (pp. 210–236), Taylor & Francis.KumaraS.LehtihetA. L.1989Artificial intelligence and expert systems: Their relevance to manufacturingIn210236Taylor & FrancisSearch in Google Scholar
Łapińska, J., Escher, I., Górka, J., Sudolska, A., & Brzustewicz, P. (2021). Employees' trust in artificial intelligence in companies: The case of energy and chemical industries in Poland. Energies, 14(7), Article 1942. https://doi:10.3390/en14071942ŁapińskaJ.EscherI.GórkaJ.SudolskaA.BrzustewiczP.2021Employees' trust in artificial intelligence in companies: The case of energy and chemical industries in Poland147Article 1942.https://doi:10.3390/en1407194210.3390/en14071942Search in Google Scholar
Lee, I. (2007). Evaluating artificial intelligence heuristics for a flexible Kanban system: simultaneous Kanban controlling and scheduling. International Journal of Production Research, 45(13), 2859–2873. https://doi:10.1080/00207540600806505LeeI.2007Evaluating artificial intelligence heuristics for a flexible Kanban system: simultaneous Kanban controlling and scheduling451328592873https://doi:10.1080/0020754060080650510.1080/00207540600806505Search in Google Scholar
Liebowitz, J., & Prerau, D.S. (1995). Worldwide intelligent systems: Approaches to telecommunications and network management. IOS Press.LiebowitzJ.PrerauD.S.1995IOS PressSearch in Google Scholar
Liu, Q. (2022). Analysis of collaborative driving effect of artificial intelligence on knowledge innovation management. Scientific Programming, 2022, Article 8223724, 1–8. https://doi:10.1155/2022/8223724LiuQ.2022Analysis of collaborative driving effect of artificial intelligence on knowledge innovation management2022, Article 8223724, 1–8. https://doi:10.1155/2022/822372410.1155/2022/8223724Search in Google Scholar
Lodish, L. M. (1982). A marketing decision support system for retailers. Marketing Science, 1(1), 31–56. https://doi:10.1287/mksc.1.1.31LodishL. M.1982A marketing decision support system for retailers113156https://doi:10.1287/mksc.1.1.3110.1287/mksc.1.1.31Search in Google Scholar
Lou, B., and Wu, L. (2021). AI on drugs: Can artificial intelligence accelerate drug development? Evidence from a large-scale examination of bio-pharma firms. MIS Quarterly, 45(3), 1451–1482. https://doi:10.25300/MISQ/2021/16565LouB.WuL.2021AI on drugs: Can artificial intelligence accelerate drug development? Evidence from a large-scale examination of bio-pharma firms45314511482https://doi:10.25300/MISQ/2021/1656510.25300/MISQ/2021/16565Search in Google Scholar
Luo, T., Li, G., and Yu, N. (2021). Application of artificial intelligence and collaborative knowledge for manufacturing design. Scientific Programming, 2021, Article 5846952, 1–7. https://doi:10.1155/2021/5846952LuoT.LiG.YuN.2021Application of artificial intelligence and collaborative knowledge for manufacturing design2021, Article 5846952,17https://doi:10.1155/2021/584695210.1155/2021/5846952Search in Google Scholar
Marzec, P., & Sliż, P. (2020). The specificity of Polish and Israeli start-ups utilizing modern ICT technologies. Organization & Management Quarterly, 50(2), 99–112. https://doi:10.29119/1899-6116.2020.50.8MarzecP.SliżP.2020The specificity of Polish and Israeli start-ups utilizing modern ICT technologies50299112https://doi:10.29119/1899-6116.2020.50.8Search in Google Scholar
Munguía, J., Lloveras, J., Llorens, S., & Laoui, T. (2010). Development of an AI-based rapid manufacturing advice system. International Journal of Production Research, 48(8), 2261–2278. https://doi:10.1080/00207540802552675MunguíaJ.LloverasJ.LlorensS.LaouiT.2010Development of an AI-based rapid manufacturing advice system48822612278https://doi:10.1080/0020754080255267510.1080/00207540802552675Search in Google Scholar
Murphy, F. H. (2005). ASP, the art and science of practice: Elements of a theory of the practice of operations research: A framework. Interfaces, 35(2), 154–163. https://doi:10.1287/inte.1050.0126MurphyF. H.2005ASP, the art and science of practice: Elements of a theory of the practice of operations research: A framework352154163https://doi:10.1287/inte.1050.012610.1287/inte.1050.0126Search in Google Scholar
Navneet, B., Helena, B., Benoît, G., & Stoyan, T. (2020). Innovation management in the age of artificial intelligence. In Proceedings of ISPIM Conferences, 1–24.NavneetB.HelenaB.BenoîtG.StoyanT.2020InProceedings of ISPIM Conferences124Search in Google Scholar
Oliveira, L., Dias, R., Rebello, C. M., Martins, M. A., Rodrigues, A. E., Ribeiro, A. M., & Nogueira, I. B. (2021). Artificial intelligence and cyber-physical systems: A review and perspectives for the future in the chemical industry. AI, 2(3), 429–443. https://doi:10.3390/ai2030027OliveiraL.DiasR.RebelloC. M.MartinsM. A.RodriguesA. E.RibeiroA. M.NogueiraI. B.2021Artificial intelligence and cyber-physical systems: A review and perspectives for the future in the chemical industry23429443https://doi:10.3390/ai203002710.3390/ai2030027Search in Google Scholar
Oprea, M., Sánchez-Marré, M., & Wotawa, F. (2005). Binding environmental sciences and artificial intelligence. AI Communications, 18(4), 243–245.OpreaM.Sánchez-MarréM.WotawaF.2005Binding environmental sciences and artificial intelligence184243245Search in Google Scholar
Overgoor, G., Chica, M., Rand, W., & Weishampel, A. (2019). Letting the computers take over: Using AI to solve marketing problems. California Management Review, 61(4), 156–185. https://doi:10.1177/0008125619859318OvergoorG.ChicaM.RandW.WeishampelA.2019Letting the computers take over: Using AI to solve marketing problems614156185https://doi:10.1177/000812561985931810.1177/0008125619859318Search in Google Scholar
Overholt, A. (2002). True or false: You're hiring the right people. Fast Company, 55, 110–114. https://www.fastcompany.com/44463/true-or-false-youre-hiring-right-people.OverholtA.2002True or false: You're hiring the right people55110114https://www.fastcompany.com/44463/true-or-false-youre-hiring-right-people.Search in Google Scholar
Padmanabhan, B., Fang, X., Sahoo, N., & Burton-Jones, A. (2022). Machine learning in information systems research. MIS Quarterly, 46(1), iii–xviii.PadmanabhanB.FangX.SahooN.Burton-JonesA.2022Machine learning in information systems research461iiixviiiSearch in Google Scholar
Parker, H., & Appel, S. E. (2021). On the path to artificial intelligence: The effects of a robotics solution in a financial services firm. South African Journal of Industrial Engineering, 32(2), 37–47. https://doi:10.7166/32-2-2390ParkerH.AppelS. E.2021On the path to artificial intelligence: The effects of a robotics solution in a financial services firm3223747https://doi:10.7166/32-2-239010.7166/32-2-2390Search in Google Scholar
Patalay, S., & Bandlamudi, M. R. (2021). Decision support system for stock portfolio selection using artificial intelligence and machine learning. Ingénierie des systèmes d'information, 26(1), 87–93. https://doi:10.18280/isi.260109PatalayS.BandlamudiM. R.2021Decision support system for stock portfolio selection using artificial intelligence and machine learning2618793https://doi:10.18280/isi.26010910.18280/isi.260109Search in Google Scholar
Pawlicka, K. (2021). The use of artificial intelligence and sustainable supply chain finance in omnichannel logistics services. Materials Management and Logistics, 10, 27–35. https://doi:10.33226/1231-2037.2021.10.3PawlickaK.2021The use of artificial intelligence and sustainable supply chain finance in omnichannel logistics services102735https://doi:10.33226/1231-2037.2021.10.310.33226/1231-2037.2021.10.3Search in Google Scholar
Pelton, J. N. (1990). Technology and education: Friends or foes? (ED330302). ERIC.PeltonJ. N.1990(ED330302). ERIC.Search in Google Scholar
Pfefferkorn, C. E. (1975). A heuristic problem-slving design system for equipment or furniture layouts. Communications of the ACM, 18(5), 286–297. https://doi:10.1145/360762.360817PfefferkornC. E.1975A heuristic problem-slving design system for equipment or furniture layouts185286297https://doi:10.1145/360762.36081710.1145/360762.360817Search in Google Scholar
Pouliakas, K. (2021). Understanding technological change and skill needs: Big data and artificial intelligence methods. (ED613872). ERIC. https://files.eric.ed.gov/fulltext/ED613872.pdfPouliakasK.2021(ED613872). ERIC. https://files.eric.ed.gov/fulltext/ED613872.pdfSearch in Google Scholar
Powell, W. B. (2010). Merging AI and OR to solve high-dimensional stochastic optimization problems using approximate dynamic programming. INFORMS Journal on Computing, 22 (1), 2–17. https://doi:10.1287/ijoc.1090.0349PowellW. B.2010Merging AI and OR to solve high-dimensional stochastic optimization problems using approximate dynamic programming221217https://doi:10.1287/ijoc.1090.034910.1287/ijoc.1090.0349Search in Google Scholar
PR Newswire (2019). Security Information and Event Management (SIEM)-Global Market Analysis. Forecast to 2023', PR Newswire US, 26 February.PR Newswire2019Forecast to 2023', PR Newswire US, 26 February.Search in Google Scholar
Pritchard, S. (2021, April 12). How robotic process automation is getting smarter as it evolves. Computer Weekly, 13–17. https://www.computerweekly.com/feature/How-robotic-process-automation-is-getting-smarter-as-it-evolvesPritchardS.2021April12How robotic process automation is getting smarter as it evolves1317https://www.computerweekly.com/feature/How-robotic-process-automation-is-getting-smarter-as-it-evolvesSearch in Google Scholar
Pryde, A. (2001, October 12). Job fears hinder modernisation. Public Finance.https://www.publicfinance.co.uk/news/2001/10/job-fears-hinder-modernisationPrydeA.2001October12Job fears hinder modernisationhttps://www.publicfinance.co.uk/news/2001/10/job-fears-hinder-modernisationSearch in Google Scholar
Qi, J., Wu, F., Li, L., & Shu, H. (2007). Artificial intelligence applications in the telecommunications industry. Expert Systems, 24(4), 271–291. https://doi:10.1111/j.1468-0394.2007.00433.xQiJ.WuF.LiL.ShuH.2007Artificial intelligence applications in the telecommunications industry244271291https://doi:10.1111/j.1468-0394.2007.00433.x10.1111/j.1468-0394.2007.00433.xSearch in Google Scholar
Rader, G. M., & Montgomery, C. A. (1974). A method for composing simple traditional music by computer. Communications of the ACM, 17(11), 631–638. https://doi:10.1145/361179.361200RaderG. M.MontgomeryC. A.1974A method for composing simple traditional music by computer1711631638https://doi:10.1145/361179.36120010.1145/361179.361200Search in Google Scholar
Rapoport, A. (1964). Computers and thought. Management Science, 11(1), 203–210.RapoportA.1964Computers and thought111203210Search in Google Scholar
Remlein, M., Bejger, P., Olejnik, I., Jastrzębowski, A., & Obrzeżgiewicz, D. (2022). Application of process automation with the use of robotization in financial accounting in business units operating in Poland. Theoretical Journals of Accounting, 46(1), 47–65. https://doi:10.5604/01.3001.0015.7988RemleinM.BejgerP.OlejnikI.JastrzębowskiA.ObrzeżgiewiczD.2022Application of process automation with the use of robotization in financial accounting in business units operating in Poland4614765https://doi:10.5604/01.3001.0015.798810.5604/01.3001.0015.7988Search in Google Scholar
Rezgui, Y., Brown, A., Cooper, G., Brandon, P. & Betts, M. (1998). Intelligent models for collaborative construction engineering. Computer-Aided Civil and Infrastructure Engineering, 13(3), 151–161. https://doi:10.1111/0885-9507.00095RezguiY.BrownA.CooperG.BrandonP.BettsM.1998Intelligent models for collaborative construction engineering133151161https://doi:10.1111/0885-9507.0009510.1111/0885-9507.00095Search in Google Scholar
Rodríguez-Rángel, H., Arias, D. M., Morales-Rosales, L. A., Gonzalez-Huitron, V., Valenzuela Partida, M., & García, J. (2022). Machine learning methods modeling carbohydrate-enriched cyanobacteria biomass production in wastewater treatment systems. Energies, 15(7), Article 2500.Rodríguez-RángelH.AriasD. M.Morales-RosalesL. A.Gonzalez-HuitronV.Valenzuela PartidaM.GarcíaJ.2022Machine learning methods modeling carbohydrate-enriched cyanobacteria biomass production in wastewater treatment systems157Article 2500.10.3390/en15072500Search in Google Scholar
Rosenberg, S. & Lawrence Livermore National Laboratory. (1980). An intelligent support system for energy resources in the United States (ED190149). ERIC. https://files.eric.ed.gov/fulltext/ED190149.pdfRosenbergS.Lawrence Livermore National Laboratory1980(ED190149). ERIC. https://files.eric.ed.gov/fulltext/ED190149.pdfSearch in Google Scholar
Sierra, M. D. C. S. (2007). Inteligencia artificial en la gestión financiera empresarial [Artificial intelligence in business financial management]. Pensamiento & Gestión [Thought & Management], 23, 153–186. https://media.proquest.com/media/pq/classic/doc/3081190751/fmt/pi/rep/NONE?_s=TEg6O3XROH3o9sAVlFN0%2BSulh5Q%3DSierraM. D. C. S.2007Inteligencia artificial en la gestión financiera empresarial [Artificial intelligence in business financial management]23153186https://media.proquest.com/media/pq/classic/doc/3081190751/fmt/pi/rep/NONE?_s=TEg6O3XROH3o9sAVlFN0%2BSulh5Q%3DSearch in Google Scholar
Simon, H. A. (1978). On how to decide what to do. Bell Journal of Economics, 9(2), 494–507. https://doi:10.2307/3003595SimonH. A.1978On how to decide what to do92494507https://doi:10.2307/300359510.2307/3003595Search in Google Scholar
Ślażyńska-Kluczek, D. (2021). Artificial intelligence – legal regulations, place in the Polish banking sector. Economic Sciences, 34(5). https://doi.org/10.19251/ne/2021.34(5)Ślażyńska-KluczekD.2021Artificial intelligence – legal regulations, place in the Polish banking sector34https://doi.org/10.19251/ne/2021.34(5)Search in Google Scholar
Smith, L. C. (1976). Artificial intelligence in information retrieval systems. Information Processing and Management, 12(3), 189–222.SmithL. C.1976Artificial intelligence in information retrieval systems12318922210.1016/0306-4573(76)90005-4Search in Google Scholar
Sommer, M., Olbrich, A., & Arendasy, M. (2004). Improvements in personnel selection with neural networks: A pilot study in the field of aviation psychology. International Journal of Aviation Psychology, 14(1), 103–115. https://doi:10.1207/s15327108ijap1401_6SommerM.OlbrichA.ArendasyM.2004Improvements in personnel selection with neural networks: A pilot study in the field of aviation psychology141103115https://doi:10.1207/s15327108ijap1401_610.1207/s15327108ijap1401_6Search in Google Scholar
Stachowicz-Stanusc, A., & Amann, W. (2018). Artificial intelligence at universities in Poland. Organization & Management Quarterly, 42(2), 63–82. https://doi:10.29119/1899-6116.2018.42.6Stachowicz-StanuscA.AmannW.2018Artificial intelligence at universities in Poland4226382https://doi:10.29119/1899-6116.2018.42.6Search in Google Scholar
Syam, S. S., & Courtney, J. F. (1994). The case for research in decision support systems. European Journal of Operational Research, 73(3), 450–457. https://doi:10.1016/0377-2217(94)90238-0SyamS. S.CourtneyJ. F.1994The case for research in decision support systems733450457https://doi:10.1016/0377-2217(94)90238-010.1016/0377-2217(94)90238-0Search in Google Scholar
Szkatuła, G., Hołubiec, J., & Wagner, D. (2000). Forecasting voting behaviour using machine learning - Poland in transition. Annals of Operations Research, 97(1–4), 31–41. https://doi:10.1023/a:1018944728371SzkatułaG.HołubiecJ.WagnerD.2000Forecasting voting behaviour using machine learning - Poland in transition971–43141https://doi:10.1023/a:101894472837110.1023/A:1018944728371Search in Google Scholar
Tan, K. H., & Lim, C. P. (2006). Special issue on intelligent systems in operations management. Intelligent Systems in Accounting, Finance & Management, 14(1/2), 1–2. https://doi:10.1002/isaf.270TanK. H.LimC. P.2006Special issue on intelligent systems in operations management141/212https://doi:10.1002/isaf.27010.1002/isaf.270Search in Google Scholar
The Boston Consulting Group. (2018 June 20). Employees familiar with artificial intelligence both welcome and fear its presence [Press release]. https://www.globenewswire.com/en/news-release/2018/06/20/1527435/0/en/Employees-Familiar-with-AI-Both-Welcome-and-Fear-Its-Presence.htmlThe Boston Consulting Group2018June20[Press release]. https://www.globenewswire.com/en/news-release/2018/06/20/1527435/0/en/Employees-Familiar-with-AI-Both-Welcome-and-Fear-Its-Presence.htmlSearch in Google Scholar
Te'eni, D., & Ginzberg, M. J. (1991). Human-computer decision systems: The multiple roles of DSS. European Journal of Operational Research, 50(2), 127–139. https://doi:10.1016/0377-2217(91)90236-OTe'eniD.GinzbergM. J.1991Human-computer decision systems: The multiple roles of DSS502127139https://doi:10.1016/0377-2217(91)90236-O10.1016/0377-2217(91)90236-OSearch in Google Scholar
Tonge, F. M. (1960). Summary of a heuristic line balancing procedure. Management Science, 7(1), 21–42. https://doi:10.1287/mnsc.7.1.21TongeF. M.1960Summary of a heuristic line balancing procedure712142https://doi:10.1287/mnsc.7.1.2110.1287/mnsc.7.1.21Search in Google Scholar
Veaner, A. B. (1983). Technical services research needs for the 1990s. Library Resources and Technical Services, 27(2), 199–210.VeanerA. B.1983Technical services research needs for the 1990s272199210Search in Google Scholar
Wiig, K. W. (1986). AI--management's newest tool. Management Review, 75(8), 24.WiigK. W.1986AI--management's newest tool75824Search in Google Scholar
Winters, L. C. (1991). Artificial intelligence and expert systems in marketing. Marketing Research, 3(1), 72–74.WintersL. C.1991Artificial intelligence and expert systems in marketing317274Search in Google Scholar
Wong, H. K. T., & Mylopoulos, J. (1977). Two views of data semantics: A survey of data models in artificial intelligence and database management. INFOR, 15(3), 344–383. https://doi:10.1080/03155986.1977.11731681WongH. K. T.MylopoulosJ.1977Two views of data semantics: A survey of data models in artificial intelligence and database management153344383https://doi:10.1080/03155986.1977.1173168110.1080/03155986.1977.11731681Search in Google Scholar
Wziątek-Staśko, A. (2021). Artificial intelligence is the creator of a new dimension of human capital management. In I. Mendryk (ed.) Human resources management in the new physical and social space (pp. 18–32). Difin.Wziątek-StaśkoA.2021Artificial intelligence is the creator of a new dimension of human capital managementInMendrykI.(ed.)1832Difin.Search in Google Scholar
Xing, Y., Zheng, Z., Sun, Y., & Agha Alikhani, M. (2021). A review on machine learning application in biodiesel production studies. International Journal of Chemical Engineering, 2021, Article 2154258. https://doi:10.1155/2021/2154258XingY.ZhengZ.SunY.Agha AlikhaniM.2021A review on machine learning application in biodiesel production studies021, Article 2154258. https://doi:10.1155/2021/215425810.1155/2021/2154258Search in Google Scholar
Xu, Y., Pan, M., Huang, J., Zhou, W., Qiu, X., & Chen, Y. H. (2022). Estimation-based and dropout-dependent control design for aeroengine distributed control system with packet dropout. International Journal of Aerospace Engineering, 2022, Article 8658704. https://doi:10.1155/2022/8658704XuY.PanM.HuangJ.ZhouW.QiuX.ChenY. H.2022Estimation-based and dropout-dependent control design for aeroengine distributed control system with packet dropout2022, Article 8658704. https://doi:10.1155/2022/865870410.1155/2022/8658704Search in Google Scholar
Yannakoudakis, E. J., & Fawthrop, D. (1983). An intelligent spelling error corrector. Information Processing and Management, 19(2), 101–108. https://doi.org/10.1016/0306-4573(83)90046-8YannakoudakisE. J.FawthropD.1983An intelligent spelling error corrector192101108https://doi.org/10.1016/0306-4573(83)90046-810.1016/0306-4573(83)90046-8Search in Google Scholar
Yau, N.-J., & Yang, J.-B. (1998). Case-based reasoning in construction management. Computer-Aided Civil & Infrastructure Engineering, 13(2), 143–150. https://doi.org/10.1111/0885-9507.00094YauN.-J.YangJ.-B.1998Case-based reasoning in construction management132143150https://doi.org/10.1111/0885-9507.0009410.1111/0885-9507.00094Search in Google Scholar
Yazici, H., & Benjamin, C. (1994). AI-based generation of production engineering labor standards. IEEE Transactions on Engineering Management, 41(3), 302–309. https://doi:10.1109/17.310145YaziciH.BenjaminC.1994AI-based generation of production engineering labor standards413302309https://doi:10.1109/17.31014510.1109/17.310145Search in Google Scholar
Yu, Z., Liang, Z., & Xue, L. (2022). A data-driven global innovation system approach and the rise of China's artificial intelligence industry. Regional Studies, 56(4), 619–629. https://doi:10.1080/00343404.2021.1954610YuZ.LiangZ.XueL.2022A data-driven global innovation system approach and the rise of China's artificial intelligence industry564619629https://doi:10.1080/00343404.2021.195461010.1080/00343404.2021.1954610Search in Google Scholar
Yubo, C. (2021). Innovation of enterprise financial management based on machine learning and artificial intelligence technology. Journal of Intelligent & Fuzzy Systems, 40(4), 6767–6778. Httpa://doi:10.3233/JIFS-189510YuboC.2021Innovation of enterprise financial management based on machine learning and artificial intelligence technology40467676778Httpa://doi:10.3233/JIFS-18951010.3233/JIFS-189510Search in Google Scholar
Zhao, Y., & Zhang, H. (2021). Application of machine learning and rule scheduling in a job-shop production control system. International Journal of Simulation Modelling (IJSIMM), 20(2), 410–421. https://doi:10.2507/IJSIMM20-2-CO10ZhaoY.ZhangH.2021Application of machine learning and rule scheduling in a job-shop production control system202410421https://doi:10.2507/IJSIMM20-2-CO1010.2507/IJSIMM20-2-CO10Search in Google Scholar
Zieliński, A. (2019). Artificial intelligence – development opportunities and threats. Telecommunications Review + Telecommunications News, 8, 734–739. https://doi:10.15199/59.2019.8.3ZielińskiA.2019Artificial intelligence – development opportunities and threats8734739https://doi:10.15199/59.2019.8.3Search in Google Scholar