منابع
روحانی، س. و ربیعی ساوجی، س. (1395). «مدل ارزیابی موفقیت ابزارهای هوش کسبوکار». مطالعات مدیریت فناوری اطلاعات. 4(15)، 29-64
محقر، ع.، لوکس، ک، حسینی، ف. و منشی آصف، ع. (1387). «کاربرد هوش تجاری بهعنوان یک تکنولوژی اطلاعات استراتژیک در بانکداری: بازرسی و کشف تقلب». نشریۀ مدیریت فناوری اطلاعات، 1(1)، 105-120.
ابدالی، ع.، یاوری، ع. و بشارتی ا. (1395). «بررسی تأثیر انواع هوش سازمانی، تجاری و رقابتی بر عملکرد سازمانی (مورد مطالعه: بانک قوامین)». مجلۀ توسعۀ مدیریت منابع انسانی و پشتیبانی، 41.
Armugam, M. and Devadas. J. )2010(. “Object Oriented Intelligent Multi-Agent System Data Cleaning Architecture to clean Preference based Text Data”. International Journal of Computer Applications 9(8), 6234-6247.
Arnotta, D., Lizamab, F. and Songa, Y. (2017). “Patterns of business intelligence systems use in organizations”. Journal of Decision Support Systems, 97(1), 58-68.
Azeved, A. and Santos, M. F. (2012). “Binding Data Mining to Final Business Users of Business Intelligence Systems”. In Proceedings of the First International Conference on Intelligent Systems and Applications, 7-12.
Bostrom, N. (2014). Super Intelligence: Paths, Dangers, Strategies, Edition: 1 st, Oxford University Press.
Ferranti, J. M., Langman, M. K., McCall, J. and Asif, A. (2009). “Bridging the gap: leveraging business intelligence tools in support of patient safety and financial effectiveness”. Journal of the American Medical Informatics Association, 5(1), 136–143.
Han, J., Kamber, M. and Pei, J. (2011). Data Mining: Concepts and Techniques. 3rd edition. Elsevier: Philadelphia.
Herschel, R.T. and Jones, N.E. (2005). “Knowledge management and business intelligence: the importance of integration.” Journal of Knowledge Management, 9(4), 45-55.
JINPON, p. g., ASINEE, M. J. and ASINEE, K. J. (2011). “Business Intelligence and its Applications in the Public Healthcare System”. Walailak J Sci & Tech, 8(2), 30–44.
Kaplan, J. (2007). “Data mining as a service: the prediction is not in the box”. DM Review Magazine, 17(7), 12-14.
King, J. (2005). “Better decisions”. Computer world, 39(38), 48-9.
Lonnqvist, A. and V., Pirttimaki (2006). “The Measurement of Business Intelligence”. Information Systems Management, 23(1), 32-40.
Moghaddasi, H., Hoseini, A., asadi, F. and Jahanbakhs. M. (2012). “Data Mining and Its Applications in HealthCare”. Health Information Management. 9(2), 297-304.
Olszak, C. M. and Ziemba, E. (2007). “Approach to Building and Implementing Business Intelligence Systems”. Interdisciplinary Journal of Information, Knowledge, and Management, 2(1), 135–148.
Pechenizkiy, M., Puuronen, S. and Tsymba, A. (2005). “Why data mining research does not contribute to business”. Data Mining for Business Workshop,1(2), 67-71.
Pereira, R. H., Azevedo, A. and Castilho, O. (2007). “Secretaria On-Line From Iscap: A Case of Innovation”. In Proceedings of the IADIS International Conference, 301-305.
Richardson, J., Schlegel, K., and Hostmann, B. (2009). “Magic Quadrant for Business Intelligence Platforms”. Gartner Report, 1(1), 2-32.
Russell, S.J. and Norvig, p. (2005). Artificial intelligence a modern approach. Prentice Hall International Englewood Cliffs. NJ.
Sawka, K. (2000). “Are We Valuable?”. Competitive Intelligence Magazine, 3(2).
Shabestari, F. and Ja'farzadeh, R. (2011). “Data mining in Business Intelligence”. In Proceedings of the first Conference of the new approach in computer engineering and information technology. 1(1), 23-29.
.
Venkatadri, M., Hanuma, G. and Manjunath. G. (2010). “A Novel Business Intelligence System Framework”. Universal Journal of Computer Science and Engineering Technology, 1(2), 112-116.
Wager, K.A., Lee, F.W. and Glaser, J.P. (2005). “Managing Health Care Information Systems: A Practical Approach for Health Care Executives”. John Wiley & Sons, New Jersey.
Wang, H., Wang, S. (2008). “A knowledge management approach to data mining process for business intelligence”. Industrial Management & Data Systems, 108(5), 622-634.
Wang, J., Hu, X. and Zu., D. (2007). “Diminishing downsides of data mining”. InternationalJournal of Business Intelligence and Data Mining, 2(2), 96-177.