تعداد نشریات | 418 |
تعداد شمارهها | 9,997 |
تعداد مقالات | 83,560 |
تعداد مشاهده مقاله | 77,801,188 |
تعداد دریافت فایل اصل مقاله | 54,843,848 |
Big Data Analytics and Cognitive Computing: A Review Study | ||
Journal of Business Data Science Research | ||
دوره 1، شماره 1، دی 2021، صفحه 23-32 اصل مقاله (765.94 K) | ||
نوع مقاله: Original Article | ||
نویسندگان | ||
Samaneh Sechin Matoori1؛ Nasim Nourafza* 2 | ||
1Department of Managment, Najafabad Branch, Islamic Azad University, Najafabad, Iran. | ||
2Faculty of Computer Engineering, Najafabad Branch, Islamic Azad University, Najafabad, Iran. | ||
چکیده | ||
With the development of the Internet of Things and Artificial Intelligence algorithms, various human-centered smart systems are proposed to provide higher quality services such as smart healthcare, emotional interaction, and automated driving. Cognitive computing is an important technology for the development of these systems according to big data analysis. Analyzing big data by humans is a long process and cognitive computing can be used to process these large volumes of data. Cognitive computing is the concept of observation, interpretation, evaluation, and decision that are mapped to five features of big data that is volume, variety, veracity, velocity, and value. However, the perspectives expressed on these features are yet to be widely explored in the existing literature. The aim of this manuscript is to review the links between big data and cognitive computing in past, present, and future studies. Surveys show that the major emphasis is the creation of value by the process of data to information to knowledge to wisdom. Moreover, we present a conceptual model for linking cognitive computing features using the benefits of big data that can help to better understand the complexity of data deluge. | ||
کلیدواژهها | ||
Big Data Analysis؛ Cognitive Computing؛ Artificial Intelligence؛ Human-Centered Smart Systems؛ Knowledge Extraction | ||
مراجع | ||
Aggarwal, L., Chahal, D., & Kharb, L. (2020). Pruning Deficiency of Big Data Analytics using Cognitive Computing. 2020 International Conference on Emerging Trends in Communication, Control and Computing (ICONC3), Bumblauskas, D., Nold, H., Bumblauskas, P., & Igou, A. (2017). Big data analytics: transforming data to action. Business Process Management Journal. Changchit, C., & Chuchuen, C. (2018). Cloud computing: An examination of factors impacting users’ adoption. Journal of Computer Information Systems, 58(1), 1-9. Chen, M., Herrera, F., & Hwang, K. (2018). Cognitive computing: architecture, technologies and intelligent applications. Ieee Access, 6, 19774-19783. Chen, M., Li, W., Fortino, G., Hao, Y., Hu, L., & Humar, I. (2019). A dynamic service migration mechanism in edge cognitive computing. ACM Transactions on Internet Technology (TOIT), 19(2), 1-15. Chen, Y., Argentinis, J. E., & Weber, G. (2016). IBM Watson: how cognitive computing can be applied to big data challenges in life sciences research. Clinical therapeutics, 38(4), 688-701. Coccoli, M., Maresca, P., & Molinari, A. (2020). Big Data, Cognitive Computing, and the Future of Learning Management Systems. In Applied Degree Education and the Future of Work (pp. 329-340). Springer. Coccoli, M., Maresca, P., & Stanganelli, L. (2017). The role of big data and cognitive computing in the learning process. Journal of Visual Languages & Computing, 38, 97-103. Daniel, J., Sargolzaei, A., Abdelghani, M., Sargolzaei, S., & Amaba, B. (2017). Blockchain technology, cognitive computing, and healthcare innovations. J. Adv. Inf. Technol, 8(3). Dessì, D., Fenu, G., Marras, M., & Recupero, D. R. (2019). Bridging learning analytics and cognitive computing for big data classification in micro-learning video collections. Computers in Human Behavior, 92, 468-477. DeVaujany, F.-X., Carton, S., Mitev, N., & Romeyer, C. (2014). Applying and theorizing institutional frameworks in IS research. Information Technology & People. Diebold, F. X., Cheng, X., Diebold, S., Foster, D., Halperin, M., Lohr, S., Mashey, J., Nickolas, T., Pai, M., & Pospiech, M. (2012). A Personal Perspective on the Origin (s) and Development of “Big Data”: The Phenomenon, the Term, and the Discipline∗. Duan, Y., Edwards, J. S., & Dwivedi, Y. K. (2019). Artificial intelligence for decision making in the era of Big Data–evolution, challenges and research agenda. International Journal of Information Management, 48, 63-71. Graessley, S., Suler, P., Kliestik, T., & Kicova, E. (2019). Industrial big data analytics for cognitive internet of things: wireless sensor networks, smart computing algorithms, and machine learning techniques. Analysis and Metaphysics, 18, 23-29. Gupta, S., Kar, A. K., Baabdullah, A., & Al-Khowaiter, W. A. (2018). Big data with cognitive computing: A review for the future. International Journal of Information Management, 42, 78-89. Haldorai, A., Ramu, A., & Chow, C.-O. (2019). Big data innovation for sustainable cognitive computing. Mobile networks and applications, 24(1), 221-223. Jimenez-Marquez, J. L., Gonzalez-Carrasco, I., Lopez-Cuadrado, J. L., & Ruiz-Mezcua, B. (2019). Towards a big data framework for analyzing social media content. International Journal of Information Management, 44, 1-12. Kelly, J. E. (2015). Computing, cognition and the future of knowing. Whitepaper, IBM Reseach, 2. Khalil, K., Asgher, U., Ayaz, Y., Ahmad, R., Ruiz, J. A., Oka, N., Ali, S., & Sajid, M. (2020). Cognitive Computing for Human-Machine Interaction: An IBM Watson Implementation. International Conference on Applied Human Factors and Ergonomics. Kolm, P. N., Tütüncü, R., & Fabozzi, F. J. (2014). 60 Years of portfolio optimization: Practical challenges and current trends. European Journal of Operational Research, 234(2), 356-371. Kreps, D., & Kimppa, K. (2015). Theorising Web 3.0: ICTs in a changing society. Information Technology & People. Krzanich, B. (2016). The Intelligence Revolution–Intel’s AI Commitments to deliver a better world. Intel Newsroom, 17. Lin, K., Li, C., Tian, D., Ghoneim, A., Hossain, M. S., & Amin, S. U. (2019). Artificial-intelligence-based data analytics for cognitive communication in heterogeneous wireless networks. IEEE Wireless Communications, 26(3), 83-89. Lytras, M., Visvizi, A., Damiani, E., & Mathkour, H. (2019). The cognitive computing turn in education: prospects and application, Computers in Human Behavior, 92, 446-449. Lytras, M., Visvizi, A., Zhang, X., & Aljohani, N. R. (2020). Cognitive computing, Big Data Analytics and data driven industrial marketing, Industrial Marketing Management, 90, 663-666. Pala, O. (2016). A Hybrid Multi-Objective Optimization Approach For Portfolio Selection Problem. International Strategic Research Congress Proceedings Book, Park, J.-h., Salim, M. M., Jo, J. H., Sicato, J. C. S., Rathore, S., & Park, J. H. (2019). CIoT-Net: a scalable cognitive IoT based smart city network architecture. Human-centric Computing and Information Sciences, 9(1), 1-20. Raghupathi, W., & Raghupathi, V. (2014). Big data analytics in healthcare: promise and potential. Health information science and systems, 2(1), 1-10. Ragini, J. R., Anand, P. R., & Bhaskar, V. (2018). Big data analytics for disaster response and recovery through sentiment analysis. International Journal of Information Management, 42, 13-24. Sangaiah, A. K., Goli, A., Tirkolaee, E. B., Ranjbar-Bourani, M., Pandey, H. M., & Zhang, W. (2020). Big data-driven cognitive computing system for optimization of social media analytics. Ieee Access, 8, 82215-82226. Schmidt, E. (2010). Every 2 Days We Create As Much Information As We Did Up To 2003. Retrieved 2020 from https://techcrunch.com/2010/08/04/schmidt-data/ Tian, D., Zhou, J., Sheng, Z., & Leung, V. C. (2016). Robust energy-efficient MIMO transmission for cognitive vehicular networks. IEEE Transactions on Vehicular Technology, 65(6), 3845-3859. ur Rehman, M. H., Chang, V., Batool, A., & Wah, T. Y. (2016). Big data reduction framework for value creation in sustainable enterprises. International Journal of Information Management, 36(6), 917-928. Verma, S., & Bhattacharyya, S. S. (2017). Perceived strategic value-based adoption of big data analytics in emerging economy. Journal of Enterprise Information Management. Wamba, S. F., Akter, S., Edwards, A., Chopin, G., & Gnanzou, D. (2015). How ‘big data’can make big impact: Findings from a systematic review and a longitudinal case study. International Journal of Production Economics, 165, 234-246. Wan, J., Li, J., Hua, Q., Celesti, A., & Wang, Z. (2020). Intelligent equipment design assisted by Cognitive Internet of Things and industrial big data. Neural Computing and Applications, 32(9), 4463-4472. Wang, H.-F., & Chiu, M.-C. (2020). Ebook presentation styles and their impact on the learning of children. Proceedings of the Interaction Design and Children Conference, Wu, P., Lu, Z., Zhou, Q., Lei, Z., Li, X., Qiu, M., & Hung, P. C. (2019). Bigdata logs analysis based on seq2seq networks for cognitive Internet of Things. Future Generation Computer Systems, 90, 477-488. Xu, X., Liu, Q., Luo, Y., Peng, K., Zhang, X., Meng, S., & Qi, L. (2019). A computation offloading method over big data for IoT-enabled cloud-edge computing. Future Generation Computer Systems, 95, 522-533. Zhang, Y., & Abbas, H. (2019). Cognitive Internet of Things assisted by cloud computing and big data, Future Generation Computer Systems, 90, 477-488. Zhang, Y., Ma, X., Wan, S., Abbas, H., & Guizani, M. (2018). CrossRec: Cross-domain recommendations based on social big data and cognitive computing. Mobile networks and applications, 23(6), 1610-1623. | ||
آمار تعداد مشاهده مقاله: 557 تعداد دریافت فایل اصل مقاله: 751 |