Smart Agent and it’s effect on Artificial Intelligence : A Review Study

Authors

  • Renas Rajab Asaad Department of Computer Science, Nawroz University, Duhok, Kurdistan Region of Iraq
  • Veman Ashqi Saeed Department of Information Technology Management, Duhok Polytechnic University, Duhok, KRG – Iraq
  • Revink Masud Abdulhakim Department of Computer Science, Nawroz University, Duhok, KRG – Iraq

DOI:

https://doi.org/10.46291/ICONTECHvol5iss4pp1-9

Keywords:

Artificial Intelligence, Swarm Intelligence, Smart Agent

Abstract

Current networking technologies, as well as the ready availability of large quantities of data and knowledge on the Internet-based Infosphere, offer tremendous opportunities for providing more abundant and reliable information to decision makers and decision support systems. The use of the Internet has increased at a breakneck pace. Some prevailing features of the Infosphere, however, have hindered successful use of the Internet by humans or decision support machine systems. To begin with, the information available on the internet is disorganized, multi-modal, and spread around the globe on server pages. Second, every day, the number and variety of data sources and services grows dramatically. In addition, the availability, type, and dependability of information services are all changing all the time. Third, the same piece of knowledge can be obtained from a number of different sources. Fourth, due to the complex existence of information sources and possible information updating and maintenance issues, information is vague and probably incorrect. As a result, collecting, filtering, evaluating, and using information in problem solving is becoming increasingly difficult for a human or computer device. As a consequence, identifying information sources, accessing, filtering, and incorporating data in support of decision-making, as well as managing information retrieval and problem-solving efforts of information sources and decision-making processes, has become a critical challenge. To fix this issue, the idea of "Intelligent Software Agents" has been suggested. Although a precise definition of an intelligent agent is still a work in progress, the current working definition is that Intelligent Software Agents are programs that act on behalf of their human users to perform laborious information gathering tasks such as locating and accessing information from various on-line information sources, resolving inconsistencies in the retrieved information, filtering out irrelevant data.

References

Russell, S., & Norvig, P. (2002). Artificial intelligence: a modern approach.

Asaad, R. R., Ahmad, H. B., & Ali, R. I. (2020). A Review: Big Data Technologies with Hadoop Distributed Filesystem and Implementing M/R. Academic Journal of Nawroz University, 9(1), 25-33.

Mitchell, R. S., Michalski, J. G., & Carbonell, T. M. (2013). An artificial intelligence approach. Berlin: Springer.

Marashdih, A. W., Zaaba, Z. F., & Almufti, S. M. (2018). The Problems and Challenges of Infeasible Paths in Static Analysis. International Journal of Engineering & Technology, 7(4.19), 412-417.

Almufti, S. M., & Shaban, A. A. (2018). U-Turning Ant Colony Algorithm for Solving Symmetric Traveling Salesman Problem. Academic Journal of Nawroz University, 7(4), 45-49.

Asaad, R. R. (2014). An Investigation of the Neuronal Dynamics Under Noisy Rate Functions (Doctoral dissertation, Eastern Mediterranean University (EMU)-Doğu Akdeniz Üniversitesi (DAÜ)).

Almufti, S., Asaad, R., & Salim, B. (2018). Review on Elephant Herding Optimization Algorithm Performance in Solving Optimization Problems. International Journal of Engineering & Technology, 7, 6109-6114.

Karaboga, D., & Akay, B. (2009). A survey: algorithms simulating bee swarm intelligence. Artificial intelligence review, 31(1-4), 61.

Asaad, R. R., & Abdulnabi, N. L. (2018). Using Local Searches Algorithms with Ant Colony Optimization for the Solution of TSP Problems. Academic Journal of Nawroz University, 7(3), 1-6.

Almufti, S., Marqas, R., & Asaad, R. (2019). Comparative study between elephant herding optimization (EHO) and U-turning ant colony optimization (U-TACO) in solving symmetric traveling salesman problem (STSP). Journal Of Advanced Computer Science & Technology, 8(2), 32.

Asaad, R. R., & Ali, R. I. (2019). Back Propagation Neural Network (BPNN) and sigmoid activation function in multi-layer networks. Academic Journal of Nawroz University, 8(4), 216-221.

Yuen, H. C. (2006). U.S. Patent No. 7,003,792. Washington, DC: U.S. Patent and Trademark Office.

Asaad, R. R. (2019). Güler and Linaro et al Model in an Investigation of the Neuronal Dynamics using noise Comparative Study. Academic Journal of Nawroz University, 8(3), 10-16.

Kennedy, J. (2006). Swarm intelligence. In Handbook of nature-inspired and innovative computing (pp. 187-219). Springer, Boston, MA.

Almufti, S., Marqas, R., & Ashqi, V. (2019). Taxonomy of bio-inspired optimization algorithms. Journal Of Advanced Computer Science & Technology, 8(2), 23.

Abdulrahman, S. M. (2017). Using Swarm Intelligence for solving NP-Hard Problems. Academic Journal of Nawroz University, 6(3), 46-50.

Sutton, J. (1997). One smart agent. The Rand Journal of Economics, 605-628.

Asaad, R. R., Sulaiman, Z. A., & Abdulmajeed, S. S. (2019). Proposed System for Education Augmented Reality Self English Learning. Academic Journal of Nawroz University, 8(3), 27-32.

Marqas, R. B., Almufti, S. M., Othman, P. S., & Abdulrahma, C. M. Evaluation of EHO, U-TACO and TS Metaheuristics algorithms in Solving TSP.

Zebari, A. Y., Almufti, S. M., & Abdulrahman, C. M. Bat algorithm (BA): review, applications and modifications.

Asaad, R. R., & Abdulhakim, R. M. (2021). The Concept of Data Mining and Knowledge Extraction Techniques. Qubahan Academic Journal, 1(2), 17-20.

Nilsson, N. J. (2014). Principles of artificial intelligence. Morgan Kaufmann.

Cli, D. (1997). Minimal-intelligence agents for bargaining behaviors in market-based environments. Hewlett-Packard Labs Technical Reports.

Poole, D. L., & Mackworth, A. K. (2010). Artificial Intelligence: foundations of computational agents. Cambridge University Press.

Russell, S., & Norvig, P. (2002). Artificial intelligence: a modern approach.

Huhns, M. N., & Singh, M. P. (Eds.). (1998). Readings in agents. Morgan Kaufmann.

Pavón, J., & Corchado, J. (2004). Agents for the web. International journal of Web engineering and technology, 1(4), 393-396.

Asaad, R. R. (2021). Review on Deep Learning and Neural Network Implementation for Emotions Recognition. Qubahan Academic Journal, 1(1), 1-4.

Othman, P. S., Ihsan, R. R., Marqas, R. B., & Almufti, S. M. (2020). Image Processing Techniques for Identifying Impostor Documents Through Digital Forensic Examination. Image Processing Techniques, 62(04).

Downloads

Published

2021-12-28

How to Cite

Asaad, R. R., Ashqi Saeed, V., & Masud Abdulhakim, R. (2021). Smart Agent and it’s effect on Artificial Intelligence : A Review Study. ICONTECH INTERNATIONAL JOURNAL, 5(4), 1–9. https://doi.org/10.46291/ICONTECHvol5iss4pp1-9

Issue

Section

Articles