Book Chapter10.4018/978-1-59904-849-9.CH008
Agent-Based Intelligent System Modeling
Zaiyong Tang,Xiaoyu Huang,Kallol Bagchi +2 more
- 01 Jan 2009
- pp 51-57
5
TL;DR: Agent-based modeling is well suited for intelligent systems research as it offers a platform to study systems behavior based on individual actions and interactions and discusses strengths and weaknesses of ABM.
read more
Abstract: An intelligent system is a system that has, similar to a living organism, a coherent set of components and subsystems working together to engage in goal-driven activities. In general, an intelligent system is able to sense and respond to the changing environment; gather and store information in its memory; learn from earlier experiences; adapt its behaviors to meet new challenges; and achieve its pre-determined or evolving objectives. The system may start with a set of predefined stimulusresponse rules. Those rules may be revised and improved through learning. Anytime the system encounters a situation, it evaluates and selects the most appropriate rules from its memory to act upon. Most human organizations such as nations, governments, universities, and business firms, can be considered as intelligent systems. In recent years, researchers have developed frameworks for building organizations around intelligence, as opposed to traditional approaches that focus on products, processes, or functions (e.g., Liang, 2002; Gupta and Sharma, 2004). Today’s organizations must go beyond traditional goals of efficiency and effectiveness; they need to have organizational intelligence in order to adapt and survive in a continuously changing environment (Liebowitz, 1999). The intelligent behaviors of those organizations include monitoring of operations, listening and responding to stakeholders, watching the markets, gathering and analyzing data, creating and disseminating knowledge, learning, and effective decision making. Modeling intelligent systems has been a challenge for researchers. Intelligent systems, in particular, those involve multiple intelligent players, are complex systems where system dynamics does not follow clearly defined rules. Traditional system dynamics approaches or statistical modeling approaches rely on rather restrictive assumptions such as homogeneity of individuals in the system. Many complex systems have components or units which are also complex systems. This fact has significantly increased the difficulty of modeling intelligent systems. Agent-based modeling of complex systems such as ecological systems, stock market, and disaster recovery has recently garnered significant research interest from a wide spectrum of fields from politics, economics, sociology, mathematics, computer science, management, to information systems. Agent-based modeling is well suited for intelligent systems research as it offers a platform to study systems behavior based on individual actions and interactions. In the following, we present the concepts and illustrate how intelligent agents can be used in modeling intelligent systems. We start with basic concepts of intelligent agents. Then we define agent-based modeling (ABM) and discuss strengths and weaknesses of ABM. The next section applies ABM to intelligent system modeling. We use an example of technology diffusion for illustration. Research issues and directions are discussed next, followed by conclusions.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
Modeling the viability of the free-ranging cheetah population in Namibia: an object-oriented Bayesian network approach
Sandra Johnson,Laurie Marker,Kerrie Mengersen,Chris H. Gordon,Jörg Melzheimer,Anne Schmidt-Küntzel,Matti T. Nghikembua,Ezequiel Fabiano,Josephine Henghali,Bettina Wachter +9 more
TL;DR: In this paper, the authors describe an integrated, parallel modeling process followed during a BN modeling workshop held in Namibia to combine expert knowledge and data about free-ranging cheetahs.
32
Retrieval of Bio-Geophysical Parameters from Remotely Sensing Data by Using Bayesian Methodology
C. Notarnicola
- 01 Jan 2007
TL;DR: Mittal et al. as mentioned in this paper introduced the use of Bayesian methodology for inversion purposes: the extraction of bio-geophysical parameters from remotely sensed data, such as different polarizations, frequencies, and sensors are fundamental to the development of operationally useful inversion systems.
7
Information Customization using SOMSE: A Self-Organizing Map Based Approach
Mohamed Hamdi
- 01 Jan 2010
TL;DR: In an attempt to circumvent the problems of search engines and contribute to resolving the problem of information overload over the Web, the authors propose SOMSE, a system that improves the quality of Web search by combining meta-search and unsupervised learning.
5
Explorative Assessment of Internet Hacking: An Agent-Based Modeling Approach
TL;DR: An agent-based model (ABM) is built to study the dynamics of Internet hacking and explores the interactions of various types of Internet users along with their hacking propensity and the resulting hacking trends.
1
Integrating machine learning in military intelligence process: study of futuristic approaches towards human-machine collaboration
TL;DR: In this article , Ahmed et al. proposed an integration of Machine Learning (ML) in MI data collection and analysis through supervised, unsupervised, reinforcement and deep learning approaches where degree of automation is decided through human-in-the loop and human-out-of-the-loop method.
References
Intelligent Agents: Theory and Practice
TL;DR: Agent theory is concerned with the question of what an agent is, and the use of mathematical formalisms for representing and reasoning about the properties of agents as discussed by the authors ; agent architectures can be thought of as software engineering models of agents; and agent languages are software systems for programming and experimenting with agents.
Agent-based modeling: Methods and techniques for simulating human systems
TL;DR: Agent-based modeling is a powerful simulation modeling technique that has seen a number of applications in the last few years, including applications to real-world business problems, and its four areas of application are discussed by using real- world applications.
•Book
Encyclopedia of Artificial Intelligence
Stuart C. Shapiro
- 01 Jan 1992
TL;DR: This reference work compasses the variable approaches to Artificial Intelligence in 267 articles written by 205 experts and clarifies and corrects misinterpretations and provides a proper understanding of Artificial Intelligence.
1.6K
FROM FACTORS TO ACTORS: Computational Sociology and Agent-Based Modeling
Michael W. Macy,Robert Willer +1 more
TL;DR: Agent-based models (ABMs) as mentioned in this paper have been widely used in computational sociology to model social life as interactions among adaptive agents who influence one another in response to the influence they receive, such as diffusion of information, emergence of norms, coordination of conventions or participation in collective action.
•Book
Complex adaptive systems
John H. Holland
- 20 Sep 1993
TL;DR: The authors are entering a new era in their ability to understand and foster systems of crucial interest to humankind that have so far defied accurate simulation by computer, and scientists have begun to extract a common kernel from these systems.
1.2K
Related Papers (5)
Mariam Sahee Al-Abraheemee
- 01 Jan 2009
Y C Alicia Tang,Clarence Kuna +1 more
Haibin Zhu
- 15 Jun 2006
Nikhil Ichalkaranje,Lakhmi C. Jain,Rajiv Khosla +2 more
- 01 Jan 2005