Design of intelligent multi-agent systems : human-centredness, architectures, learnings and adaptation
著者
書誌事項
Design of intelligent multi-agent systems : human-centredness, architectures, learnings and adaptation
(Studies in fuzziness and soft computing, v. 162)
Springer, c2005
大学図書館所蔵 件 / 全4件
-
該当する所蔵館はありません
- すべての絞り込み条件を解除する
注記
Includes bibliographical references
内容説明・目次
内容説明
There is a tremendous interest in the design and applications of agents in virtually every area including avionics, business, internet, engineering, health sciences and management. There is no agreed one definition of an agent but we can define an agent as a computer program that autonomously or semi-autonomously acts on behalf of the user. In the last five years transition of intelligent systems research in general and agent based research in particular from a laboratory environment into the real world has resulted in the emergence of several phenomenon. These trends can be placed in three catego ries, namely, humanization, architectures and learning and adapta tion. These phenomena are distinct from the traditional logic centered approach associated with the agent paradigm. Humaniza tion of agents can be understood among other aspects, in terms of the semantics quality of design of agents. The need to humanize agents is to allow practitioners and users to make more effective use of this technology. It relates to the semantic quality of the agent design. Further, context-awareness is another aspect which has as sumed importance in the light of ubiquitous computing and ambi ent intelligence. The widespread and varied use of agents on the other hand has cre ated a need for agent-based software development frameworks and design patterns as well architectures for situated interaction, nego tiation, e-commerce, e-business and informational retrieval. Fi- vi Preface nally, traditional agent designs did not incorporate human-like abilities of learning and adaptation.
目次
1. Humanization of soft computing agents.- 2. Software agents for ubiquitous computing.- 3. Agents-based knowledge logistics.- 4. Architectural styles and patterns for multi-agent systems.- 5. Design and behavior of a massive organization of agents.- 6. Developing agent-based applications with JADE.- 7. A collective can do better.- 8. Coordinating multi-agent assistants with an application by means of computational reflection.- 9. Learning by exchanging advice.- 10. Adaptation and mutation in multi-agent systems and beyond.- 11. Intelligent action acquisition for animated learning agents.- 12. Using stationary and mobile agents for information retrieval and e-commerce.
「Nielsen BookData」 より