AbstractLearning by an exchange of knowledge and experiences enables humans to act efficiently in a very dynamic environment. Thus, it would be highly desirable to enable intelligent distributed systems to behave in a way which follows that biological archetype. We believe that knowledge exchange will become increasingly important in many application areas such as intrusion detection, driver assistance, or robotics. Constituents of a distributed system such as software agents, cars equipped with smart sensors, or intelligent robots may learn from each other by exchanging knowledge in form of classification rules, for instance. This article proposes techniques for the exchange of classification rules that represent uncertain knowledge. For t...
Abstract: "One of the interesting characteristics of multi-agent problem solving in distributed arti...
The issue of information sharing and exchanging is one of the most important issues in the areas of ...
Expert systems have traditionally captured the explicit knowledge of a single expert or source of ex...
AbstractLearning by an exchange of knowledge and experiences enables humans to act efficiently in a ...
Intelligence and Knowledge play more and more important roles in building complex intelligent system...
In this paper, we present a general machine learning approach to the problem of deciding when to sha...
To obtain unpredictable social interaction between autonomous agents in real-time environments, we p...
Just as cooperation between human experts is important when solving complex problems, so too is coop...
In the context of industry 4.0, the data generated by the production processes and collected by robo...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Abstract:- This paper considers the transfer of knowledge expressed in the form of a collection of f...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
In this paper we introduce a form of cooperation among agents based on exchanging sets of rules. In ...
An expert set of interaction rules may help to guide leaderless, transient teams of individuals that...
Abstract — Collaboration among IDSs allows users to benefit from the collective knowledge and inform...
Abstract: "One of the interesting characteristics of multi-agent problem solving in distributed arti...
The issue of information sharing and exchanging is one of the most important issues in the areas of ...
Expert systems have traditionally captured the explicit knowledge of a single expert or source of ex...
AbstractLearning by an exchange of knowledge and experiences enables humans to act efficiently in a ...
Intelligence and Knowledge play more and more important roles in building complex intelligent system...
In this paper, we present a general machine learning approach to the problem of deciding when to sha...
To obtain unpredictable social interaction between autonomous agents in real-time environments, we p...
Just as cooperation between human experts is important when solving complex problems, so too is coop...
In the context of industry 4.0, the data generated by the production processes and collected by robo...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
Abstract:- This paper considers the transfer of knowledge expressed in the form of a collection of f...
The emergence of Multiagent systems brought new challenges to the field of Machine Learning, as it d...
In this paper we introduce a form of cooperation among agents based on exchanging sets of rules. In ...
An expert set of interaction rules may help to guide leaderless, transient teams of individuals that...
Abstract — Collaboration among IDSs allows users to benefit from the collective knowledge and inform...
Abstract: "One of the interesting characteristics of multi-agent problem solving in distributed arti...
The issue of information sharing and exchanging is one of the most important issues in the areas of ...
Expert systems have traditionally captured the explicit knowledge of a single expert or source of ex...