Many researchers and developers of knowledge based systems (KBS) have been incorporating the notion of context. However, they generally treat context as a static entity, neglecting many connectionists’ work in learning hidden and dynamic contexts, which aids generalization. This paper presents a method that models hidden context within a symbolic domain achieving a level of generalisation. Results indicate that the method can learn the information that experts have difficulty providing by generalising the captured knowledge
The use of statistical measures to constrain generalisation in learning systems has proved successfu...
Abstract. Contextual knowledge reasoning requiresprecise but flexible fonnalisms in such a way that,...
In this paper, we investigate the use of contextual knowledge in order to simplify knowledge represe...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
Abstract. Increasingly, researchers and developers of knowledge based systems (KBS) have been incorp...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
Increasingly, researchers and developers of knowledge based systems (KBS) have been attempting to i...
The context paradigm emerges from different areas of Artificial Intelligence. However, while signifi...
This paper discusses the uses of context in knowledge representation and reasoning (KRR). We propose...
The notion of context appears in computer science, as well as in several other disciplines, in vario...
In the recent Computer Science literature, contexts have been proposed mainly to formalize context d...
Context is the challenge for the coming years in artificial intelligence. In the companion paper [8]...
. Concept drift due to hidden changes in context complicates learning in many domains including fin...
It has been recognized that AI programs suffer from a lack of generality, the first gross symptom be...
The notion of `context` is called to account for a multifarious variety of phenomena in philosophy o...
The use of statistical measures to constrain generalisation in learning systems has proved successfu...
Abstract. Contextual knowledge reasoning requiresprecise but flexible fonnalisms in such a way that,...
In this paper, we investigate the use of contextual knowledge in order to simplify knowledge represe...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
Abstract. Increasingly, researchers and developers of knowledge based systems (KBS) have been incorp...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
Increasingly, researchers and developers of knowledge based systems (KBS) have been attempting to i...
The context paradigm emerges from different areas of Artificial Intelligence. However, while signifi...
This paper discusses the uses of context in knowledge representation and reasoning (KRR). We propose...
The notion of context appears in computer science, as well as in several other disciplines, in vario...
In the recent Computer Science literature, contexts have been proposed mainly to formalize context d...
Context is the challenge for the coming years in artificial intelligence. In the companion paper [8]...
. Concept drift due to hidden changes in context complicates learning in many domains including fin...
It has been recognized that AI programs suffer from a lack of generality, the first gross symptom be...
The notion of `context` is called to account for a multifarious variety of phenomena in philosophy o...
The use of statistical measures to constrain generalisation in learning systems has proved successfu...
Abstract. Contextual knowledge reasoning requiresprecise but flexible fonnalisms in such a way that,...
In this paper, we investigate the use of contextual knowledge in order to simplify knowledge represe...