Humans naturally reuse recalled knowledge to solve problems and this includes understanding the context i.e. the information that identifies or characterizes these problems. For problems in complex and dynamic environments, providing effective solutions by operators requires their understanding of the situation of the environment together with the context. Context-aware case-based reasoning (CBR) applications uses the context of users to provide solutions to problems. The combination of a context-aware CBR with general domain knowledge has been shown to improve similarity assessment, solving domain specific problems and problems of uncertain knowledge. Whilst these CBR approaches in context awareness address problems of incomplete data and ...
Case-based reasoning systems store information about situations in their memory. As new problems ari...
A surprisingly large number of research disciplines have contributed towards the development of know...
Machine learning is compelling in solving various applied problems. Nevertheless, machine learning m...
Context-aware case-based decision support systems (CACBDSS) use the context of users as one of the f...
Context-aware case-based decision support systems (CACBDSS) use the context of users as one of the f...
The purpose of this paper is to explore the similarities and differences and then argue for the pote...
The paper describes an approach of using the case-based reasoning methodology in context-aware syste...
The paradigm of pervasive computing aims to integrate the computing technologies in a graceful and t...
The paradigm of pervasive computing aims to integrate the computing technologies in a graceful and t...
peer reviewedTheimportanceofsystem-levelcontext-andsituationaware- ness increases with the growth of...
Context-aware solutions have the potential to address the personalisation required for implementing ...
Case-based reasoning (CBR), as one of the problem solving paradigms in the field of Artificial Intel...
Although advancements in technology has allowed a large amount of data to be collected and stored, t...
Case-based reasoning (CBR), as one of the problem solving paradigms in the\ud field of Artificial In...
Case-based reasoning (CBR) is a simple idea: solve new problems by adapting old solutions to similar...
Case-based reasoning systems store information about situations in their memory. As new problems ari...
A surprisingly large number of research disciplines have contributed towards the development of know...
Machine learning is compelling in solving various applied problems. Nevertheless, machine learning m...
Context-aware case-based decision support systems (CACBDSS) use the context of users as one of the f...
Context-aware case-based decision support systems (CACBDSS) use the context of users as one of the f...
The purpose of this paper is to explore the similarities and differences and then argue for the pote...
The paper describes an approach of using the case-based reasoning methodology in context-aware syste...
The paradigm of pervasive computing aims to integrate the computing technologies in a graceful and t...
The paradigm of pervasive computing aims to integrate the computing technologies in a graceful and t...
peer reviewedTheimportanceofsystem-levelcontext-andsituationaware- ness increases with the growth of...
Context-aware solutions have the potential to address the personalisation required for implementing ...
Case-based reasoning (CBR), as one of the problem solving paradigms in the field of Artificial Intel...
Although advancements in technology has allowed a large amount of data to be collected and stored, t...
Case-based reasoning (CBR), as one of the problem solving paradigms in the\ud field of Artificial In...
Case-based reasoning (CBR) is a simple idea: solve new problems by adapting old solutions to similar...
Case-based reasoning systems store information about situations in their memory. As new problems ari...
A surprisingly large number of research disciplines have contributed towards the development of know...
Machine learning is compelling in solving various applied problems. Nevertheless, machine learning m...