The similarity assumption in Case-Based Reasoning (similar problems have similar solutions) has been questioned by several researchers. If knowledge about the adaptability of solutions is available, it can be exploited in order to guide retrieval. Several approaches have been proposed in this context, often assuming a similarity or cost measure defined over the solution space. In this paper, we propose a novel approach where the adaptability of the solutions is captured inside a metric Markov Random Field (MRF). Each case is represented as a node in the MRF, and edges connect cases whose solutions are close in the solution space. States of the nodes represent the adaptability effort with respect to the query. Potentals are defined to enforc...
The knowledge stored in a case base is central to the problem solving of a case-based reasoning (CBR...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
This paper presents a new class of local similarity metrics, called AASM, that are not symmetric and...
AbstractOne of the major assumptions in Artificial Intelligence is that similar experiences can guid...
Abstract. We present a case-based reasoning technique based on con-ceptual neighborhoods of cases. T...
Case-based reasoning has become a successful technique that uses the previous experience as a proble...
An efficient retrieval of a relatively small number of relevant cases from a huge case base is a cru...
grantor: University of TorontoSimilarity plays a central role in theories of human problem...
Some of the issues in case retrieval and maintenance of case-bases are discussed. Conventionally, ne...
Colloque avec actes et comité de lecture.Case-based reasoning exploits memorized problem solving epi...
. An efficient retrieval of a relatively small number of relevant cases from a huge case base is a c...
This paper presents a new class of local similarity metrics, called AASM, that are not symmetric and...
When a user types in a search query in an Information Retrieval system, a list of top ‘n’ ranked doc...
Abstract. Case retrieval is an important problem in several commer-cially signicant application area...
This thesis makes several contributions to the study of Case-based Reasoning. It presents * a compre...
The knowledge stored in a case base is central to the problem solving of a case-based reasoning (CBR...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
This paper presents a new class of local similarity metrics, called AASM, that are not symmetric and...
AbstractOne of the major assumptions in Artificial Intelligence is that similar experiences can guid...
Abstract. We present a case-based reasoning technique based on con-ceptual neighborhoods of cases. T...
Case-based reasoning has become a successful technique that uses the previous experience as a proble...
An efficient retrieval of a relatively small number of relevant cases from a huge case base is a cru...
grantor: University of TorontoSimilarity plays a central role in theories of human problem...
Some of the issues in case retrieval and maintenance of case-bases are discussed. Conventionally, ne...
Colloque avec actes et comité de lecture.Case-based reasoning exploits memorized problem solving epi...
. An efficient retrieval of a relatively small number of relevant cases from a huge case base is a c...
This paper presents a new class of local similarity metrics, called AASM, that are not symmetric and...
When a user types in a search query in an Information Retrieval system, a list of top ‘n’ ranked doc...
Abstract. Case retrieval is an important problem in several commer-cially signicant application area...
This thesis makes several contributions to the study of Case-based Reasoning. It presents * a compre...
The knowledge stored in a case base is central to the problem solving of a case-based reasoning (CBR...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
This paper presents a new class of local similarity metrics, called AASM, that are not symmetric and...