The paper discusses the different aspects concerning performance arising in multi-modal systems combining Case-Based Reasoning and Model-Based Reasoning for diagnostic problem solving. In particular, we examine the relation among speed-up of problems solving, competence of the system and quality of produced solutions. Because of the well-know utility problem, there is no general strategy for improving all these parameters at the same time, so the trade-off among such parameters must be carefully analyzed. We have developed a case memory management strategy which allows the interleaving of learning of new cases with forgetting phases, where useless and potentially dangerous cases are identified and removed. This strategy, combined with a sui...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
AbstractIntegrating different reasoning modes in the construction of an intelligent system is one of...
Integrating different reasoning modes in the construction of an intelligent system is one of the mos...
Integrating different reasoning modes in the construction of an intelligent system is one of the mos...
The definition of suitable case base maintenance policies is widely recognized as a major success ke...
The definition of suitable case base maintenance policies is widely recognized as a major success ke...
The present work describes some aspects of the di-agnostic problem solving architecture of ADAPTER, ...
The present work describes some aspects related to the utility/swamping problem in ADAPtER, a multim...
The paper reports the contribution of Piero Torasso to the field of Case-Based Reasoning (CBR), with...
The paper reports the contribution of Piero Torasso to the field of Case-Based Reasoning (CBR), with...
The present work describes some aspects related to the utility/swamping problem in ADAPtER, a multim...
. The aim of this paper is to present an approach to the integration of Case-Based Reasoning with Mo...
The aim of this paper is to present an approach to the integration of Case-Based Reasoning with Mode...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
AbstractIntegrating different reasoning modes in the construction of an intelligent system is one of...
Integrating different reasoning modes in the construction of an intelligent system is one of the mos...
Integrating different reasoning modes in the construction of an intelligent system is one of the mos...
The definition of suitable case base maintenance policies is widely recognized as a major success ke...
The definition of suitable case base maintenance policies is widely recognized as a major success ke...
The present work describes some aspects of the di-agnostic problem solving architecture of ADAPTER, ...
The present work describes some aspects related to the utility/swamping problem in ADAPtER, a multim...
The paper reports the contribution of Piero Torasso to the field of Case-Based Reasoning (CBR), with...
The paper reports the contribution of Piero Torasso to the field of Case-Based Reasoning (CBR), with...
The present work describes some aspects related to the utility/swamping problem in ADAPtER, a multim...
. The aim of this paper is to present an approach to the integration of Case-Based Reasoning with Mo...
The aim of this paper is to present an approach to the integration of Case-Based Reasoning with Mode...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
The aim of this paper is to describe the ADAPtER system, a diagnostic architecture combining case-ba...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...