This paper describes two methods for integrating model-based diagnosis (MBD) and explanation-based learning. The first method (EBL) uses a generate-test-debug paradigm, generating diagnostic hypotheses using learned associational rules that summarize model-based diagnostic experiences. This strategy is a form of "learning while doing" model-based troubleshooting and could be called "online learning." The second diagnosis and learning method described here (EEL-STATIC) involves ''learning in advance." Learning begins in a training phase prior to performance or testing. Empirical results of computational experiments comparing the learning methods with MBD on two devices (the polybox and the binary full adder) are reported. For the same diagno...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...
This paper introduces a novel approach to Model-Based Diagnosis (MBD) for hybrid technical systems. ...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
Diagnostic expert systems constructed using traditional knowledge-engineering techniques identify ma...
Model-based diagnosis (MBD) provides several advantages over experiential rule-based systems. A prin...
To determine why something has stopped working, it is useful to know how it was supposed to work in ...
This thesis explores ways to augment a model-based diagnostic program with a learning component, s...
An application of model-based reasoning and model-based learning to an operative diagnostic domain s...
An application of model-based reasoning and model-based learning to an operative diagnostic domain s...
This position paper argues that causal explanation in diagnostic tasks are more easily achieved in f...
AbstractThis paper discusses learning in the context of a diagnostic expert system. The diagnostic e...
This position paper argues that causal explanation in diagnostic tasks are more easily achieved in f...
Abstract- Model-Based Diagnosis (MBD) is a promising approach for fast and accurate di-agnosis of ro...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
The advantage to "one test at a time" fault diagnosis is its ability to implicate the comp...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...
This paper introduces a novel approach to Model-Based Diagnosis (MBD) for hybrid technical systems. ...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
Diagnostic expert systems constructed using traditional knowledge-engineering techniques identify ma...
Model-based diagnosis (MBD) provides several advantages over experiential rule-based systems. A prin...
To determine why something has stopped working, it is useful to know how it was supposed to work in ...
This thesis explores ways to augment a model-based diagnostic program with a learning component, s...
An application of model-based reasoning and model-based learning to an operative diagnostic domain s...
An application of model-based reasoning and model-based learning to an operative diagnostic domain s...
This position paper argues that causal explanation in diagnostic tasks are more easily achieved in f...
AbstractThis paper discusses learning in the context of a diagnostic expert system. The diagnostic e...
This position paper argues that causal explanation in diagnostic tasks are more easily achieved in f...
Abstract- Model-Based Diagnosis (MBD) is a promising approach for fast and accurate di-agnosis of ro...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...
The advantage to "one test at a time" fault diagnosis is its ability to implicate the comp...
We have developed a process model that learns in multiple ways while finding faults in a simple cont...
This paper introduces a novel approach to Model-Based Diagnosis (MBD) for hybrid technical systems. ...
This paper argues that automated knowledge acquisition for diagnosis has had limited success in both...