TY - JOUR
T1 - Using compiled knowledge to guide and focus abductive diagnosis
AU - Console, Luca
AU - Portinale, Luigi
AU - Dupré, Daniele Theseider
N1 - Funding Information:
The work presented in this paper has been partially supported by the National Research Council of Italy (CNR), ”Progetto Finalizzato Sistemi Informatici e Calcolo Paral-lelo,” grants 91.00916.PF69a nd 92.01601.PF69.
PY - 1996
Y1 - 1996
N2 - Several artificial intelligence architectures and systems based on "deepmodels of a domain have been proposed, in particular for the diagnostic task. These systems have several advantages over traditional knowledge based systems, but they have a main limitation in their computational complexity. One of the ways to face this problem is to rely on a knowledge compilation phase, which produces knowledge that can be used more effectively with respect to the original one. In this paper we show how a specific knowledge compilation approach can focus reasoning in abductive diagnosis, and, in particular, can improve the performances of AID, an abductive diagnosis system. The approach aims at focusing the overall diagnostic cycle in two interdependent ways: avoiding the generation of candidate solutions to be discarded a posteriori and integrating the generation of candidate solutions with discrimination among different candidates. Knowledge compilation is used off-line to produce operational (i.e., easily evaluated) conditions that embed the abductive reasoning strategy and are used in addition to the original model, with the goal of ruling out parts of the search space or focusing on parts of it. The conditions are useful to solve most cases using less time for computing the same solutions, yet preserving all the power of the model-based system for dealing with multiple faults and explaining the solutions. Experimental results showing the advantages of the approach are presented.
AB - Several artificial intelligence architectures and systems based on "deepmodels of a domain have been proposed, in particular for the diagnostic task. These systems have several advantages over traditional knowledge based systems, but they have a main limitation in their computational complexity. One of the ways to face this problem is to rely on a knowledge compilation phase, which produces knowledge that can be used more effectively with respect to the original one. In this paper we show how a specific knowledge compilation approach can focus reasoning in abductive diagnosis, and, in particular, can improve the performances of AID, an abductive diagnosis system. The approach aims at focusing the overall diagnostic cycle in two interdependent ways: avoiding the generation of candidate solutions to be discarded a posteriori and integrating the generation of candidate solutions with discrimination among different candidates. Knowledge compilation is used off-line to produce operational (i.e., easily evaluated) conditions that embed the abductive reasoning strategy and are used in addition to the original model, with the goal of ruling out parts of the search space or focusing on parts of it. The conditions are useful to solve most cases using less time for computing the same solutions, yet preserving all the power of the model-based system for dealing with multiple faults and explaining the solutions. Experimental results showing the advantages of the approach are presented.
KW - Abductive reasoning
KW - Diagnosis
KW - Focusing model-based reasoning
KW - Knowledge compilation
KW - Knowledge-based systems
UR - https://www.scopus.com/pages/publications/0030259679
U2 - 10.1109/69.542024
DO - 10.1109/69.542024
M3 - Article
SN - 1041-4347
VL - 8
SP - 690
EP - 706
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 5
ER -