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Inductive Learning in Design: A Method and Case Study Concerning Design of Antifriction Bearing Systems Machine Learning and Data Mining : Methods and Applications 1999년 6월 19일 토요일 99406-810 산업공학과 허원창 Contents Introduction Exemplary problem Testing and Training events Exemplary rule set obtained Empirical errors of learned rule set Degree of Confidence Conclusion Introduction A Method for Learning Design Rule – in design process - design knowledge is important but ambiguous, and there are many solutions in design problem – in applying Inductive Learning Method - recognizing design knowledge and representing it in the for of rule is important – in this chapter - learning rules for selecting anti-friction bearing systems Global Steps – – – – defines attributes used for characterizing design examples describe design examples with selected attributes determining training and testing examples learning through AQ15c and obtaining rule set Example Problem Design of Bearing arrangement Design Process Training and Testing Events Design Knowledge Source – catalogues of rolling bearing, text books on machine design, special publications issued by producers of bearing..... – Conversions of quantitative data to qualitative data Database Examples – bearing types : deep grove ball bearing, angular contact ball bearing, self-aligning ball bearing, cylindrical roller bearings.. – 10-26 events for each bearings – 101088 possible events – need more events from design experts Domains of Attributes Domains of Attributes Exemplary Training Events training events of the class ‘deep groove ball bearing’ Exemplary rules # of unique events that support rule total # of events that support rule exemplary rule concerning ‘deep groove ball bearing’ Empirical Error of learned rule sets overall empirical error rate Eov number of errors number of testing events Empirical omission error rate E om 1 n k number of omission errors for class k k E om , E om n k 1 number of positive examples for class k Empirical comission error rate E cm 1 n k number of comission errors for class k k E cm , E cm n k 1 number of negative examples for class k Testing Results Testing results using ‘leave-one-out’ method Evaluation of Training Example Evaluation of training example Exemplary Degree of Confidence exemplary Degree of confidence Conclusion In problems of deriving useful design knowledge in order to aid designer in routine design task – The feasibility of the application of machine learning in case of selecting the type of bearing. – can suggests several solution to designers. – The ruleset obtained features high degree of accuracy. – Further verification of results require cooperation with skilled designers