Title :
Yield Modeling with Rule Ensembles
Author :
Seni, Giovanni ; Yang, Edward ; Akar, Said
Author_Institution :
PDF Solutions, San Jose
Abstract :
In this paper we introduce the application of a new statistical modeling algorithm called rule ensembles to the problem of yield-loss characterization. Yield loss modeling is viewed as a regression or classification problem, and a model is constructed as a linear combination of simple rules derived from the data. These rule ensembles have been shown to produce predictive models competitive with the best methods. In addition to their high accuracy, however, these rules are easy to understand. Similarly, the degree of relevance of each rule, and its respective variables, can be assessed. The algorithm also provides methodology for automatically identifying those variables that are involved in interactions with other variables, and the strength and degrees of those interactions. To illustrate the interpretation advantages of the method, an analysis on semiconductor manufacturing data is provided.
Keywords :
data analysis; decision trees; integrated circuit yield; decision trees; regression analysis; rule ensembles; semiconductor manufacturing; yield loss modeling; Boosting; Classification tree analysis; Data analysis; Decision trees; Input variables; Predictive models; Regression tree analysis; Semiconductor device manufacture; Semiconductor device modeling; Training data; Yield-loss characterization; classification; decision trees; ensembles; predictive learning; regression;
Conference_Titel :
Advanced Semiconductor Manufacturing Conference, 2007. ASMC 2007. IEEE/SEMI
Conference_Location :
Stresa
Print_ISBN :
1-4244-0652-8
Electronic_ISBN :
1-4244-0653-6
DOI :
10.1109/ASMC.2007.375099