2020
DOI: 10.1007/978-981-15-4163-6_58
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A Review of the Applications of Data Mining for Semiconductor Quality Control

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“…This is often performed by using learning functions that can derive knowledge from previous data. Forecasting quality using data mining techniques often begins with the creation of a model based on past data [38].…”
Section: Data Mining Applications For Quality Controlmentioning
confidence: 99%
“…This is often performed by using learning functions that can derive knowledge from previous data. Forecasting quality using data mining techniques often begins with the creation of a model based on past data [38].…”
Section: Data Mining Applications For Quality Controlmentioning
confidence: 99%
“…The main purpose of quality prediction tools is to forecast the behavior of the product and then to be able to also forecast the trends of values of its critical parameters, typically accomplished by employ learning functions that have the capacity to stem knowledge from the preceding information. Forecasting quality with the help of data mining techniques normally starts by creating a model based on previous data, for instance labeling samples, and then assess and verify the unidentified samples, or to evaluate, from a given sample, the attributes' value ranges [67]. Table 2 shows the categorized papers by data mining applications for quality control in distinct steps of semiconductor manufacturing.…”
Section: Data Mining Applications For Quality Controlmentioning
confidence: 99%