在數據分析的領域中,尤其在大數據的領域之中,因常含有相當高維度的預測變數,故特徵選擇是一個很重要的主題。這個主題在半導體的應用上,已經獲得相當豐碩的成果,但在IC基板的應用上,成果就相對顯得貧乏。所以,此次的研究(以IC基板中鑽孔製程為例)將透過以下的試驗方法(含:GR-SNBC (Gain Ratio with Naive Bayes Classifier)、SU-SNBC (Symmetrical Uncer-tainty with Naive Bayes Classifier)與SU-CART (Symmetrical Uncer-tainty with Classification and Regression Tree Classifier)),來建立可應用於IC基板製程時間預測上的一組屬性。最後,此一研究的成果不僅在於,使用資料挖礦的方法,來找出一組具有顯著性,而且可以用來預測的IC基板製程時間的產品特徵屬性;而且,發現若為了縮短製程時間,來自產品結構本身的因子,會比來自產品在生產管理上的因子更具顯著的效果。 / Feature selection is significate subject in domain of data analysis, especially in big-data with a lot of high dimension predictive variables. In semi-conductor field, this subject has already gotten a plenty of achievement, but not in IC-substrate; so in this research for example of drilling operation, through experiments, it builds a group of se-lective features for this field to predict process time, and the methods used are GR-SNBC (Gain Ratio with Naive Bayes Classifier), SU-SNBC (Symmetrical Uncertainty with Naive Bayes Classifier) and SU-CART (Symmetrical Uncertainty with Classification and Regression Tree Classifier). The contributions of this research are not only a selective product characteristics subset suggested to predict process-time in IC-substrate fab via the data-mining methods here, but also an observation that in order to shorten the process time, the factors of product construction weighs more than production management.
Identifer | oai:union.ndltd.org:CHENGCHI/G0103356043 |
Creators | 宋伯謙, Elias Soong |
Publisher | 國立政治大學 |
Source Sets | National Chengchi University Libraries |
Language | 英文 |
Detected Language | English |
Type | text |
Rights | Copyright © nccu library on behalf of the copyright holders |
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