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A MEASURE OF THE INFORMATION LOSS FOR INSPECTION POINT REDUCTION

机译:减少检查点的信息损失的度量

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摘要

Since the vehicle program in automotive industry gets more and more extensive, the costs related to inspection increase. Therefore, there are needs for more effective inspection preparation. In many situations, a large number of inspection points are measured, despite the fact that only a small subset of points is needed. A method, based on cluster analysis, for identifying redundant inspection points has earlier been successfully tested on industrial cases. Cluster analysis is used for grouping the variables into clusters, where the points in each cluster are highly correlated. From every cluster only one representing point is selected for inspection. In this paper the method is further developed and multiple linear regression is used for evaluating how much of the information that is lost when discarding an inspection point. The information loss can be quantified using an efficiency measure based on linear multiple regression, where the part of the variation in the discarded variables that can be explained by the remaining variables is calculated. This measure can be illustrated graphically and that helps to decide how many clusters that should be formed, i.e. how many inspection points that can be discarded.
机译:由于汽车工业中的车辆程序越来越广泛,与检查有关的成本增加了。因此,需要更有效的检查准备。在许多情况下,尽管只需要一小部分检查点,但仍会测量大量检查点。一种基于聚类分析的,用于识别冗余检查点的方法已在较早的工业案例中成功测试。聚类分析用于将变量分组为聚类,其中每个聚类中的点高度相关。从每个群集中仅选择一个代表点进行检查。在本文中,该方法得到了进一步发展,并且使用多元线性回归来评估丢弃检查点时丢失了多少信息。可以使用基于线性多元回归的效率度量来量化信息损失,其中计算可以由其余变量解释的丢弃变量的部分变化。可以用图形说明该措施,这有助于确定应形成多少个群集,即可以丢弃多少个检查点。

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