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首页> 外文期刊>IEEE transactions on industrial informatics >Partial Bayesian Co-training for Virtual Metrology
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Partial Bayesian Co-training for Virtual Metrology

机译:虚拟计量的部分贝叶斯共同培训

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摘要

Building accurate regression models using limited data is a challenging problem in manufacturing data analysis. In this paper, we study a particular semisupervised learning problem where labeled data are limited, while unlabeled data are plentiful. In these conditions, conventional single-view learning methods are prone to overfitting. To tackle this problem, we develop a novel co-training technique, namely partial Bayesian co-training (PBCT). PBCT scales down the original set of features to create a partial view, and then exploit side information from the partial view to enhance the complete model. The PBCT model also allows integrating domain knowledge to enhance model accuracy. The proposed method is validated with experiments on industrial manufacturing data. The experimental results show that under a reduction of labeled data by up to 50%, a robust estimation is still attainable. This suggests that the PBCT model is a promising solution to a broad spectrum of applications.
机译:使用有限数据构建准确的回归模型是制造数据分析中的一个具有挑战性的问题。在本文中,我们研究了标记数据有限的特定半熟的学习问题,而未标记的数据很丰富。在这些条件下,传统的单视图学习方法容易出现过度拟合。为了解决这个问题,我们开发了一种新的共同训练技术,即部分贝叶斯共同训练(PBCT)。 PBCT缩小了原始的功能集以创建局部视图,然后从局部视图中利用侧面信息以增强完整的模型。 PBCT模型还允许集成域知识来提高模型精度。该方法是用工业制造数据的实验验证。实验结果表明,在标记数据的降低至多50%,仍然可以实现稳健的估计。这表明PBCT模型是广泛应用的有希望的解决方案。

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