首页> 外文会议>Proceedings of the 1st ACM SIGKDD Workshop on Knowledge Discovery from Uncertain Data >Using uncertain chemical and thermal data to predict product quality in a casting process
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Using uncertain chemical and thermal data to predict product quality in a casting process

机译:使用不确定的化学和热学数据预测铸造过程中的产品质量

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摘要

Process and casting data from different sources have been collected and merged for the purpose of predicting, and determining what factors affect, the quality of cast products in a foundry. One problem is that the measurements cannot be directly aligned, since they are collected at different points in time, and instead they have to be approximated for specific time points, hence introducing uncertainty. An approach for addressing this problem is investigated, where uncertain numeric feature values are represented by intervals and random forests are extended to handle such intervals. A preliminary experiment shows that the suggested way of forming the intervals, together with the extension of random forests, results in higher predictive performance compared to using single (expected) values for the uncertain features together with standard random forests.
机译:已收集并合并了来自不同来源的过程和铸造数据,目的是预测并确定哪些因素会影响铸造厂的铸造产品质量。一个问题是测量值不能直接对齐,因为它们是在不同的时间点收集的,取而代之的是必须在特定的时间点对它们进行近似估计,从而引入不确定性。研究了一种解决此问题的方法,其中不确定的数字特征值由间隔表示,并且扩展了随机森林来处理此类间隔。初步实验表明,与对不确定特征和标准随机森林使用单个(预期)值相比,建议的形成间隔的方法以及对随机森林的扩展导致更高的预测性能。

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