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Comparing mathematical and heuristic approaches for scientific data analysis

机译:比较数学和启发式方法进行科学数据分析

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摘要

Scientific data is often analyzed in the context of domain-specific problems, for example, failure diagnostics, predictive analysis, and computational estimation. These problems can be solved using approaches such as mathematical models or heuristic methods. In this paper we compare a heuristic approach based on mining stored data with a mathematical approach based on applying state-of-the-art formulae to solve an estimation problem. The goal is to estimate results of scientific experiments given their input conditions. We present a comparative study based on sample space, time complexity, and data storage with respect to a real application in materials science. Performance evaluation with real materials science data is also presented, taking into account accuracy and efficiency. We find that both approaches have their pros and cons in computational estimation. Similar arguments can be applied to other scientific problems such as failure diagnostics and predictive analysis. In the estimation problem in this paper, heuristic methods outperform mathematical models.
机译:通常在特定领域的问题的上下文中分析科学数据,例如,故障诊断,预测分析和计算估计。这些问题可以使用诸如数学模型或启发式方法之类的方法来解决。在本文中,我们将基于挖掘存储数据的启发式方法与基于应用最新公式来解决估计问题的数学方法进行比较。目的是在给定输入条件的情况下估算科学实验的结果。我们针对材料科学中的实际应用,基于样本空间,时间复杂度和数据存储进行了比较研究。还提出了使用真实材料科学数据进行的性能评估,同时考虑了准确性和效率。我们发现这两种方法在计算估计上都有其优缺点。类似的论点可以应用于其他科学问题,例如故障诊断和预测分析。在本文的估计问题中,启发式方法优于数学模型。

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