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Integrated Systems for Inducing Spatio-Temporal Process Models

机译:诱导时空过程模型的集成系统

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Quantitative modeling plays a key role in the natural sciences, and systems that address the task of inductive process modeling can assist researchers in explaining their data. In the past, such systems have been limited to data sets that recorded change over time, but many interesting problems involve both spatial and temporal dynamics. To meet this challenge, we introduce SCISM, an integrated intelligent system which solves the task of inducing process models that account for spatial and temporal variation. We also integrate SCISM with a constraint learning method to reduce computation during induction. Applications to ecological modeling demonstrate that each system fares well on the task, but that the enhanced system does so much faster than the baseline version.
机译:定量建模在自然科学中起着关键作用,解决归纳过程建模任务的系统可以帮助研究人员解释其数据。过去,此类系统仅限于记录随时间变化的数据集,但许多有趣的问题涉及空间和时间动态。为了应对这一挑战,我们引入了SCISM,这是一个集成的智能系统,可以解决归纳出时空变化的过程模型的任务。我们还将SCISM与约束学习方法集成在一起,以减少归纳过程中的计算。生态模型的应用表明,每个系统都可以很好地完成任务,但是增强型系统的运行速度比基准版本快得多。

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