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SML-Bench - A benchmarking framework for structured machine learning

机译:SML-BENCH - 结构化机器学习的基准框架

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The availability of structured data has increased significantly over the past decade and several approaches to learn from structured data have been proposed. These logic-based, inductive learning methods are often conceptually similar, which would allow a comparison among them even if they stem from different research communities. However, so far no efforts were made to define an environment for running learning tasks on a variety of tools, covering multiple knowledge representation languages. With SML-Bench, we propose a benchmarking framework to run inductive learning tools from the ILP and semantic web communities on a selection of learning problems. In this paper, we present the foundations of SML-Bench, discuss the systematic selection of benchmarking datasets and learning problems, and showcase an actual benchmark run on the currently supported tools.
机译:在过去的十年中,结构化数据的可用性显着增加,并提出了从结构化数据中学习的几种方法。 这些基于逻辑的感应学习方法通常在概念上类似,即使它们源于不同的研究社区,也会允许它们的比较。 然而,到目前为止,没有努力定义用于在各种工具上运行学习任务的环境,涵盖多种知识表示语言。 使用SML-BENCH,我们提出了一种基准测试框架,以在选择学习问题上运行来自ILP和语义网络社区的电感学习工具。 在本文中,我们介绍了SML-Bench的基础,讨论了基准数据集和学习问题的系统选择,并在当前支持的工具上展示实际的基准运行。

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