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A Datalog~+ RuleML 1.01 Architecture for Rule-Based Data Access in Ecosystem Research

机译:基于规则的数据访问的数据〜+ RULEML 1.01架构

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Rule-Based Data Access (RBDA) enables automated reasoning over a knowledge base (KB) as a generalized global schema for the data in local (e.g., relational or graph) databases reachable through mappings. RBDA can semantically validate, enrich, and integrate heterogeneous data sources. This paper proposes an RBDA architecture layered on Datalog~+ RuleML, and uses it for the ΔForest case study on the susceptibility of forests to climate change. Deliberation RuleML 1.01 was mostly motivated by Datalog customization requirements for RBDA. It includes Datalog~+ RuleML 1.01 as a standard XML serialization of Datalog~+, a superlanguage of the decidable Datalog~±. Datalog~+ RuleML is customized into the three Datalog extensions Datalog[{exit}], Datalog[=], and Datalog[⊥] through MYNG, the RuleML Modular sYNtax confiG-urator generating (Relax NG and XSD) schemas from language-feature selections. The ΔForest case study on climate change employs data derived from three main forest monitoring networks in Switzerland. The KB includes background knowledge about the study sites and design, e.g., abundant tree species groups, pure tree stands, and statistical independence among forest plots. The KB is used to rewrite queries about, e.g., the eligible plots for studying a particular species group. The mapping rules unfold our newly designed global schema to the three given local schemas, e.g. for the grade of forest management. The RBDA/ΔForest case study has shown the usefulness of our approach to Ecosystem Research for global schema design and demonstrated how automated reasoning can become key to knowledge modeling and consolidation for complex statistical data analysis.
机译:基于规则的数据访问(RBDA)使得通过知识库(KB)通过知识库(KB)作为本地(例如,关系或图形)数据库中的数据的广义全局模式,可以通过映射到达。 RBDA可以在语义上验证,丰富和整合异构数据来源。本文提出了在Datalog〜+ RULEML上分层的RBDA架构,并用于ΔForest案例研究对森林对气候变化的敏感性。审议RULEML 1.01主要是RBDA的Datalog定制要求的动机。它包括Datalog〜+ RULEML 1.01作为Datalog〜+的标准XML序列化,可解除的Datalog〜±的超级语程。 Datalog〜+ RULEML被定制到三个Datalog Extensions Datalog [{exit}],Datalog [=]和Datalog [⊥]通过Myng,Ruleml模块化语法配置 - 来自语言功能的ruleml模块化语法configutator生成(放松ng和xsd)模式选择。关于气候变化的ΔForest案例研究采用瑞士三个主要森林监测网络衍生的数据。 KB包括关于研究网站和设计的背景知识,例如,丰富的树种组,纯粹的树立,以及森林地块之间的统计独立性。 KB用于重写关于研究特定物种组的符合条件地块的查询。映射规则向三个给定的本地模式展开我们的新设计的全球架构,例如,森林管理年级。 RBDA /ΔForest案例研究显示了我们对全球模式设计的生态系统研究方法的有用性,并证明了自动化推理如何成为复杂统计数据分析的知识建模和整合的关键。

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