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Active Mining of Document Type Definitions

机译:主动挖掘文档类型定义

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摘要

In this paper, we present the application of our active learning algorithm for Systems of Procedural Automata (SPAs) for inferring Document Type Definitions (DTDs) via testing of corresponding document validators. The point of this specification mining approach is to reveal unknown (lost or hidden) syntactic document constraints that are automatically imposed by document validators in order to support document writers or to validate whether a certain validator implementation does indeed satisfy its specification. This is particularly interesting in the context of today's General Data Protection Regulation (GDPR) as their violation might lead to substantial penalties. The practicality of this approach is supported by the fact that for inferred complex DTDs, context-free model checking may be used to automatically validate whether business-critical rules are enforced by a validator and therefore automatically prohibited by a corresponding documentation process once and for all.
机译:在本文中,我们介绍了我们的主动学习算法应用程序自动机(SPA)系统通过对应的文档验证器的测试推断文档类型定义(DTD)。本规范挖掘方法的重点是揭示由文档验证器自动施加的未知(丢失或隐藏)句法文档约束,以支持文档编写者或验证某个验证器实现是否确实满足其规范。这在当今一般数据保护条例(GDPR)的背景下特别有趣,因为违规可能导致大量处罚。这种方法的实用性得到了推断的复杂DTD,可以使用上下文模型检查来自动验证验证器是否强制执行业务 - 关键规则,因此对相应的文档过程自动禁止一次和全部。

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