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Tackling Incompleteness in Information Extraction - A Complementarity Approach

机译:解决信息提取中的不完整性-一种互补方法

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摘要

Incomplete templates (attribute-value-pairs) and loss of structural and/or semantic information in information extraction tasks lead to problems in downstream information processing steps. Methods such as emerging data mining techniques that help to overcome this incompleteness by obtaining new, additional information are consequently needed. This research work integrates data mining and information extraction methods into a single complementary approach in order to benefit from their respective advantages and reduce incompleteness in information extraction. In this context, complementarity is the combination of pieces of information from different sources, resulting in (i) reassessment of contextual information and suggestion generation and (ii) better assessment of plausibility to enable more precise value selection, class assignment, and matching. For these purposes, a recommendation model that determines which methods can attack a specific problem is proposed. In conclusion, the improvements in information extraction domain analysis will be evaluated.
机译:信息提取任务中不完整的模板(属性值对)以及结构和/或语义信息的丢失会导致下游信息处理步骤出现问题。因此,需要诸如新兴数据挖掘技术之类的方法,通过获取新的附加信息来帮助克服这种不完整性。这项研究工作将数据挖掘和信息提取方法集成到单个补充方法中,以便从它们各自的优点中受益并减少信息提取中的不完整性。在这种情况下,互补性是来自不同来源的信息片段的组合,从而导致(i)重新评估上下文信息和建议生成,以及(ii)更好地评估合理性以实现更精确的价值选择,类别分配和匹配。为此,提出了一种建议模型,该模型确定哪些方法可以解决特定问题。总之,将评估信息提取域分析方面的改进。

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