Towards an automatic analyze and standardization of unstructured data in the context of big and linked data

Hammou Fadili, C. Jouis
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引用次数: 10

Abstract

Unstructured data refers to information that either does not have a pre-defined data model or is not organized in a pre-defined manner. Many studies confirm that around 80--90% of all produced information is in unstructured form. So this kind of content, rich and most importantly too precious, must be integrated and taken into consideration for processing and exploitation: extraction of relevant information from heterogeneous textual data. The goal of the research described here is to present an approach for automating the detection and the extraction of meaning from unstructured Web using its normalized part: Web of data & Linked Open data (LOD) such as RDF WordNet, DBpedia, etc. The process follows a "cyclical process" that consists of two phases (a) creating & generating normalized smart data by the experts or automatically, (b) exploiting the created data in (a), as "validated expert data", to analyze the Big Data and generate automatically new ones by learning from Linked Open Data (LOD). The approach is based on a range of linguistic and ontological techniques, in the context of Big Data. A software, EC3, is being implemented and at LIP6. EC3 is actually tested on very large corpuses on electronic supports, provided by the labex OBVIL (http://obvil.paris-sorbonne.fr) and the BNF (National Library of France).
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在大数据和关联数据的背景下,实现非结构化数据的自动分析和标准化
非结构化数据是指没有预定义的数据模型或没有以预定义的方式组织的信息。许多研究证实,大约80% -90%的信息都是非结构化的。因此,这种内容丰富,最重要的是过于宝贵,必须整合和考虑处理和开发:从异构文本数据中提取相关信息。本文所描述的研究目标是提出一种方法,利用非结构化Web的规范化部分(Web of data & Linked Open data, LOD),如RDF WordNet、DBpedia等,从非结构化Web中自动检测和提取意义。该过程遵循一个“循环过程”,包括两个阶段(a)由专家或自动创建和生成规范化的智能数据,(b)利用(a)中创建的数据作为“经过验证的专家数据”,分析大数据并通过学习关联开放数据(LOD)自动生成新数据。该方法基于大数据背景下的一系列语言学和本体论技术。一个名为EC3的软件正在LIP6上实现。EC3实际上是在非常大的语料库上测试的,由labex OBVIL (http://obvil.paris-sorbonne.fr)和BNF(法国国家图书馆)提供电子支持。
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