从非结构化数据孤岛中提取术语

Richard K. Lomotey, R. Deters
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引用次数: 14

摘要

大数据时代给服务计算领域带来的主要挑战是非结构化数据的碎片。高维数据采用异构格式,无模式,在某些情况下需要多个存储api。这种情况使得现有的数据挖掘技术在数据库知识发现(KDD)过程中应用于基于模式的数据源几乎是不切实际的。本文提出了一种基于隐马尔可夫模型(HMM)从数据孤岛中提取术语的工具TouchR;特别是分布式NoSQL数据库——我们将其建模为网络图。我们的用例图由存储节点组成,如CouchDB、Neo4J、DynamoDB等。评价结果表明,TouchR在术语提取和组织方面具有较高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Terms extraction from unstructured data silos
The major challenge that the big data era brings to the services computing landscape is debris of unstructured data. The high-dimensional data is in heterogeneous formats, schemaless, and requires multiple storage APIs is some cases. This situation has made it almost impractical to apply existing data mining techniques which are designed for schema-based data sources in a knowledge discovery in database (KDD) process. In this paper, a tool called TouchR is proposed which algorithmically relies on the Hidden Markov Model (HMM) to extract terms from data silos; specifically, distributed NoSQL databases- which we model as network graph. Our use case graph consists of storage nodes such as CouchDB, Neo4J, DynamoDB etc. The evaluation of TouchR shows high accuracy for terms extraction and organization.
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