A CV parser model using entity extraction process and big data tools

Автор: Papiya Das, Manjusha Pandey, Siddharth Swarup Rautaray

Журнал: International Journal of Information Technology and Computer Science @ijitcs

Статья в выпуске: 9 Vol. 10, 2018 года.

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Private organizations like offices, libraries, hospi-tals make use of computers for computerized database, when computers became a most cost-effective device.After than E.F Codd introduced relational database model i.e conventional database. Conventional database can be enhanced to temporal database. Conventional or traditional databases are structured in nature. But always we dont have the pre-organized data. We have to deal with different types of data. That data is huge and in large amount i.e Big data. Big data mostly emphasized into internal data sources like transaction, log data, emails etc. From these sources high-enriched information is extracted by the means of process text data mining or text analytics. Entity Extraction is a part of Text Analysis. An entity can be anything like people, companies, places, money, any links, phone number etc. Text documents, bLogposts or any long articles contain large number of entities in many forms. Extracting those entities to gain the valuable information is the main target. Extraction of entities is possible in natural language processing(NLP) with R language. In this research work we will briefly discuss about text analysis process and how to extract entities with different big data tools.

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Computerized Database, Conventional Database, Entity Extraction, Natural Language Process-ing(NLP), Temporal Database, Text data mining, Text analytics

Короткий адрес: https://sciup.org/15016294

IDR: 15016294   |   DOI: 10.5815/ijitcs.2018.09.03

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