翻訳と辞書
Words near each other
・ Data quality
・ Data Quality Act
・ Data quality assessment
・ Data Quality Campaign
・ Data Quality Firewall
・ Data encapsulation
・ Data Encryption Standard
・ Data entry
・ Data entry clerk
・ Data envelopment analysis
・ Data erasure
・ Data event
・ Data exchange
・ Data Execution Prevention
・ Data Explorers
Data extraction
・ Data farming
・ Data Favela
・ Data feed
・ Data field
・ Data file
・ Data flow diagram
・ Data format
・ Data Format Description Language
・ Data format management
・ Data forwarder
・ Data Foundry
・ Data furnace
・ Data fusion
・ Data Garden


Dictionary Lists
翻訳と辞書 辞書検索 [ 開発暫定版 ]
スポンサード リンク

Data extraction : ウィキペディア英語版
Data extraction
Data extraction is the act or process of retrieving data out of (usually unstructured or poorly structured) data sources for further data processing or data storage (data migration). The import into the intermediate extracting system is thus usually followed by data transformation and possibly the addition of metadata prior to export to another stage in the data workflow.〔(Definition of data extraction. )〕
Usually, the term data extraction is applied when (experimental) data is first imported into a computer from primary sources, like measuring or recording devices. Today's electronic devices will usually present an electrical connector (e.g. USB) through which 'raw data' can be streamed into a personal computer.
Typical unstructured data sources include web pages, emails, documents, PDFs, scanned text, mainframe reports, spool files etc. Extracting data from these unstructured sources has grown into a considerable technical challenge where as historically data extraction has had to deal with changes in physical hardware formats, the majority of current data extraction deals with extracting data from these unstructured data sources, and from different software formats. This growing process of data extraction〔(data extraction. )〕 from the web is referred to as Web scraping.
The act of adding structure to unstructured data takes a number of forms
* Using text pattern matching such as regular expressions to identify small or large-scale structure e.g. records in a report and their associated data from headers and footers;
* Using a table-based approach to identify common sections within a limited domain e.g. in emailed resumes, identifying skills, previous work experience, qualifications etc. using a standard set of commonly used headings (these would differ from language to language), e.g. Education might be found under Education/Qualification/Courses;
* Using text analytics to attempt to understand the text and link it to other information
==Notes==


抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
ウィキペディアで「Data extraction」の詳細全文を読む



スポンサード リンク
翻訳と辞書 : 翻訳のためのインターネットリソース

Copyright(C) kotoba.ne.jp 1997-2016. All Rights Reserved.