Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising

This article presents the study results of the business intelligence markets, the promote products on social media, and a new method for increasing the information pertinence in the scientific recommender systems, scientific information systems, analysis of the recommender systems that contain infor...

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Main Authors: Anna I. Guseva, Vasiliy S. Kireev, Stanislav A. Filippov
Format: Article
Language:English
Published: EconJournals 2016-11-01
Series:International Journal of Economics and Financial Issues
Subjects:
Online Access:https://dergipark.org.tr/tr/pub/ijefi/issue/32018/354106?publisher=http-www-cag-edu-tr-ilhan-ozturk
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author Anna I. Guseva
Vasiliy S. Kireev
Stanislav A. Filippov
author_facet Anna I. Guseva
Vasiliy S. Kireev
Stanislav A. Filippov
author_sort Anna I. Guseva
collection DOAJ
description This article presents the study results of the business intelligence markets, the promote products on social media, and a new method for increasing the information pertinence in the scientific recommender systems, scientific information systems, analysis of the recommender systems that contain information about scientific publications, is represented. The prospects of using this method in the Business Intelligence systems, content management systems for native advertising systems to find content on the Internet and assessed the current state of the market such systems.
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spelling doaj.art-46fc6790b5614f10bafd2d6f932c7eec2023-02-15T16:19:19ZengEconJournalsInternational Journal of Economics and Financial Issues2146-41382016-11-01682252331032Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native AdvertisingAnna I. GusevaVasiliy S. KireevStanislav A. FilippovThis article presents the study results of the business intelligence markets, the promote products on social media, and a new method for increasing the information pertinence in the scientific recommender systems, scientific information systems, analysis of the recommender systems that contain information about scientific publications, is represented. The prospects of using this method in the Business Intelligence systems, content management systems for native advertising systems to find content on the Internet and assessed the current state of the market such systems.https://dergipark.org.tr/tr/pub/ijefi/issue/32018/354106?publisher=http-www-cag-edu-tr-ilhan-ozturkcontext and native advertising market business intelligence market highly pertinent algorithms recommender systems
spellingShingle Anna I. Guseva
Vasiliy S. Kireev
Stanislav A. Filippov
Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
International Journal of Economics and Financial Issues
context and native advertising market
business intelligence market
highly pertinent algorithms
recommender systems
title Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
title_full Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
title_fullStr Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
title_full_unstemmed Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
title_short Highly Pertinent Algorithm for the Market of Business Intelligence, Context and Native Advertising
title_sort highly pertinent algorithm for the market of business intelligence context and native advertising
topic context and native advertising market
business intelligence market
highly pertinent algorithms
recommender systems
url https://dergipark.org.tr/tr/pub/ijefi/issue/32018/354106?publisher=http-www-cag-edu-tr-ilhan-ozturk
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