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content discovery platform : ウィキペディア英語版
content discovery platform

A Content Discovery Platform is an implemented software recommendation platform which uses recommender system tools. It utilizes user metadata in order to discover and recommend appropriate content, whilst reducing ongoing maintenance and development costs. A Content Discovery Platform delivers personalized content to websites, mobile devices and set-top boxes. A large range of content discovery platforms currently exist for various forms of content ranging from news articles and academic journal articles 〔http://www.nature.com/news/how-to-tame-the-flood-of-literature-1.15806〕 to television.〔http://www.wired.com/2011/12/netflix-revamps-ipad-app-to-improve-content-discovery/〕 As operators compete to be the gateway to home entertainment, personalized television is a key service differentiator. Academic content discovery has recently become another area of interest, with several companies being established to help academic researchers keep up to date with relevant academic content and serendipitously discover new content.〔http://www.nature.com/news/how-to-tame-the-flood-of-literature-1.15806〕
==Methodology==
In to provide and recommend content, a search algorithm is used within a Content Discovery Platform to provide keyword related search results. User personalization and recommendation are tools that are used in the determination of appropriate content. Recommendations are either based on a single article or show, a particular academic field or genre of TV, or a full user profile. Bespoke analysis can also be undertaken to understand specific requirements relating to user behaviour and activity.
A variety of algorithms can be used:
* Collaborative filtering of different users’ behaviour, preferences, and ratings
* Automatic content analysis and extraction of common patterns
* Social recommendations based on personal choices from other people

抄文引用元・出典: フリー百科事典『 ウィキペディア(Wikipedia)
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