Effective Content Recommendation in New Media: Leveraging Algorithmic Approaches

Effective content recommendation in new media relies heavily on algorithmic approaches to enhance user engagement and satisfaction. This abstract explores the current landscape of content recommendation systems in new media platforms, focusing on how algorithms are leveraged to deliver personalized and relevant content to users. The success of these systems hinges on their ability to analyze vast amounts of user data, such as browsing history, preferences, and social interactions, to predict content that aligns with individual interests. Key algorithmic techniques include collaborative filtering, content-based filtering, and hybrid methods, each serving distinct purposes in enhancing recommendation accuracy. The abstract examines the challenges and opportunities in algorithmic content recommendation, including issues of privacy, algorithm bias, and the need for continuous algorithm refinement. Effective algorithms not only increase user engagement but also drive business objectives such as increased user retention and monetization through targeted advertising. Ultimately, the abstract concludes by highlighting the importance of ongoing research and development in algorithmic approaches to keep pace with the evolving demands and complexities of new media content recommendation systems.

Авторы
Издательство
Institute of Electrical and Electronics Engineers Inc.
Язык
English
Страницы
90561-90570
Статус
Published
Том
12
Год
2024
Организации
  • 1 Yiwu Ind & Commercial Coll, Sch E Commerce, Yiwu 322000, Peoples R China
  • 2 Peoples Friendship Univ Russia RUDN Univ, Dept Civil Engn, Moscow 117198, Russia
Ключевые слова
Content recommendation systems; algorithmic approaches; new media platforms; personalization; user engagement
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