Публікація: Principles of searching and sorting optimization in social networks using a multi-factor assessment system
Завантаження...
Дата
2019
Назва журналу
ISSN журналу
Назва тома
Видавництво
ХНУРЕ
Анотація
The analysis of social networks, which focuses on the relationship between social entities today is an area of active research. It is a set of tools for research, in particular, in combination with artificial intelligence methods such as machine learning, deep learning. The paper examined the current quality of the assessment of information
in social networks, analyzed the methods of searching and sorting information in various social networks, as well as the process of providing recommendations to users. Social media data is an inexhaustible source of research and business opportunities. In general, social media data is information gathered from social networks that shows
how users interact with content. Methods of improving search results for personalizing recommendations in social networks are given. These indicators and statistics provide an effective understanding of the strategy of behavior in social networks. The advantages and disadvantages of a multifactor assessment system are considered. The possible ways of integrating the combined system of evaluating information elements by the user to optimize search queries and filtering big data are identified.
Опис
Ключові слова
social network, search, filtering, multi-factor assessment system, rating scale, big data
Бібліографічний опис
Shopynskyi M. V. Principles of searching and sorting optimization in social networks using a multi-factor assessment system / M. V. Shopynskyi, N. V. Golian, I. V. Afanasieva // Бионика интеллекта : научно-технический журнал. – 2019. – № 1 (92). – С. 47–51.