Information Support for Personalities Socialization Processes Based on Common Interests

T. Batiuk, V. Vysotska
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Abstract

The main objective of this article is to create an information system project for socialization by personal interests on the basis of SEO-technologies and methods of machine learning. The main purpose of this information system is to identify the user within the system using neural networks and to select similar users by analysing the user's current information. An information system was created that, through Identity and JWT tokens, provides optimized and secure authorization, logging, and support functions for the current system user session. Finding a face in a user's photo and checking the presence of a similar user in the database are implemented using convolutional and Siamese neural networks. The analysis and formation of similar user beeps were implemented using fuzzy search algorithms, the Levenshtein algorithm and the Noisy Channel model, which made it possible to maximize the automation of the user selection process and to optimize the time spent in this process. Tools have also been created to view other users’ profiles, preferences and private correspondence. All private correspondence and information about it are stored in the current database. Each user of the system can view all information about sent and received messages. The created information system implements the process of user identification, analysis, selection and further socialization of system users.
基于共同兴趣的人格社会化过程的信息支持
本文的主要目标是基于搜索引擎优化技术和机器学习方法,创建一个个人兴趣社会化的信息系统项目。该信息系统的主要目的是利用神经网络识别系统内的用户,并通过分析用户当前的信息来选择类似的用户。通过Identity和JWT令牌创建了一个信息系统,该系统为当前系统用户会话提供了优化和安全的授权、日志记录和支持功能。在用户的照片中找到人脸并检查数据库中是否存在类似用户是使用卷积和暹罗神经网络实现的。利用模糊搜索算法、Levenshtein算法和噪声信道模型实现了相似用户蜂鸣声的分析和形成,从而最大限度地实现了用户选择过程的自动化,并优化了用户选择过程所花费的时间。还创建了一些工具来查看其他用户的个人资料、偏好和私人通信。所有私人通信及其相关信息都存储在当前数据库中。系统的每个用户都可以查看所有发送和接收的消息信息。所创建的信息系统实现了用户识别、分析、选择和系统用户进一步社会化的过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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