TECHNOLOGY FOR PERSONALITIES SOCIALIZATION BY COMMON INTERESTS BASED ON MACHINE LEARNING METHODS AND SEO-TECHNOLOGIES

IF 0.2 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
T. Batiuk, V. Vysotska
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引用次数: 0

Abstract

Context. The socialization of individuals with common interests is caused by the need of most people to simplify some of the moments of life by reducing the time for their implementation. With the rapid growth of information, the human workload in society and the recent epidemics of the world, people are becoming isolated from the opportunity to communicate. And this is one of the important needs of human consciousness and self-realization. Therefore, there is an urgent need to be able to obtain a recommended list of similar people of common interest as a result of intelligent search of many relevant users of social networks through analysis of human faces in user photos (based on neural networks) and analysis of user information based on fuzzy search algorithms and Noisy model. Channel). Objective of the study is to develop technology for socialization of individuals based on SEO-technology and machine learning through the use of convolutional and Siamese neural networks to identify users and text analysis algorithms to select relevant users of future communication. Method. In the implementation of SEO-technologies selected fuzzy word search algorithms based on the Noisy Channel model algorithms for efficient distribution of textual information. During the implementation of machine learning, a convolutional neural network was developed to identify users of the system. Results. An intelligent system of socialization of individuals by common interests based on SEO-technology and machine learning methods has been developed. The work of two neural networks was implemented: convolutional and Siamese, which allowed to search for a human face in photos uploaded by the user and compare the found face with those already available in the database / Internet. This makes it possible to effectively identify the authenticity of the user and ensure that this user is not currently in the database, so it is potentially real. Using fuzzy search algorithms, Levenstein’s algorithm and the Noisy Channel model, an algorithm for analyzing and comparing user information was created, which for the current user forms a list of available users of the system, sorted by descending percentage of similarity and indicates how other users’ interests coincide. Conclusions. It was found that the algorithm implemented in the system for forming a sample of users is more efficient and accurate by about 25–30% compared to the usual Levenstein algorithm. Also, the implemented algorithm performs sampling approximately 10 times faster than the usual Levenstein algorithm.
基于机器学习方法和搜索引擎优化技术的共同兴趣个性社会化技术
上下文。具有共同利益的个人的社会化是由于大多数人需要通过减少实现这些利益的时间来简化生活中的某些时刻而引起的。随着信息的快速增长、社会工作量的增加以及最近世界上的流行病,人们正变得与交流的机会隔绝。这是人类意识和自我实现的重要需求之一。因此,迫切需要能够通过对用户照片中的人脸分析(基于神经网络)和基于模糊搜索算法和Noisy模型的用户信息分析,对社交网络的众多相关用户进行智能搜索,从而获得相似的共同兴趣的人的推荐列表。通道)。本研究的目的是开发基于搜索引擎优化技术和机器学习的个人社会化技术,通过使用卷积和暹罗神经网络来识别用户和文本分析算法来选择未来通信的相关用户。在实现seo技术时,选择了基于噪声信道模型算法的模糊词搜索算法来实现文本信息的高效分发。在实现机器学习的过程中,开发了一个卷积神经网络来识别系统的用户。基于搜索引擎优化技术和机器学习方法,开发了一个基于共同利益的个人社会化智能系统。两个神经网络的工作被实现:卷积和暹罗,允许在用户上传的照片中搜索人脸,并将找到的人脸与数据库/互联网上已有的人脸进行比较。这使得有效地识别用户的真实性成为可能,并确保该用户当前不在数据库中,因此它可能是真实的。利用模糊搜索算法、Levenstein算法和噪声通道模型,建立了一种分析和比较用户信息的算法,该算法对当前用户形成了系统的可用用户列表,按相似度百分比降序排序,并指出其他用户的兴趣是如何重合的。研究发现,系统中实现的用户样本形成算法比通常的Levenstein算法效率和准确率提高了25-30%左右。此外,实现的算法执行采样速度比通常的Levenstein算法快约10倍。
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来源期刊
Radio Electronics Computer Science Control
Radio Electronics Computer Science Control COMPUTER SCIENCE, HARDWARE & ARCHITECTURE-
自引率
20.00%
发文量
66
审稿时长
12 weeks
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