Intelligent system for identifying the user's trust rating

D. Uhryn, Yu.O. Ushenko, A. Y. Dovhun, A. D. Kalancha
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Abstract

The article develops an intelligent system for identifying the user's trust rating, which allows viewing information about contacts that are more aimed at creating trust in the interlocutor or providing information that helps to identify the caller or the person with whom we are trying to contact. The k-nearest neighbours method was chosen to create the recommendation system. The main advantage of using the k-nearest neighbours method is the ability to take into account the unique trust rating of each phone number. It is important not only to find phone numbers with a similar rating, but also to take into account the approximate rating. The k-nearest neighbours method allows you to provide recommendations based on the similarity between phone numbers that have received positive feedback from users with similar preferences. Intelligent recommendation systems can provide phone numbers with similar ratings. When a user requests information about a phone number associated with fraudsters, the system instantly offers low-rated phone numbers that are therefore potential fraudsters.
识别用户信任度的智能系统
这篇文章开发了一个智能系统,用于识别用户的信任等级,从而可以查看有关联系人的信息,这些信息的目的更多是为了让对话者产生信任感,或提供有助于识别来电者或我们试图联系的人的信息。我们选择 k 近邻法来创建推荐系统。使用 k 近邻法的主要优点是能够考虑到每个电话号码的独特信任度。重要的是,不仅要找到具有相似评级的电话号码,还要考虑到近似评级。K 近邻法可以根据从具有相似偏好的用户那里获得积极反馈的电话号码之间的相似性来提供推荐。智能推荐系统可以提供评级相似的电话号码。当用户请求提供与欺诈者有关的电话号码信息时,系统会立即提供评级低的电话号码,这些电话号码因此也是潜在的欺诈者。
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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