Hybrid Recommender for Condensed Sinhala News with Grey Sheep User Identification

Amanda Tennakoon, Nisanka Gamlath, Gayashan Kirindage, Jithmi Ranatunga, P. Haddela, D. Kaveendri
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引用次数: 1

Abstract

With the present explosion of news circulating the digital space, which consists mostly of unstructured textual data, there is a need to absorb the content of news easily and effectively. While there are many Sinhala news sites out there, no site facilitates recommendation despite the popularity of recommender systems in the current age and day. Therefore, it is effective if the news were presented in a summarized version which tallies with the user preferences as well. Our research aims to fill these gaps by providing a centralized news platform that recommends news to its users clearly and concisely. The news articles were collected using web scraping and after performing categorization it will be presented in a summarized context. Also, we expect to detect the grey sheep users and to provide separate recommendations to them in order to minimize errors in the recommendation. By implementing the proposed system, we provide a user-friendly Sinhala news platform.
基于灰羊用户识别的浓缩僧伽罗语新闻混合推荐
随着数字空间中传播的新闻的爆炸式增长,这主要是由非结构化的文本数据组成的,需要方便有效地吸收新闻内容。虽然有很多僧伽罗新闻网站,但没有一个网站能提供推荐,尽管推荐系统在当今时代很流行。因此,如果新闻以符合用户偏好的摘要形式呈现,效果会更好。我们的研究旨在通过提供一个集中式的新闻平台来填补这些空白,该平台可以清晰简洁地向用户推荐新闻。新闻文章收集使用网络抓取和执行分类后,它将呈现在一个总结的上下文中。此外,我们希望检测灰羊用户,并为他们提供单独的建议,以尽量减少推荐中的错误。通过实施该系统,我们提供了一个用户友好的僧伽罗语新闻平台。
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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