基于社交媒体偏好的多代理框架的个性化新闻推荐

Murtaza Ashraf, G. Tahir, Sundus Abrar, Mustafa Abdulaali, Saqib Mushtaq, Hamid Mukthar
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引用次数: 7

摘要

对现代人来说,及时了解全球大事是必要的。网络上有很多最新的新闻来源,个人可以利用自己喜欢的新闻来源来获取日常新闻,但大多数时候他们无法获得自己感兴趣的新闻。有必要对新闻进行分析,并根据用户的兴趣对其进行排名。社交媒体可以洞察用户的好恶,用于新闻推荐。本文提出了一个多智能体框架[1],该框架使用了一种基于用户从社交媒体[2]获取的兴趣对新闻文章进行排名的新方法。为此,我们对用户的社交媒体偏好和新闻类别之间的关系进行了建模:我们从社交媒体中提取了类别,并将其与一般新闻类别进行了映射。我们开发的解决方案比当前新闻网站推荐的结果好28%。进一步的实验表明,我们的解决方案可以提供有效的新闻推荐,因为它利用了用户的社交媒体个人资料[3],它总是由用户第一手更新和维护。另一个重要的目标是增加生活中的积极性。这些天,由于恐怖主义活动,世界处于动荡之中。这些活动自然吸引了媒体的报道,呈现出对世界各个地区的不愉快看法。虽然我们身边有很多好的事情/活动,但我们在网络上经常看到暴力和仇恨言论。情感分析是一种用于提取语句影响的技术,即该语句是积极的还是消极的[6],[7]和[8]。情绪分析用于根据有害的负面活动过滤新闻,并显示世界最新发明,行业进步,政府救济计划和其他增长机会的积极新闻。基于这些想法,我们开发了一个android应用程序并进行了试点研究。我们的研究结果表明,当用户通过所提出的系统搜索新闻文章时,用户的满意度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personalized News Recommendation based on Multi-agent framework using Social Media Preferences
Staying updated about global events is a necessity for the modern day man. Many sources for latest news are available on the web, and individuals can make use of their favorite news source to get the daily news, but most of the time they are unable to get the news of desired interest. There is a need to analyze the news and rank them according to user’s interest. Social media can provide an insight on a user’s likes and dislikes, which used for news recommendation. This paper presents a multi-agent framework [1] that uses a novel methodology for ranking news articles on the basis of user’s interests fetched from social media [2]. To do so, we have modeled the relationship between user’s social media preferences and news categories: we have extracted categories from social media, mapped with general news categories. Our developed solution provides 28% better results than current news websites recommendation. Further experimentations show that our solution provides effective news recommendation as it makes use of the user’s social media profile [3], which always updated and maintained by the user firsthand. Another important objective is to increase positivity in one’s life. These days the world is in turmoil due to terrorism activities [4].These activities naturally attract media coverage, presenting an unpleasant view of various regions of the world. Although there are many good things/activities happening around us, we mostly see violence and hate speech everywhere on the web [5]. Sentiment analysis is a technique used to extract the impact of the statement i.e. weather the statement is positive or negative [6], [7], and [8]. Sentiment analysis used to filter news based on harmful negative activities and displaying positive news of latest inventions in world, advancement in the industry, relief packages from governments and other growth opportunities. Based on these ideas, we have developed an android application and performed a pilot study. Our results show higher satisfaction levels for users when searching news articles through the proposed system.
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