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Algorithm for prediction of negative links using sentiment analysis in social networks

机译:在社交网络中使用情感分析预测负链路预测的算法

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The social network being one of the most disruptive innovations of the last decade has gathered a huge amount of attention of the people. The posts of the users of the social media are used by many companies in the world to find the mentality of the users, the current trend of the market and many more things. But still, there is a latent potential in the social network. One of the aspect that we were able to discover was about finding the relationship between the users (i.e., especially, the negative link) on the social network using the posts that the users make and the reaction of the other users towards it. The prediction of the negative link can be applied in the cyber security field, to observe the aberrations in the network and further find the malicious nodes in the social network; say, if two nodes are doing things together even though there is no relation between them. It can also be used in improving the recommendation system in social media as if there is some probability between the two nodes of being the enemy or disliking each other then we can remove them from each other's recommendation list or could assign a lower weight to them in our recommendation algorithm. To achieve all this relationship between the nodes we first need to find whether the user is posting posts with positive emotion (like happy, excited, etc.) or negative emotion (like angry, sad, etc.) so that we can further analyze the mentality of the user and use it to recommend the people who we have previously classified with the similar personality. For that, we have used the sentiment analysis, which divides the users into five simple categories: Extremely +ve(i.e.,positive), +ve, Neutral, -ve (i.e.,negative) and Extremely -ve. This research paper explains the methodologies that we have used to achieve the prediction of negative links between the nodes in the social network.
机译:社会网络是过去十年中最具破坏性的创新之一,聚集了对人民的大量关注。社交媒体的用户的帖子被世界上许多公司使用,以找到用户的心态,目前市场的趋势等等。但仍然,社交网络中存在潜在的潜力。我们能够发现的一个方面是使用用户对其的帖子和其他用户对其的反应来找到社交网络上的用户(特别是负链接)之间的关系。可以在网络安全领域应用对负极的预测,以观察网络中的像差,并进一步查找社交网络中的恶意节点;说,如果两个节点正在一起做事,即使它们之间没有关系。它也可以用于在社交媒体中改进推荐系统,好像是敌人的两个节点之间存在一些概率,或者互相不喜欢那么我们可以从彼此的推荐列表中删除它们,或者可以为它们分配较低的重量我们的推荐算法。为了实现节点之间的所有这些关系,我们首先需要找到用户是否正在发布积极情绪的帖子(如快乐,兴奋等)或负面情绪(如生气,悲伤等),以便我们进一步分析用户的心态并使用它推荐我们以前归类的人的人。为此,我们使用了情绪分析,该情绪分析将用户划分为五个简单类别:极其+ ve(即正),+ ve,中性, - ve(即,负)和极其极度。本研究论文解释了我们用于实现社交网络中节点之间的负链路的预测的方法。

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