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Multi-Layer Perceptron Classifier and Paillier Encryption Scheme for Friend Recommendation System

机译:朋友推荐系统的多层感知器分类器和Paillier加密方案

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摘要

Now a days, due to the world connectivity aspect social networking sites becomes very popular. Using this sites peoples can interact with each other; also can share the information. But on social networking sites problems of privacy as well as security arises. However, users want to connect with new friends to develop their social associations and also to get data from particular gathering of individuals. In recent days old friend recommendation technique becomes very popular so some of the online social networks (OSNs)can refer this technique. These kinds of methods may compromise the privacy. For resolving this kind of issues it require privacy-preserving friend recommendation methods for social networks. This work is motivated by requirement of friend proposition without appearing seclusion and security when using social networks. The main goal of proposed schema is to help the OSN user by safely makes trust with a more abnormal that is accomplishing by multi-hop recommendation process. For increase the online social contacts of users securely this will used. The present system makes use of secure kNN plan to achieve the secured social directed coordinating. But, due to the KNN, distance based learning is not clear and cost of calculation is very greater. To tackle this issues as well as increased the precision, designed system makes use of Multi-Layer Perceptron classifier for secure social coordinate matching. At the last, from analysis on the security as well as trial outcomes, It will show that the security, feasibility as well as precision of the designed method is higher than previous system.
机译:如今,由于世界连通性方面的原因,社交网站变得非常流行。人们可以使用该站点相互交流;也可以共享信息。但是在社交网站上会出现隐私和安全性问题。但是,用户希望与新朋友建立联系以发展他们的社交关系,并希望从特定的个人聚会中获取数据。近年来,老朋友推荐技术变得非常流行,因此某些在线社交网络(OSN)可以引用该技术。这些类型的方法可能会损害隐私。为了解决这种问题,需要社交网络的保护隐私的朋友推荐方法。这项工作是出于朋友主张的要求,而在使用社交网络时却没有隐居和安全感。所提出的模式的主要目标是通过多跳推荐过程来实现更异常的安全性,从而帮助OSN用户安全地进行信任。为了安全地增加用户的在线社交联系,将使用此功能。本系统利用安全的kNN计划来实现安全的社会定向协调。但是,由于采用了KNN,基于距离的学习尚不清楚,并且计算成本也非常高。为了解决此问题并提高精度,设计的系统利用多层Perceptron分类器进行安全的社会坐标匹配。最后,通过对安全性和试验结果的分析,表明所设计方法的安全性,可行性和精度均高于以前的系统。

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