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Hybrid Context Aware Recommendation System for E-Health Care by merkle hash tree from cloud using evolutionary algorithm

机译:混合语境意识推荐制定电子医疗保健建议,Merkle哈希树从云使用进化算法

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Privacy preservation permits doctors to outsource the huge encrypted reports to the cloud and permits the authenticated patients to have a safe search over the reports without leaking the private information. The doctors in our proposed have used the merkle hash tree for storing the reports of all the patients in the hospital. The existing schemes have used many types of trees like binary tree, red-black tree, spanning tree, B+ tree, etc., for the index generation purpose. Since the security is less and the searching time is high for the above said trees, we have proposed the index generation phase based on the merkle hash tree based on the evolutionary algorithm and it takes less time for searching and highly secure for storing the patient reports. The evolutionary algorithm is used for breeding the new data's through crossover as well as mutation operations to give confinement to new children. When the patient submits the search request for specialized doctor, based on the patient disease our protocol will recommend the specialized doctors and send the recommended doctors information to the patients who have the highest rating in the online social networks. After receiving the recommended results, the patient can have the treatment via online booking appointment, video call or in person based on the appointment booked. After completely cured, the patients can rate the doctors based on the medicine satisfaction, doctors' fees and doctor's response over the call. In this mechanism, we have used the hybrid context aware recommendation system collaborative filtering for rating the doctors based on their performance. After rating the doctors, our protocol has measured the accuracy based on the predicted rating and the true rating. This kind of accuracy metrics is used for ranking the good doctors in the top rank for the patient use. Our proposed work Hybrid Context Aware Recommendation System for E-Health Care (HCARS-EHC) is implemented, and the implementation results of HCARS-EHC illustrate that our protocol is efficient based on the privacy preservation, recommendation and ranking with less computation and communication complexity.
机译:隐私保存允许医生将巨大的加密报告外包给云端,并允许经过身份验证的患者在不泄露私人信息的情况下安全搜索报告。我们建议的医生使用Merkle Hash树用于储存医院所有患者的报告。现有方案使用了许多类型的树木,如二叉树,红黑树,生成树,B +树等,用于索引生成目的。由于安全性较少并且对于上述树木的搜索时间很高,因此我们提出了基于进化算法的Merkle哈希树的索引生成阶段,并且需要更少的搜索和高度安全的时间来存储患者报告。进化算法用于通过交叉以及突变操作培育新数据,以便对新儿童提供限制。当患者提出专门医生的搜索请求时,根据患者疾病,我们的协议将推荐专门的医生并将推荐的医生信息发送给在线社交网络中具有最高评级的患者。收到推荐结果后,患者可以通过在线预订预约,视频通话或基于预约的人进行治疗。完全治愈后,患者可以根据医学满意,医生的费用和医生对电话的反应来评估医生。在此机制中,我们使用了混合语境意识推荐系统协作过滤,以根据其性能评定医生。在评级医生之后,我们的协议根据预测的评级和真正的评级来测量了准确性。这种准确性度量标准用于排名患者使用的顶级等级中的好医生。我们所提出的工作混合上下文意识到电子医疗保健(HCARS-EHC)的推荐系统,HCARS-EHC的实施结果表明,我们的协议基于隐私保存,推荐和排名,以较少的计算和通信复杂性为高效。

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