论文标题
在社交P2P网络中构建社区以共享人类数字记忆
Structuring Communities for Sharing Human Digital Memories in a Social P2P Network
论文作者
论文摘要
社区是P2P网络内部的子网络,该网络将网络分为类似同行的组,通过降低网络流量和高搜索查询成功率来提高性能。与传统的文件共享P2P网络相比,大型社区在在线社交网络中很普遍,因为许多人一生都会捕获大量数据。这增加了网络中具有相似数据的主机数量,因此增加了社区的规模。本文为我们的基于实体的社交P2P网络提供了一个基于内存线程的社区,该网络将网络分为同行共享属于实体的数据 - 人,地点,对象或兴趣,拥有自己的数字记忆或成为另一个内存的一部分。这些连接的同行通过使用线性顺序组织网络,具有进一步的相似性。内存线程是具有具有通用参考密钥的数字记忆的集合,并根据某种形式的相关性组织。模拟结果表明,与其他类似方案相比,该计划方案的网络性能以及网络开销的降低以及更高的查询成功率的增加。即使网络流量和大小增加,网络仍保持其性能。
A community is sub-network inside P2P networks that partition the network into groups of similar peers to improve performance by reducing network traffic and high search query success rate. Large communities are common in online social networks than traditional file-sharing P2P networks because many people capture huge amounts of data through their lives. This increases the number of hosts bearing similar data in the network and hence increases the size of communities. This article presents a Memory Thread-based Communities for our entity-based social P2P network that partition the network into groups of peers sharing data belonging to an entity - person, place, object or interest, having its own digital memory or be a part another memory. These connected peers having further similarities by organizing the network using linear orderings. A Memory-Thread is the collection of digital memories having a common reference key and organized according to some form of correlation. The simulation results show an increase in network performance for the proposed scheme along with a decrease in network overhead and higher query success rate compared to other similar schemes. The network maintains its performance even while the network traffic and size increase.