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Adaptive Cache Replacement in Efficiently Querying Semantic Big Data

机译:有效查询语义大数据的自适应缓存替换

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This paper addresses the problem of querying Knowledge bases (KBs) that store semantic big data. For efficiently querying data the most important factor is cache replacement policy, which determines the overall query response. As cache is limited in size, less frequently accessed data should be removed to provide more space to hot triples (frequently accessed). So, to achieve a similar performance to RDBMS, we proposed an Adaptive Cache Replacement (ACR) policy that predict the hot triples from query log. Moreover, performance bottleneck of triplestore, makes realworld application difficult. To achieve a closer performance similar to RDBMS, we have proposed an Adaptive Cache Replacement (ACR) policy that predict the hot triples from query log. Our proposed algorithm effectively replaces cache with high accuracy. To implement cache replacement policy, we have applied exponential smoothing, a forecast method, to collect most frequently accessed triples. The evaluation result shows that the proposed scheme outperforms the existing cache replacement policies, such as LRU (least recently used) and LFU (least frequently used), in terms of higher hit rates and less time overhead.
机译:本文解决了查询存储语义大数据的知识库(KB)的问题。为了有效查询数据,最重要的因素是高速缓存替换策略,该策略确定总体查询响应。由于缓存大小有限,应删除访问频率较低的数据,以便为热三元组(访问频繁)提供更多空间。因此,为了获得与RDBMS类似的性能,我们提出了一种自适应缓存替换(ACR)策略,该策略可根据查询日志预测热三元组。而且,三重存储的性能瓶颈使现实应用变得困难。为了获得类似于RDBMS的更接近的性能,我们提出了一种自适应缓存替换(ACR)策略,该策略根据查询日志预测热三元组。我们提出的算法有效地替代了高速缓存。为了实施缓存替换策略,我们应用了指数平滑(一种预测方法)来收集最常访问的三元组。评估结果表明,在较高的命中率和较少的时间开销方面,所提出的方案优于现有的高速缓存替换策略,例如LRU(最近最少使用)和LFU(最近最少使用)。

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