As the number of devices connected to the Internet of Things (IoT) increases significantly, it leads to an exponential growth in the number of services that need to be processed and stored in the large-scale Cloud-based service repositories. An efficient service indexing model is critical for service retrieval and management of large-scale Cloud-based service repositories. The multilevel index model is the state-of-art service indexing model in recent years to improve service discovery and combination. This paper aims to optimize the model to consider the impact of unequal appearing probability of service retrieval request parameters and service input parameters on service retrieval and service addition operations. The least-used key selection method has been proposed to narrow the search scope of service retrieval and reduce its time. The experimental results show that the proposed least-used key selection method improves the service retrieval efficiency significantly compared with the designated key selection method in the case of the unequal appearing probability of parameters in service retrieval requests under three indexing models.
翻译:由于连接物联网(IoT)的装置数量大幅增加,因此,需要处理和储存在大型云基服务库的服务数量呈指数增长趋势。高效的服务索引模型对于大规模云基服务库的服务检索和管理至关重要。多级指数模型是近年来改进服务发现和组合的最先进的服务指数模型。本文件旨在优化该模型,以考虑服务检索请求参数和服务输入参数对服务检索和服务增加操作的不均等可能性的影响。提议采用使用最少的关键选择方法是为了缩小服务检索的搜索范围并缩短其时间。实验结果表明,与三个索引模型下服务检索请求参数的不平等可能性相比,拟议使用最少的关键选择方法大大提高了服务检索效率。