大规模Web API协作网络的k核分析

Mingdong Tang, Wenquan Lei, Sixian Lian
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引用次数: 1

摘要

在Web 2.0时代,Web已经成为一个巨大的可编程平台。越来越多的公司通过Web api向公众开放他们的数据和服务。随着Web api的数量和种类的不断增加,可以通过组合不同的api来快速开发新的Web应用程序和增值服务。API之间日益增长的协作由此产生了一种大规模的网络,即Web API协作网络。然而,到目前为止,人们对Web API协作网络的结构和演变过程仍然不清楚。本文使用k-core分解对现实世界的Web API协作网络的内部结构进行了深入分析。我们首先利用从最大的Web API注册表Programmable Web.com上抓取的数据构建Web API协作网络,然后采用k-core分解方法获得网络中心性或核心度不同的子图(即k-cores)。利用度分布和聚类系数等经典统计工具,对Web API协作网络及其k核的结构进行了实验分析。分析结果不仅可以识别出Web API协作网络中最核心的API,而且为可视化和理解Web API协作网络提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A k-core Analysis to Large-Scale Web API Collaboration Networks
The Web has become a huge programmable platform in the Web 2.0 era. More and more companies are opening their data and services to the public through Web APIs. With the increasing number and variety of Web APIs, new Web applications and value-added services can be rapidly developed by combining different APIs. The ever-growing collaborations between APIs thus raise a kind of a large-scale networks, namely Web API collaboration networks. However, the structure and evolution process of Web API collaboration networks are still unclear to people so far. This paper provides a deep analysis to the internal structure of a real-world Web API collaboration network using k-core decomposition. We firstly construct the Web API collaboration network by using the data crawled from the largest Web API registry, Programmable Web.com, and then employ the k-core decomposition method to obtain different subgraphs of the network with different centrality or coreness (i.e., k-cores). We give an experimental analysis to the structures of the Web API collaboration network and its k-cores by using some classic statistical tools, such as degree distribution and clustering coefficient. The analysis results not only can identify the most central APIs in the Web API collaboration network, but also provides a basis for the visualization and understanding of Web API collaboration networks.
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