Survey on recommendation and visualization techniques for QOS-aware web services

J. Christi, K. Premkumar
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引用次数: 3

Abstract

With the rapid growth of web services, maintaining QOS in providing the services is an important issue. QOS faces various factors like scalability, response time, service selection, quality control and so on. In this service selection and predicting for the best service is a challenge over the World Wide Web. Many approaches have been used to perform this task and the current approaches fail to consider the QOS variance according to user's location and lacks in transparency. So a novel collaborative filtering algorithm is designed for large-scale web service recommendations. For better understanding a recommendation visualization technique is used to show how the services are grouped based on user's choices.
面向qos的web服务推荐和可视化技术综述
随着web服务的快速发展,在提供服务时保持QOS是一个重要的问题。QOS面临着可扩展性、响应时间、服务选择、质量控制等多方面的因素。在这种情况下,选择和预测最好的服务是万维网面临的一个挑战。目前已有许多方法用于实现该任务,但目前的方法没有考虑到用户位置对QOS的影响,缺乏透明度。为此,设计了一种针对大规模web服务推荐的协同过滤算法。为了更好地理解,使用了推荐可视化技术来显示如何根据用户的选择对服务进行分组。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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