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SUBSCRIPTION-ENHANCED CONTENT DELIVERY

机译:订阅增强的内容交付

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摘要

In existing content delivery systems user accesses are popularly used for predicting the request pattern of contents. In novel web applications such as publish/subscribe services, users explicitly provide statements of interest in the form of subscriptions. These subscriptions provide another source of user information in addition to access patterns. This paper addresses the content delivery problem when user-stated interest is available. Each request by a user is either based on a notification about the availability of content that matches the user's subscriptions, or general browsing that is not based on the publish/subscribe service. We propose two approaches to content delivery that exploit both proactive push-time placement and passive access-time replacement based on the subscription information, the access pattern of subscribers, and that of non-subscribers. In our simulation-based evaluation, the two approaches are compared to an access-based caching only algorithm and to three approaches that were proposed for pure notification-driven accesses in our earlier study. The results demonstrate that incorporating subscription information judiciously can substantially reduce the response time, even when only a small portion of accesses is driven by notifications and the subscription information does not reflect subscribers' accesses perfectly. To our knowledge, this work is the first effort to investigate general content delivery and caching enhanced by using subscription information.
机译:在现有的内容传递系统中,用户访问普遍用于预测内容的请求模式。在诸如发布/订阅服务之类的新颖的Web应用程序中,用户以订阅的形式明确提供感兴趣的声明。除了访问模式之外,这些订阅还提供了另一种用户信息源。当用户陈述的兴趣可用时,本文解决了内容交付问题。用户的每个请求要么基于关于与用户订阅匹配的内容的可用性的通知,要么基于不基于发布/订阅服务的常规浏览。我们提出了两种内容传递方法,它们基于订阅信息,订户和非订户的访问模式,利用主动推送时间放置和被动访问时间替换。在基于仿真的评估中,将这两种方法与基于访问的仅缓存算法进行比较,并与我们先前的研究中针对纯通知驱动的访问提出的三种方法进行了比较。结果表明,即使仅一小部分访问由通知驱动并且订阅信息不能完美反映订户的访问,明智地合并订阅信息也可以大大减少响应时间。就我们所知,这项工作是调查使用订阅信息增强的常规内容交付和缓存的第一项工作。

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