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Making puzzles green and useful for adaptive identity management in large-scale distributed systems

机译:使难题变得绿色,对于大规模分布式系统中的自适应身份管理非常有用

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Various online systems offer a lightweight process for creating accounts (e.g., confirming an e-mail address), so that users can easily join them. With minimum effort, however, an attacker can subvert this process, obtain a multitude of fake accounts, and use them for malicious purposes. Puzzle-based solutions have been proposed to limit the spread of fake accounts, by establishing a price (in terms of computing resources) per identity requested. Although effective, they do not distinguish between requests coming from presumably legitimate users and potential attackers, and also lead to a significant waste of energy and computing power. In this paper, we build on adaptive puzzles and complement them with waiting time to introduce a green design for lightweight, long-term identity management; it balances the complexity of assigned puzzles based on the reputation of the origin (source) of identity requests, and reduces energy consumption caused by puzzle solving. We also take advantage of lessons learned from massive distributed computing to come up with a design that makes puzzle-processing useful. Based on a set of experiments, we show that our solution provides significant energy savings and makes puzzle-solving a useful task, while not compromising effectiveness in limiting the spread of fake accounts. (C) 2015 Elsevier B.V. All rights reserved.
机译:各种在线系统提供了创建帐户的轻量级过程(例如,确认电子邮件地址),以便用户可以轻松地加入它们。但是,攻击者可以用最少的精力来破坏此过程,获取大量的伪造帐户,并将其用于恶意目的。已经提出了基于拼图的解决方案,以通过根据所请求的身份确定价格(就计算资源而言)来限制假帐户的传播。尽管有效,但它们不能区分来自合法用户和潜在攻击者的请求,也导致能源和计算能力的大量浪费。在本文中,我们以自适应难题为基础,并通过等待时间对它们进行补充,以引入绿色设计,以进行轻量级的长期身份管理;它基于身份请求来源(来源)的信誉来平衡分配的难题的复杂性,并减少了解决难题所导致的能耗。我们还利用从大规模分布式计算中学到的经验来设计出使拼图处理有用的设计。基于一组实验,我们证明了我们的解决方案可节省大量能源,并使难题解决成为一项有用的任务,同时又不影响限制虚假账户传播的有效性。 (C)2015 Elsevier B.V.保留所有权利。

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