社交标签应用中的网络感知搜索:实例最优性与效率

S. Maniu, Bogdan Cautis
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引用次数: 22

摘要

本文研究了社交应用中的top-k查询应答,重点研究了社交标签。这个问题需要从社会不可知论技术中做出重大改变。在网络感知的环境中,人们可以(也应该)利用社会链接,这可以表明用户与搜索者之间的关系,以及他们的标签行为在结果构建中应该占有多大的权重。我们提出的算法具有扩展到当前应用程序的潜力。虽然以前的文献已经考虑过这个问题,但这要么是在严格简化的假设下完成的,要么是在无法扩展到中等规模的实际应用程序的选择下完成的。我们首先回顾这个问题的一个关键方面,即为给定的搜索者访问最接近或最相关的用户。我们描述了如何在运行中(没有任何预先计算)为几个可能的选择(可以说是最自然的选择)在用户网络中进行接近计算。基于此,我们的top-k算法是完善的,解决了现有算法的适用性问题。此外,它在一般情况下表现得更好,并且在搜索完全依赖于标记操作的社会权重的情况下是实例最佳的。为了进一步解决在线应用程序的效率需求,尽管精确搜索是最优的,但仍然可能是昂贵的,我们然后考虑近似算法。具体来说,这些依赖于关于社会网络的简明统计数据或近似的最短路径计算。对Twitter真实数据的大量实验表明,我们的技术可以在不牺牲精度的情况下大幅提高响应时间。
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Network-aware search in social tagging applications: instance optimality versus efficiency
We consider in this paper top-k query answering in social applications, with a focus on social tagging. This problem requires a significant departure from socially agnostic techniques. In a network- aware context, one can (and should) exploit the social links, which can indicate how users relate to the seeker and how much weight their tagging actions should have in the result build-up. We propose algorithms that have the potential to scale to current applications. While the problem has already been considered in previous literature, this was done either under strong simplifying assumptions or under choices that cannot scale to even moderate-size real-world applications. We first revisit a key aspect of the problem, which is accessing the closest or most relevant users for a given seeker. We describe how this can be done on the fly (without any pre- computations) for several possible choices -- arguably the most natural ones -- of proximity computation in a user network. Based on this, our top-k algorithm is sound and complete, addressing the applicability issues of the existing ones. Moreover, it performs significantly better in general and is instance optimal in the case when the search relies exclusively on the social weight of tagging actions. To further address the efficiency needs of online applications, for which the exact search, albeit optimal, may still be expensive, we then consider approximate algorithms. Specifically, these rely on concise statistics about the social network or on approximate shortest-paths computations. Extensive experiments on real-world data from Twitter show that our techniques can drastically improve response time, without sacrificing precision.
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