Diversity maximization under matroid constraints

Z. Abbassi, V. Mirrokni, Mayur Thakur
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引用次数: 97

Abstract

Aggregator websites typically present documents in the form of representative clusters. In order for users to get a broader perspective, it is important to deliver a diversified set of representative documents in those clusters. One approach to diversification is to maximize the average dissimilarity among documents. Another way to capture diversity is to avoid showing several documents from the same category (e.g. from the same news channel). We combine the above two diversification concepts by modeling the latter approach as a (partition) matroid constraint, and study diversity maximization problems under matroid constraints. We present the first constant-factor approximation algorithm for this problem, using a new technique. Our local search 0.5-approximation algorithm is also the first constant-factor approximation for the max-dispersion problem under matroid constraints. Our combinatorial proof technique for maximizing diversity under matroid constraints uses the existence of a family of Latin squares which may also be of independent interest. In order to apply these diversity maximization algorithms in the context of aggregator websites and as a preprocessing step for our diversity maximization tool, we develop greedy clustering algorithms that maximize weighted coverage of a predefined set of topics. Our algorithms are based on computing a set of cluster centers, where clusters are formed around them. We show the better performance of our algorithms for diversity and coverage maximization by running experiments on real (Twitter) and synthetic data in the context of real-time search over micro-posts. Finally we perform a user study validating our algorithms and diversity metrics.
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矩阵约束下的多样性最大化
聚合器网站通常以代表性集群的形式呈现文档。为了让用户获得更广阔的视角,在这些集群中提供一组多样化的代表性文档是很重要的。多样化的一种方法是最大化文档之间的平均不相似度。捕获多样性的另一种方法是避免显示来自同一类别的多个文档(例如来自同一新闻频道)。我们将上述两个多样化概念结合起来,将后者建模为一个(划分)矩阵约束,并研究了在矩阵约束下的多样性最大化问题。本文采用一种新技术,提出了该问题的第一个常因子近似算法。我们的局部搜索0.5近似算法也是在矩阵约束下最大色散问题的第一个常因子近似。我们在矩阵约束下最大化分集的组合证明技术使用了一组拉丁平方的存在性,这些拉丁平方也可能具有独立的兴趣。为了将这些多样性最大化算法应用于聚合网站,并作为多样性最大化工具的预处理步骤,我们开发了贪婪聚类算法,以最大化预定义主题集的加权覆盖率。我们的算法是基于计算一组集群中心,在这些中心周围形成集群。在微博实时搜索的背景下,通过在真实(Twitter)和合成数据上运行实验,我们展示了我们的算法在多样性和覆盖最大化方面的更好性能。最后,我们进行了用户研究,验证了我们的算法和多样性指标。
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