论文标题
广义监督元阻滞(技术报告)
Generalized Supervised Meta-blocking (technical report)
论文作者
论文摘要
实体分辨率构成了核心数据集成任务,该任务依赖于阻止其二次时间复杂性。模式 - 敏锐的阻塞可实现很高的回忆,不需要领域知识,并且适用于任何结构性和模式异质性的数据。这是以许多无关的候选对(即比较)为代价的,可以通过元封锁技术大大降低,即在块内利用实体的共同出现模式的技术:首先,首先,一个权重方案为每个候选人的分数分配了一个比较的竞争,然后将其匹配,并在某种程度上匹配,并在某种程度上匹配了一个比较,并将其匹配。分数最低。通过将每个比较的多个分数结合到送给二进制分类器的特征向量中,监督的元阻滞超越了这种方法。通过使用概率分类器,广义监督的元障碍物将每对候选者与任何修剪算法都可以使用的分数相关。为了提高有效性,将新的加权方案视为特征。通过广泛的实验分析,我们确定了最好的修剪算法,它们的最佳功能集以及训练集的最小尺寸。最终的方法在几个已建立的基准数据集中取得了出色的性能。
Entity Resolution constitutes a core data integration task that relies on Blocking in order to tame its quadratic time complexity. Schema-agnostic blocking achieves very high recall, requires no domain knowledge and applies to data of any structuredness and schema heterogeneity. This comes at the cost of many irrelevant candidate pairs (i.e., comparisons), which can be significantly reduced through Meta-blocking techniques, i.e., techniques that leverage the co-occurrence patterns of entities inside the blocks: first, a weighting scheme assigns a score to every pair of candidate entities in proportion to the likelihood that they are matching and then, a pruning algorithm discards the pairs with the lowest scores. Supervised Meta-blocking goes beyond this approach by combining multiple scores per comparison into a feature vector that is fed to a binary classifier. By using probabilistic classifiers, Generalized Supervised Meta-blocking associates every pair of candidates with a score that can be used by any pruning algorithm. For higher effectiveness, new weighting schemes are examined as features. Through an extensive experimental analysis, we identify the best pruning algorithms, their optimal sets of features as well as the minimum possible size of the training set. The resulting approaches achieve excellent performance across several established benchmark datasets.