An Effective Source Selection Algorithm for Filling Missing Tuples

Hengzhen Xie, Lingli Li, Ping Xuan
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引用次数: 1

Abstract

Completeness is one of the central criteria for data quality, and the completeness of data becomes particularly important. Specifically, incomplete data refers to a data set that does not contain enough information to answer the query, which can be divided into missing the values and tuples. This paper presents a technique of leveraging other data sources to fill missing tuples in target data. However, accessing too many data sources introduces a huge cost, so we investigate how to select a proper subset of sources to fill the missing tuples. Firstly, we define the gain model of sources and introduce the optimization problem of source selection from the perspective of missing tuples, in which the gain is maximized with the cost under a threshold. For filling the missing tuples, we propose a data source selection strategy based on a genetic algorithm. Experimental results show high performance on both the effectiveness of our algorithm.
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一种填充缺失元组的有效源选择算法
完整性是数据质量的中心标准之一,数据的完整性变得尤为重要。具体来说,不完整数据是指不包含足够信息来回答查询的数据集,它可以分为缺失值和元组。本文提出了一种利用其他数据源来填补目标数据中缺失元组的技术。然而,访问过多的数据源会带来巨大的成本,因此我们研究如何选择适当的数据源子集来填充缺失的元组。首先,我们定义了源的增益模型,并从缺失元组的角度引入了源选择的优化问题,该问题以代价在一定阈值下增益最大化为目标。为了填补缺失元组,我们提出了一种基于遗传算法的数据源选择策略。实验结果表明,该算法具有较高的有效性。
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