一种学习块方案的无监督算法

M. Kejriwal, Daniel P. Miranker
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引用次数: 65

摘要

在许多数据挖掘应用程序中,对数据对象进行明智的比较是必要的步骤,但具有二次复杂度。在诸如记录链接之类的应用程序中,可以应用阻塞方法来降低成本。也就是说,首先将数据划分为一组块,然后对每个块中的对计算成对比较。迄今为止,阻塞方法要求给出阻塞方案,或者提供训练数据,使监督学习算法能够确定阻塞方案。在任何一种情况下,都需要领域专家。本文提出了一种学习表格数据集阻塞方案的无监督方法。该方法分为两个阶段。首先,在整个数据集的记录数上按时间线性自动生成弱标记训练集。第二阶段将阻塞键发现作为Fisher特征选择问题。将该方法与目前最先进的有监督的块密钥发现算法在三个真实数据库上进行了比较,取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Unsupervised Algorithm for Learning Blocking Schemes
A pair wise comparison of data objects is a requisite step in many data mining applications, but has quadratic complexity. In applications such as record linkage, blocking methods may be applied to reduce the cost. That is, the data is first partitioned into a set of blocks, and pair wise comparisons computed for pairs within each block. To date, blocking methods have required the blocking scheme be given, or the provision of training data enabling supervised learning algorithms to determine a blocking scheme. In either case, a domain expert is required. This paper develops an unsupervised method for learning a blocking scheme for tabular data sets. The method is divided into two phases. First, a weakly labeled training set is generated automatically in time linear in the number of records of the entire dataset. The second phase casts blocking key discovery as a Fisher feature selection problem. The approach is compared to a state-of-the-art supervised blocking key discovery algorithm on three real-world databases and achieves favorable results.
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