Record2Vec: Unsupervised Representation Learning for Structured Records

Adelene Y. L. Sim, Andrew Borthwick
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引用次数: 9

Abstract

Structured records - data with a fixed number of descriptive fields (or attributes) - are often represented by one-hot encoded or term frequency-inverse document frequency (TF-IDF) weighted vectors. These vectors are typically sparse and long, and are inefficient in representing structured records. Here, we introduce Record2Vec, a framework for generating dense embeddings of structured records by training associations between attributes within record instances. We build our embedding from a simple premise that structured records have attributes that are associated, and therefore we can train the embedding of an attribute based on other attributes (or context), much like how we train embeddings for words based on their surrounding context. Because this embedding technique is general and does not assume the availability of any labeled data, it is extendable across different domains and fields. We demonstrate its utility in the context of clustering, record matching, movie rating and movie genre prediction.
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结构化记录的无监督表示学习
结构化记录——具有固定数量的描述性字段(或属性)的数据——通常由单热编码或术语频率逆文档频率(TF-IDF)加权向量表示。这些向量通常是稀疏且长,并且在表示结构化记录时效率低下。在这里,我们介绍Record2Vec,这是一个框架,通过训练记录实例中属性之间的关联来生成结构化记录的密集嵌入。我们从一个简单的前提构建嵌入,即结构化记录具有关联的属性,因此我们可以基于其他属性(或上下文)训练属性的嵌入,就像我们基于周围上下文训练单词的嵌入一样。由于这种嵌入技术是通用的,并且不假设任何标记数据的可用性,因此它可以跨不同的域和字段进行扩展。我们展示了它在聚类、记录匹配、电影评级和电影类型预测等方面的实用性。
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