Unsupervised, Efficient and Semantic Expertise Retrieval

Christophe Van Gysel, M. de Rijke, M. Worring
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引用次数: 67

Abstract

We introduce an unsupervised discriminative model for the task of retrieving experts in online document collections. We exclusively employ textual evidence and avoid explicit feature engineering by learning distributed word representations in an unsupervised way. We compare our model to state-of-the-art unsupervised statistical vector space and probabilistic generative approaches. Our proposed log-linear model achieves the retrieval performance levels of state-of-the-art document-centric methods with the low inference cost of so-called profile-centric approaches. It yields a statistically significant improved ranking over vector space and generative models in most cases, matching the performance of supervised methods on various benchmarks. That is, by using solely text we can do as well as methods that work with external evidence and/or relevance feedback. A contrastive analysis of rankings produced by discriminative and generative approaches shows that they have complementary strengths due to the ability of the unsupervised discriminative model to perform semantic matching.
无监督、高效的语义专业知识检索
我们引入了一种无监督判别模型,用于在线文档集合中的专家检索任务。我们专门使用文本证据,并通过以无监督的方式学习分布式单词表示来避免显式特征工程。我们将我们的模型与最先进的无监督统计向量空间和概率生成方法进行比较。我们提出的对数线性模型达到了最先进的以文档为中心方法的检索性能水平,而所谓的以概要为中心方法的推理成本较低。在大多数情况下,它在矢量空间和生成模型上产生了统计上显着的改进排名,与监督方法在各种基准上的性能相匹配。也就是说,通过单独使用文本,我们可以使用与外部证据和/或相关反馈相同的方法。判别和生成方法产生的排名对比分析表明,由于无监督判别模型执行语义匹配的能力,它们具有互补的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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