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Comparing Human and Algorithm Performance on Estimating Word-Based Semantic Similarity

机译:评估基于单词的语义相似度时人与算法的性能比较

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Understanding natural language is an inherently complex task for computer algorithms. Crowdsourcing natural language tasks such as semantic similarity is therefore a promising approach. In this paper, we investigate the performance of crowdworkers and compare them to offline contributors as well as to state of the art algorithms. We will illustrate that algorithms do outperform single human contributors but still cannot compete with results gathered from groups of contributors. Furthermore, we will demonstrate that this effect is persistent across different contributor populations. Finally, we give guidelines for easing the challenge of collecting word based semantic similarity data from human contributors.
机译:了解自然语言是计算机算法固有的复杂任务。因此,众包自然语言任务(例如语义相似性)是一种很有前途的方法。在本文中,我们调查了群众工作人员的表现,并将其与离线贡献者以及最新算法进行了比较。我们将说明算法确实胜过单个贡献者,但仍不能与从贡献者组收集的结果相抗衡。此外,我们将证明这种影响在不同的贡献者群体中是持久的。最后,我们提供了缓解从人类贡献者那里收集基于单词的语义相似性数据的挑战的指南。

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