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Learning Effective Embeddings From Crowdsourced Labels: An Educational Case Study

机译:从众包标签中学习有效的嵌入:一个教育案例研究

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摘要

Learning representation has been proven to be helpful in numerous machine learning tasks. The success of the majority of existing representation learning approaches often requires a large amount of consistent and noise-free labels. However, labels are not accessible in many real-world scenarios and they are usually annotated by the crowds. In practice, the crowdsourced labels are usually inconsistent among crowd workers given their diverse expertise and the number of crowdsourced labels is very limited. Thus, directly adopting crowdsourced labels for existing representation learning algorithms is inappropriate and suboptimal. In this paper, we investigate the above problem and propose a novel framework of Representation Learning with crowdsourced Labels, i.e., "RLL", which learns representation of data with crowdsourced labels by jointly and coherently solving the challenges introduced by limited and inconsistent labels. The proposed representation learning framework is evaluated in two real-world education applications. The experimental results demonstrate the benefits of our approach on learning representation from limited labeled data from the crowds, and show RLL is able to outperform state-of-the-art baselines. Moreover, detailed experiments are conducted on RLL to fully understand its key components and the corresponding performance.
机译:实践证明,学习表示对许多机器学习任务有帮助。大多数现有表示学习方法的成功通常需要大量一致且无噪音的标签。但是,在许多实际场景中无法访问标签,并且通常会被人群注释。在实践中,由于众包工作人员的专业知识各不相同,而且众包标签的数量非常有限,众包标签通常不一致。因此,直接将众包标签用于现有的表示学习算法是不合适的且次优的。在本文中,我们研究了上述问题,并提出了一个新的使用众包标签的表示学习框架,即“ RLL”,该框架通过共同和连贯地解决有限和不一致的标签带来的挑战来学习使用众包标签的数据表示。在两个现实世界的教育应用程序中评估了提出的表示学习框架。实验结果证明了我们的方法从人群中有限的标记数据中学习表示的好处,并且表明RLL能够胜过最新的基准。此外,在RLL上进行了详细的实验,以充分了解其关键组件和相应的性能。

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