Learning from the Crowd with Neural Network

Jingjing Li, V. Sheng, Zhenyu Shu, Yanxia Cheng, Yuqin Jin, Yuan-feng Yan
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引用次数: 2

Abstract

In general, the first step for supervised learning from crowdsourced data is integration. To obtain training data as traditional machine learning, the ground truth for each example in the crowdsourcing dataset must be integrated with consensus algorithms. However, some information and correlations among labels in the crowdsourcing dataset have discarded after integration. In order to study whether the information and correlations are useful for learning, we proposed three types of neural networks. Experimental results show that i) all the three types of neural networks have abilities to predict labels for future unseen examples, ii) when labelers have lower qualities, the information and correlations in crowdsourcing datasets, which are discarded by integration, does improve the performance of neural networks significantly, iii) when labelers have higher label qualities, the information and correlations have little impact on improving accuracy of neural networks.
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用神经网络向人群学习
一般来说,从众包数据中进行监督学习的第一步是整合。为了获得传统机器学习的训练数据,必须将众包数据集中每个示例的基本事实与共识算法相结合。然而,众包数据集中标签之间的一些信息和相关性在整合后被丢弃。为了研究这些信息和相关性是否对学习有用,我们提出了三种类型的神经网络。实验结果表明,i)三种类型的神经网络都具有预测未来未见样例标签的能力;ii)当标注器质量较低时,众包数据集中被集成丢弃的信息和相关性确实显著提高了神经网络的性能;iii)当标注器质量较高时,信息和相关性对神经网络精度的提高影响不大。
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