DataCat:基于关注的开放政府数据(OGD)类别推荐框架

Natnaree Sornkongdang, Nuttapong Sanglerdsinlapachai, Chutiporn Anutariya
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引用次数: 1

摘要

提出了一个针对泰国开放政府数据门户(ThOGD)的数据类别推荐框架,以帮助数据提供者将新数据集发布并注册到门户的数据目录中。然而,现有的方法,如多标签分类问题,并没有充分利用数据类别的语义特征。自然语言处理的深度学习模型在学习不同程度的语义特征抽象方面具有很大的潜力,因为多层多头注意块的每一层都提供了不同的元数据描述片段和相应的标签。为了获得稳健的推荐结果,本文通过ThOGD门户提出了基于注意力的类别推荐框架DataCat: a Category recommendation Framework。在该框架中,将具有特定语义信息的集成多层直接附加到网络的输出层,以提高信息检索的有效性。结果表明,基于注意力的框架对优化损失具有加权效应。当观察精度和f1分数的宏观平均值时,性能分别提高了0.664%和0.557%。其微观平均值分别提高了0.806%和0.698%。
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DataCat: Attention-based Open Government Data (OGD) Category Recommendation Framework
A data category recommendation framework for Thailand’s open government data portal (ThOGD) is proposed to assist data providers when publishing and registering a new dataset into the portal’s data catalog. However, existing approaches such as a multi-label classification problem, have not adopted the semantic features of data categories sufficiently. Deep learning model for Natural Language Processing has recently demonstrated to achieve high potential in learning the different degrees of semantic feature abstraction because all layers of multi-head attention blocks are provided with different fragments of metadata descriptions and corresponding tags. To obtain a robust recommendation result, this paper proposes DataCat: a Category Recommendation Framework using the attention-based framework through the ThOGD portal. Within this framework, the integrated multi-layers with particular semantic information are directly attached to the output layer of a network to enhance the effectiveness of information retrieval. The results point out that the attention-based framework has a weighted effect on loss of optimization. The performance when looking at the macro average of precision and F1-score improves by 0.664% and 0.557%, respectively. The micro average of those improves by 0.806%, and 0.698%, respectively.
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