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Natural Language Processing for Achieving Sustainable Development: the Case of Neural Labelling to Enhance Community Profiling

机译:实现可持续发展的自然语言处理:神经标签提高社区分析的情况

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In recent years, there has been an increasing interest in the application of Artificial Intelligence - and especially Machine Learning -to the field of Sustainable Development (SD). However, until now, NLP has not been systematically applied in this context. In this paper, we show the high potential of NLP to enhance project sustainability. In particular, we focus on the case of community profiling in developing countries, where, in contrast to the developed world, a notable data gap exists. Here, NLP could help to address the cost and time barrier of structuring qualitative data that prohibits its widespread use and associated benefits. We propose the new extreme multi-class multi-label Automatic User-Perceived Value classification task. We release Stories2Insights (S2I), an expert-annotated dataset of interviews carried out in Uganda, we provide a detailed corpus analysis, and we implement a number of strong neural baselines to address the task. Experimental results show that the problem is challenging, and leaves considerable room for future research at the intersection of NLP and SD.
机译:近年来,对人工智能的应用越来越兴趣 - 特别是机器学习 - 可持续发展领域(SD)。但是,到目前为止,在这种情况下没有系统地应用NLP。在本文中,我们展示了NLP的高潜力,以提高项目可持续性。特别是,我们专注于发展中国家社区分析的情况,与发达国家相比,存在显着的数据差距。在这里,NLP可以帮助解决结构化的定性数据的成本和时间障碍,该数据禁止其广泛使用和相关的益处。我们提出了新的极端多级多标签自动用户感知值分类任务。我们释放故事2Insights(S2I),在乌干达开展的专家注册的采访数据集,我们提供了详细的语料库分析,我们实施了一些强大的神经基线来解决任务。实验结果表明,该问题是挑战性的,留下了NLP和SD交叉口的未来研究的相当间空间。

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