零概率分类器标签描述的无监督排序和聚合

Angelo Basile, Marc Franco-Salvador, Paolo Rosso
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引用次数: 1

摘要

基于标签描述的Zero-shot文本分类器将输入文本和一组标签嵌入到相同的空间中:然后可以使用余弦相似度等度量来选择与输入文本最相似的标签描述作为预测标签。在真正的零尝试设置中,设计良好的标签描述是具有挑战性的,因为没有可用的开发集。受关于分歧学习的文献的启发,我们研究了如何使用重复评级分析的概率模型以无监督的方式选择最佳标签描述。我们在一组不同的数据集和任务(情感、主题和立场)上评估我们的方法。此外,我们还展示了可以聚合多个有噪声的标签描述以提高性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Ranking and Aggregation of Label Descriptions for Zero-Shot Classifiers
Zero-shot text classifiers based on label descriptions embed an input text and a set of labels into the same space: measures such as cosine similarity can then be used to select the most similar label description to the input text as the predicted label. In a true zero-shot setup, designing good label descriptions is challenging because no development set is available. Inspired by the literature on Learning with Disagreements, we look at how probabilistic models of repeated rating analysis can be used for selecting the best label descriptions in an unsupervised fashion. We evaluate our method on a set of diverse datasets and tasks (sentiment, topic and stance). Furthermore, we show that multiple, noisy label descriptions can be aggregated to boost the performance.
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