基于替换的基于上下文嵌入的语义变化检测

Dallas Card
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引用次数: 1

摘要

到目前为止,测量语义变化仍然是一项任务,使用上下文嵌入的方法在仅依赖静态词向量的更简单技术的基础上一直在努力改进。此外,以前提出的许多方法都存在与可伸缩性和易于解释相关的缺点。我们提出了一种使用上下文嵌入来测量语义变化的简化方法,仅依赖于被掩盖术语的最可能替代品。这种方法不仅可以直接解释,而且在存储方面效率更高,在最常被引用的数据集上实现了优越的平均性能,并且允许比静态词向量更细致的变化调查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Substitution-based Semantic Change Detection using Contextual Embeddings
Measuring semantic change has thus far remained a task where methods using contextual embeddings have struggled to improve upon simpler techniques relying only on static word vectors. Moreover, many of the previously proposed approaches suffer from downsides related to scalability and ease of interpretation. We present a simplified approach to measuring semantic change using contextual embeddings, relying only on the most probable substitutes for masked terms. Not only is this approach directly interpretable, it is also far more efficient in terms of storage, achieves superior average performance across the most frequently cited datasets for this task, and allows for more nuanced investigation of change than is possible with static word vectors.
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