预训练生物医学词表示中的子词信息:评价与超参数优化

Dieter Galea, I. Laponogov, K. Veselkov
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引用次数: 5

摘要

Word2vec嵌入仅限于计算词汇表内术语的向量,而不考虑子词信息。基于字符的表示(如fastText)减轻了这种限制。我们对生物医学领域的这些表示进行了优化和比较。研究发现,在化学物质和基因等实体的命名实体识别任务中,fastText的表现一直优于word2vec。这可能是由于从计算的词汇表外术语向量中获得的信息,以及这些实体的单词组合性。相比之下,性能在内部数据集上有所不同。最优超参数是固有的数据集依赖,可能是由于术语类型分布的差异。这表明应该根据手头的任务来选择嵌入。因此,我们提供了许多优化的超参数集和预训练的word2vec和fastText模型,可在https://github.com/dterg/bionlp-embed上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-word information in pre-trained biomedical word representations: evaluation and hyper-parameter optimization
Word2vec embeddings are limited to computing vectors for in-vocabulary terms and do not take into account sub-word information. Character-based representations, such as fastText, mitigate such limitations. We optimize and compare these representations for the biomedical domain. fastText was found to consistently outperform word2vec in named entity recognition tasks for entities such as chemicals and genes. This is likely due to gained information from computed out-of-vocabulary term vectors, as well as the word compositionality of such entities. Contrastingly, performance varied on intrinsic datasets. Optimal hyper-parameters were intrinsic dataset-dependent, likely due to differences in term types distributions. This indicates embeddings should be chosen based on the task at hand. We therefore provide a number of optimized hyper-parameter sets and pre-trained word2vec and fastText models, available on https://github.com/dterg/bionlp-embed.
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