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Evaluating Neural Morphological Taggers for Sanskrit

机译:评估梵文的神经形态标记

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Neural sequence labelling approaches have achieved state of the art results in morphological tagging. We evaluate the efficacy of four standard sequence labelling models on Sanskrit, a morphologically rich, fusional Indian language. As its label space can theoretically contain more than 40,000 labels, systems that explicitly model the internal structure of a label are more suited for the task, because of their ability to generalise to labels not seen during training. We find that although some neural models perform better than others, one of the common causes for error for all of these models is mispredictions due to syncretism.
机译:神经序列标记方法已在形态标记中取得了最新技术成果。我们在梵文上评估了四个标准序列标签模型的功效,梵文是一种形态丰富的融合印度语言。由于其标签空间理论上可以包含40,000多个标签,因此可以对标签的内部结构进行显式建模的系统更适合该任务,因为它们具有将其泛化成训练过程中看不到的标签的能力。我们发现,尽管某些神经模型的性能优于其他神经模型,但所有这些模型的错误的常见原因之一是归因于融合的错误预测。

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