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Feature-Frequency-Adaptive on-line training for fast and accurate Natural Language Processing

机译:特征频率自适应在线培训,可进行快速,准确的自然语言处理

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摘要

Training speed and accuracy are two major concerns of large-scale natural language processing systems. Typically, we need to make a tradeoff between speed and accuracy. It is trivial to improve the training speed via sacrificing accuracy or to improve the accuracy via sacrificing speed. Nevertheless, it is nontrivial to improve the training speed and the accuracy at the same time, which is the target of this work. To reach this target, we present a new training method, feature-frequency-adaptive on-line training, for fast and accurate training of natural language processing systems. It is based on the core idea that higher frequency features should have a learning rate that decays faster. Theoretical analysis shows that the proposed method is convergent with a fast convergence rate. Experiments are conducted based on well-known benchmark tasks, including named entity recognition, word segmentation, phrase chunking, and sentiment analysis. These tasks consist of three structured classification tasks and one non-structured classification task, with binary features and real-valued features, respectively. Experimental results demonstrate that the proposed method is faster and at the same time more accurate than existing methods, achieving state-of-the-art scores on the tasks with different characteristics.
机译:训练速度和准确性是大规模自然语言处理系统的两个主要问题。通常,我们需要在速度和准确性之间进行权衡。通过牺牲精度来提高训练速度或通过牺牲速度来提高准确性是微不足道的。然而,同时提高训练速度和准确性是不平凡的,这是这项工作的目标。为了达到这个目标,我们提出了一种新的训练方法,即适应特征频率的在线训练,可以快速准确地训练自然语言处理系统。它基于核心思想,即高频特征的学习速率应衰减得更快。理论分析表明,该方法收敛速度快。实验是根据众所周知的基准测试任务进行的,包括命名实体识别,分词,短语组块和情感分析。这些任务包括三个结构化分类任务和一个非结构化分类任务,分别具有二进制特征和实值特征。实验结果表明,所提出的方法比现有方法更快,同时更准确,在具有不同特征的任务上达到了最新的分数。

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