Word-level Text Generation from Language Models

P. Netisopakul, Usanisa Taoto
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Abstract

This research constructs and evaluates text generation models created from three different language models, n-gram, a Continuous Bag of Words (CBOW) and gated recurrent unit (GRU), using two training corpora, Berkeley Restaurant (Berkeley) and Alice's Adventures in Wonderland (Alice), and evaluated using two evaluation metrics; perplexity measure and count of grammar errors. The mean perplexities of all three models are comparable for each corpus, the N-gram model produces slightly lower values of perplexity. As for the number of grammatical errors in the Alice corpus, all three models show a slightly higher number of errors than the original corpus. In the Berkeley corpus, the n-gram model had the lowest number of errors, even lower than the original corpus, but the CBOW model had the highest number of errors and the GRU model had the highest number of errors.
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基于语言模型的词级文本生成
本研究使用伯克利餐厅(Berkeley)和爱丽丝梦游仙境(Alice)两个训练语料库,构建并评估了由三种不同的语言模型(n-gram)、连续词袋(CBOW)和门控制循环单元(GRU)创建的文本生成模型,并使用两个评估指标进行了评估;语法错误的困惑度测量和计数。对于每个语料库,这三种模型的平均困惑度是可比较的,N-gram模型产生的困惑度值略低。至于Alice语料库中的语法错误数量,三个模型都显示出比原始语料库稍高的错误数量。在Berkeley语料库中,n-gram模型的错误率最低,甚至低于原始语料库,但CBOW模型的错误率最高,GRU模型的错误率最高。
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