基于中文故事生成的补词量词后处理系统

Rong-Guey Chang, Cheng-Yan Siao, Chia-ying Lee
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引用次数: 0

摘要

近年来,许多领域都与将人工智能引入自然语言生成有关。尽管这些自然语言模型取得了很好的效果,生成了流畅的句子,但它们仍然不能有效地学习字符关系等特征,特别是在汉语中。在生成一个句子的时候,要注意正确预测和生成下面的单词,比如量词,这会导致生成的单词不合适,进而影响后续单词的生成。因此,我们针对控制生成语音部分排序的生成语言模型,修正字符对抗关系和量词设计的不同机制,采用传统分类模型一对一的支持向量机训练,开发了一套注意机制增强模型。结果表明,生成的句子与原始句子排列顺序一致,可以可靠地控制生成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Postprocessing System for Word-Filling and Quantifiers Based on Chinese Story Generation
In recent years, many fields have been related to introducing artificial intelligence to natural language generation. Although these natural language models have excellent results and generate smooth sentences, they are still not effective learning features such as character relationships, especially in the Chinese language. When a sentence is generated, it is necessary to pay attention to the following words to correctly predict and generate, such as quantifiers, which causes the generated words to be inappropriate and then affects the generation of subsequent words. Therefore, we developed a set of attention mechanism enhancement models, aiming at the generative language model that controls the ordering of generated speech parts, revising the different mechanisms of character fighting relationship and quantifier design, and adopting the traditional classification model one-against-all support vector machine training. The results show that the generated sentences are arranged in the same order as the original ones so the generation can be reliably controlled.
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