通过不均匀分配潜在主题来改进双图PLSA模型

Jiazhong Nie, Runxin Li, D. Luo, Xihong Wu
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引用次数: 12

摘要

统计语言模型作为许多语音和语言处理应用的重要组成部分,得到了广泛的研究。双元图主题模型结合了传统n元图模型和主题模型的优点,是一种很有前途的语言建模方法。然而,原有的双图主题模型为每个上下文词分配了相同的主题数,但忽略了上下文词潜在语义的复杂性不同的事实,我们提出了一种新的双图主题模型——双图PLSA模型,并提出了一种改进的训练策略,根据对上下文词潜在语义复杂性的估计,不均匀地为上下文词分配潜在主题。因此,得到了一个精细化的双元PLSA模型。对HUB4普通话测试转录的实验表明,该模型优于现有模型,并通过使用改进的双字母PLSA模型进一步提高了困惑度的性能。
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Refine bigram PLSA model by assigning latent topics unevenly
As an important component in many speech and language processing applications, statistical language model has been widely investigated. The bigram topic model, which combines advantages of both the traditional n-gram model and the topic model, turns out to be a promising language modeling approach. However, the original bigram topic model assigns the same topic number for each context word but ignores the fact that there are different complexities to the latent semantics of context words, we present a new bigram topic model, the bigram PLSA model, and propose a modified training strategy that unevenly assigns latent topics to context words according to an estimation of their latent semantic complexities. As a consequence, a refined bigram PLSA model is reached. Experiments on HUB4 Mandarin test transcriptions reveal the superiority over existing models and further performance improvements on perplexity are achieved through the use of the refined bigram PLSA model.
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