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Prosodic Word Prediction Using a Maximum Entropy Approach

机译:使用最大熵方法的韵律词预测

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摘要

As the basic prosodic unit, the prosodic word influences the naturalness and the intelligibility greatly. Although the research shows that the lexicon word are greatly different from the prosodic word, the lexicon word still provides the important cues for the prosodic word forming. The rhythm constraint is another important factor for the prosodic word prediction. Some lexicon word length patterns trend to be combined together. Based on the mapping relationship and the difference between the lexicon words and the prosodic words, the process of the prosodic word prediction is divided into two parts, grouping the lexicon word to the prosodic word and splitting the lexicon word into prosodic words. This paper proposes a maximum entropy method to model these two parts, respectively. The experiment results show that this maximum entropy model is competent for the prosodic word prediction task. In the word grouping model, a feature selection algorithm is used to induce more efficient features for the model, which not only decrease the feature number greatly, but also improve the model performance at the same time. And, the splitting model can correctly detect the prosodic word boundary in the lexicon word. The f-score of the prosodic word boundary prediction reaches 95.55%.
机译:作为基本的韵律单元,韵律词对自然性和清晰度有很大的影响。尽管研究表明词典词与韵律词有很大的不同,但词典词仍然为韵律词的形成提供重要线索。节奏约束是韵律词预测的另一个重要因素。一些词典单词长度模式趋于组合在一起。根据映射关系和词典词与韵律词之间的差异,将韵律词的预测过程分为两部分,将词典词分为韵律词,再将词典词分为韵律词。本文提出了一种最大熵方法分别对这两部分进行建模。实验结果表明,该最大熵模型能够胜任韵律词的预测任务。在词分组模型中,使用特征选择算法为模型引入更有效的特征,不仅大大减少了特征数量,而且同时提高了模型性能。并且,分割模型可以正确地检测词典词中的韵律词边界。韵律词边界预测的f值达到95.55%。

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