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Using LSTMs to Assess the Obligatoriness of Phonological Distinctive Features for Phonotactic Learning

机译:使用LSTM评估音位学习中语音区别特征的强制性

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To ascertain the importance of phonetic information in the form of phonological distinctive features for the purpose of segment-level phonotactic acquisition, we compare the performance of two recurrent neural network models of phonotactic learning: one that has access to distinctive features at the start of the learning process, and one that does not. Though the predictions of both models are significantly correlated with human judgments of non-words, the feature-naive model significantly outperforms the feature-aware one in terms of probability assigned to a held-out test set of English words, suggesting that distinctive features are not obligatory for learning phonotactic patterns at the segment level.
机译:为了确定语音信息以音节独特特征的形式对于段级音符习得目的的重要性,我们比较了两种递归音素学习神经网络模型的性能:一种在学习开始时就可以访问独特特征的模型。学习过程,一个没有的过程。尽管这两种模型的预测与人类对非单词的判断都具有显着的相关性,但在分配给保留的英语单词测试集的概率方面,无特征模型明显优于具有特征的模型,这表明独特的特征是在段级别学习拼音练习模式不是强制性的。

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