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Word Familiarity Rate Estimation Using a Bayesian Linear Mixed Model

机译:贝叶斯线性混合模型的单词熟悉率估计

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This paper presents research on word familiarity rate estimation using the 'Word List by Semantic Principles'. We collected rating information on 96,557 words in the 'Word List by Semantic Principles' via Yahoo! crowd-sourcing. We asked 3,392 subject participants to use their introspection to rate the familiarity of words based on the five perspectives of 'KNOW', 'WRITE', 'READ', 'SPEAK', and 'LISTEN', and each word was rated by at least 16 subject participants. We used Bayesian linear mixed models to estimate the word familiarity rates. We also explored the ratings with the semantic labels used in the 'Word List by Semantic Principles'.
机译:本文介绍了使用“基于语义原则的单词表”进行单词熟悉度估计的研究。我们通过Yahoo!收集了“语义原则单词列表”中96,557个单词的评分信息。众包。我们要求3,392名受试者参加者进行内省,以基于“了解”,“写”,“阅读”,“讲话”和“听”的五个观点对单词的熟悉程度进行评分,并且每个单词的评分至少为16名受试者。我们使用贝叶斯线性混合模型来估计单词的熟悉率。我们还使用“语义原则单词列表”中使用的语义标签探索了评级。

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