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Estimating Personality Impression from Speed Record Using Hidden Markov Models

机译:使用隐马尔可夫模型从速度记录中估算人格印象

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摘要

When people listen to other's speech for the first time, they always attribute personality traits to the speaker subconsciously. We consider that if robots can predict personality traits of users from their speech, the communication in human-machine interaction will improve significantly. This paper proposes an approach for the automatic estimation of the traits, in which the listeners attribute to unanimous speakers. And the discrimination experiments based on hidden Markov model and canonical discrimination analysis show that, it is possible to predict with high accuracy (more than 75%), whether a speaker is perceived to be in the higher or lower part of the "Extraversion", "Openness", and "conscientiousness" by using nonverbal information.
机译:当人们第一次听别人的演讲时,他们总是在潜意识里将说话者的个性特征归因于说话者。我们认为,如果机器人能够根据用户的语音预测其个性特征,则人机交互中的交流将得到显着改善。本文提出了一种自动估计特征的方法,在这种方法中,听众归属于一致的说话者。并且基于隐马尔可夫模型和规范判别分析的判别实验表明,可以以较高的准确度(大于75%)预测说话者是在“外向”的较高部分还是较低的部分,通过使用非语言信息来实现“开放”和“尽责”。

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