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Multimodal BigFive Personality Trait Analysis Using Communication Skill Indices and Multiple Discussion Types Dataset

机译:使用沟通技巧指标和多种讨论类型数据集的多式联运五人格特质分析

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This paper focuses on multimodal analysis in multiple discussion types dataset for estimating BigFive personality traits. The analysis was conducted to achieve two goals: First, clarifying the effectiveness of multimodal features and communication skill indices to predict the BigFive personality traits. Second, identifying the relationship among multimodal features, discussion type, and the BigFive personality traits. The MATRICS corpus, which contains of three discussion task types dataset, was utilized in this experiment. From this corpus, three sets of multimodal features (acoustic, head motion, and linguistic) and communication skill indices were extracted as the input for our binary classification system. The evaluation was conducted by using F1-score in 10-fold cross validation. The experimental results showed that the communication skill indices are important in estimating agreeableness trait. In addition, the scope and freedom of conversation affected the performance of personality traits estimator. The freer a discussion is, the better personality traits estimator can be obtained.
机译:本文着重于多种讨论类型数据集中的多峰分析,以估计BigFive人格特质。进行该分析以实现两个目标:首先,阐明多模式特征和沟通技巧指标对预测BigFive人格特质的有效性。其次,确定多模式特征,讨论类型和BigFive人格特征之间的关系。实验中使用了MATRICS语料库,该语料库包含三个讨论任务类型数据集。从该语料库中,提取了三组多峰特征(声学,头部运动和语言)和沟通技巧指数,作为我们二进制分类系统的输入。通过在10倍交叉验证中使用F1分数进行评估。实验结果表明,沟通技能指标对于评估一致性特征很重要。此外,谈话的范围和自由度影响人格特质评估者的表现。讨论越自由,就可以获得越好的人格特质估计量。

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