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首页> 外文期刊>Egyptian Informatics Journal >Psychological Human Traits Detection based on Universal Language Modeling
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Psychological Human Traits Detection based on Universal Language Modeling

机译:基于普通语言建模的心理人体特征检测

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Personality Traits Detection is one of the important problems as a text analytics task in Natural Language Processing (NLP). Text analytics is the process of finding out insight knowledge over written text. Although most deep learning models give high performance, they often lack interpretability. Computer Vision (CV) has been affected significantly with inductive transfer learning, however training from scratch and task-specific modifications are still wanted in many NLP techniques.This paper addresses the problem of personality traits classification. We adopted the use of the Universal Language Model Fine-Tuning (ULMFiT) in personality traits detection. The model makes use of transfer learning rather than the classical shallow methods of word embedding and proved to be the most powerful model in many NLP problems.The basic advantage of using this model is that there is no need to do feature engineering before classification. When applied to benchmark dataset, the proposed method shows a statistical accuracy improvement of about 1% compared to the state-of-the-art results for the big five personality traits.
机译:人格特征检测是自然语言处理中的文本分析任务(NLP)中的重要问题之一。文本分析是在书面文本上找出洞察知识的过程。虽然大多数深度学习模型表现出高性能,但它们往往缺乏解释性。电阻转移学习受到归纳转移学习的影响,然而,在许多NLP技术中仍然希望从划痕和任务特定的修改训练。本文解决了个性特征分类问题。我们采用了使用普通语言模型微调(ULMFIT)的人格特征检测。该模型利用转移学习而不是宏观嵌入的古典浅层方法,并被证明是许多NLP问题中最强大的模型。使用此模型的基本优势在于,在分类之前没有必要进行特征工程。当应用于基准数据集时,与大五个人格性状的最新结果相比,该方法显示统计学准确性提高约1%。

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