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Deep Learning-Based Document Modeling for Personality Detection from Text

机译:基于深度学习的文档模型用于文本个性检测

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摘要

This article presents a deep learning based method for determining the author's personality type from text: given a text, the presence or absence of the Big Five traits is detected in the author's psychological profile. For each of the five traits, the authors train a separate binary classifier, with identical architecture, based on a novel document modeling technique. Namely, the classifier is implemented as a specially designed deep convolutional neural network, with injection of the document-level Mairesse features, extracted directly from the text, into an inner layer. The first layers of the network treat each sentence of the text separately; then the sentences are aggregated into the document vector. Filtering out emotionally neutral input sentences improved the performance. This method outperformed the state of the art for all five traits, and the implementation is freely available for research purposes.
机译:本文提供了一种基于深度学习的方法,用于从文本确定作者的人格类型:给定文本,可以从作者的心理状况中检测出“五大”特征的存在与否。对于这五个特征中的每一个,作者都基于一种新颖的文档建模技术,训练了一个具有相同架构的单独的二进制分类器。即,将分类器实现为专门设计的深度卷积神经网络,将直接从文本提取的文档级Mairesse特征注入到内部层中。网络的第一层分别处理文本的每个句子;然后将句子汇总到文档向量中。过滤掉情绪中立的输入句子可以提高性能。对于所有五个特征,此方法均优于最新技术,并且该实现可免费用于研究目的。

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