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A Psycholinguistic Approach to Career Selection Using NLP with Deep Neural Network Classifiers

机译:利用深神经网络分类器的NLP职业选择的精神语言学方法

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Career direction is a crucial matter not to be undermined in the development of a more efficient generation of the corporate workforce. In order to obtain accurate career direction, one would think of different ways of identifying attributes that would lead to an accurate classification of personality. In this paper, the goal is extracting personality from the use of language. The paper covers all aspects of this process in terms of Text Normalization Techniques, Feature Extraction, Feature Selection, Data Pre-Processing, Data Sampling, Training Predictive Models to predict personality types, validating the results on test data, and finally, and finally,compare the findings with other approaches to personality classification. After having a personality type classified, the process is as simple as matching career paths that are most likely suitable for the user. All these processes combined by experimenting with various approaches to each operation would result in personality attribute classifiers yielding an average of 96% accuracy.
机译:职业方向是一个关键问题,不受在制定更有效的企业劳动力的发展方面的关键问题。为了获得准确的职业方向,人们会想到不同的方式识别会导致性格准确分类的属性。在本文中,目标是从使用语言中提取人格。本文在文本规范化技术方面涵盖了该过程的所有方面,功能提取,特征选择,数据预处理,数据采样,培训预测模型,以预测人格类型,验证测试数据的结果,最后,最后,最后,将其他方法与人格分类的方法进行比较。在分类个性类型之后,该过程与匹配最适合用户的职业路径一样简单。通过对每个操作的各种方法进行实验组合的所有这些过程将导致人格属性分类器,其平均精度为96%。

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