A Machine Learning Approach to Identify the Preferred Representational System of a Person

Mohammad Hossein Amirhosseini, J. Wall
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Abstract

Whenever people think about something or engage in activities, internal mental processes will be engaged. These processes consist of sensory representations, such as visual, auditory, and kinesthetic, which are constantly being used, and they can have an impact on a person’s performance. Each person has a preferred representational system they use most when speaking, learning, or communicating, and identifying it can explain a large part of their exhibited behaviours and characteristics. This paper proposes a machine learning-based automated approach to identify the preferred representational system of a person that is used unconsciously. A novel methodology has been used to create a specific labelled conversational dataset, four different machine learning models (support vector machine, logistic regression, random forest, and k-nearest neighbour) have been implemented, and the performance of these models has been evaluated and compared. The results show that the support vector machine model has the best performance for identifying a person’s preferred representational system, as it has a better mean accuracy score compared to the other approaches after the performance of 10-fold cross-validation. The automated model proposed here can assist Neuro Linguistic Programming practitioners and psychologists to have a better understanding of their clients’ behavioural patterns and the relevant cognitive processes. It can also be used by people and organisations in order to achieve their goals in personal development and management. The two main knowledge contributions in this paper are the creation of the first labelled dataset for representational systems, which is now publicly available, and the use of machine learning techniques for the first time to identify a person’s preferred representational system in an automated way.
识别人的首选表示系统的机器学习方法
每当人们思考某件事或从事某项活动时,就会进行内部心理过程。这些过程包括感官表征,如视觉、听觉和动觉,这些都是不断使用的,它们会对一个人的表现产生影响。每个人在说话、学习或交流时都有一个最喜欢使用的表征系统,识别它可以解释他们表现出的大部分行为和特征。本文提出了一种基于机器学习的自动化方法来识别无意识使用的人的首选表示系统。一种新的方法被用来创建一个特定的标记会话数据集,四种不同的机器学习模型(支持向量机、逻辑回归、随机森林和k近邻)已经实现,并对这些模型的性能进行了评估和比较。结果表明,支持向量机模型在识别个人偏好的表征系统方面表现最好,经过10倍交叉验证后,与其他方法相比,支持向量机模型的平均准确率得分更高。本文提出的自动化模型可以帮助神经语言编程从业者和心理学家更好地了解他们的客户的行为模式和相关的认知过程。它也可以被个人和组织用来实现他们的个人发展和管理目标。本文的两个主要知识贡献是为表征系统创建了第一个标记数据集,该数据集现已公开可用,并且首次使用机器学习技术以自动化的方式识别一个人的首选表征系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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