基于聚类层次聚类算法的人格特征提取

N. Yusof, N. Z. Zulkarnain, Sharifah Sakinah Syed Ahmad, Zuraini Othman, Azura Hanim Hashim
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引用次数: 0

摘要

笔迹学(Handwriting/graphology)是描述一个人的非语言表达的一种独特的、独有的工具,它在潜意识中间接地描绘了一个人的精神状态和心理状态。笔迹分析已被证明可以识别和预测精神健康障碍的迹象。本研究探讨马来西亚笔迹的独特笔迹特征,以识别精神健康障碍的早期征兆。提出了一种聚类分层聚类算法,对手写数据进行聚类。这一令人鼓舞的发现表明,这些与众不同的特征在人格特征分析中可能是有用的。这项研究的结果可以扩展和进一步探索,通过一个人的笔迹来识别抑郁症的早期迹象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting Graphological Features for Identifying Personality Traits using Agglomerative Hierarchical Clustering Algorithm
Handwriting/graphology is a unique and exclusive tool that describes one's non-verbal expression, which indirectly portrays the mental state and psychological state of a writer in a subconscious manner. The graphology analysis has been proven to identify and predict the signs of mental health disorders. This study explores the distinctive graphological features in Malaysian handwritings towards the identification of early sign of mental health disorders. The Agglomerative Hierarchical Clustering algorithm was proposed to build up clusters over the handwriting data. The promising finding suggests that the distinctive features could be useful in the personality traits analysis. The results from this study could be extended and further explored for identifying the early signs of depression through one's handwriting.
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