文本挖掘和情感分析:探索母子互动情感动态的新视角

IF 1.6 4区 心理学 Q3 PSYCHOLOGY, DEVELOPMENTAL
Chao Liu, Charis Chen
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引用次数: 0

摘要

情绪具有高度动态性和社会性。研究情绪表达的传统方法面临着诸多障碍,例如需要投入大量时间、容易受到人为偏见的影响,以及捕捉细微情绪模式的能力有限。为了应对这些挑战,本研究利用文本挖掘和情感分析来探索母子互动中情感表达的动态模式。我们分析了来自儿童语言数据交换系统(Child Language Data Exchange System)的 8,841 份对话记录,涉及 1,462 个母子二人组。我们计算并分析了极性得分,以揭示母子情绪情感的时间模式。我们的研究结果表明,母亲往往在对话开始和结束时表现出更高水平的积极情绪,而儿童则表现出更线性的积极趋势。通过基于模型的聚类分析,我们确定了两个不同的母亲聚类,其特征是不同程度的情绪表达变化,以及两个表现出不同积极情绪上升率的儿童聚类。在父子层面上,母子极性得分之间的差异随时间而变化,从开始到第 20 个百分位点之间的差异增加,到第 90 个百分位点之前差异减少,然后在对话结束时差异再次增加。这项研究证明了文本挖掘和情感分析在发展研究中的实用性,尤其是在亲子互动的背景下。研究结果对重点培养健康亲子关系的干预措施具有参考意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Text mining and sentiment analysis: A new lens to explore the emotion dynamics of mother‐child interactions
Emotions are highly dynamic and social in nature. Traditional approaches to studying emotion expression face obstacles such as substantial time investments, susceptibility to human biases, and limited capacity to capture nuanced emotional patterns. To address these challenges, this research leveraged text mining and sentiment analysis to explore the dynamic patterns of emotion expression within the context of mother‐child interactions. We analyzed 8,841 conversation transcripts involving 1,462 mother‐child dyads, sourced from the Child Language Data Exchange System. Polarity scores were calculated and analyzed to uncover the temporal patterns of mother and child emotional sentiment. Our findings revealed that mothers tended to exhibit heightened levels of positive emotion at the beginning and conclusion of conversations, whereas children displayed a more linear positive trend. Using model‐based cluster analysis, we identified two distinct clusters of mothers characterized by varying degrees of emotion expression variation and two clusters of children showing different rates of elevation in positive emotion. At the dyadic level, the differences between mother and child polarity scores varied as a function of time, with an increase of difference from the beginning to the 20th percentile point, a decrease until the 90th percentile, and then an increase again towards the end of the conversation. This study demonstrates the utility of text mining and sentiment analysis in developmental studies, particularly in the context of parent‐child interactions. The findings hold informative implications for interventions that focus on fostering healthy parent‐child relationships.
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来源期刊
Social Development
Social Development PSYCHOLOGY, DEVELOPMENTAL-
CiteScore
3.80
自引率
0.00%
发文量
74
期刊介绍: Social Development is a major international journal dealing with all aspects of children"s social development as seen from a psychological stance. Coverage includes a wide range of topics such as social cognition, peer relationships, social interaction, attachment formation, emotional development and children"s theories of mind. The main emphasis is placed on development in childhood, but lifespan, cross-species and cross-cultural perspectives enhancing our understanding of human development are also featured.
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