Question-based computational language approach outperforms rating scales in quantifying emotional states

Sverker Sikström, Ieva Valavičiūtė, Inari Kuusela, Nicole Evors
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Abstract

Psychological constructs are commonly quantified with closed-ended rating scales. However, recent advancements in natural language processing (NLP) enable the quantification of open-ended language responses. Here we demonstrate that descriptive word responses analyzed using NLP show higher accuracy in categorizing emotional states compared to traditional rating scales. One group of participants (N = 297) generated narratives related to depression, anxiety, satisfaction, or harmony, summarized them with five descriptive words, and rated them using rating scales. Another group (N = 434) evaluated these narratives (with descriptive words and rating scales) from the author’s perspective. The descriptive words were quantified using NLP, and machine learning was used to categorize the responses into the corresponding emotional states. The results showed a significantly higher number of accurate categorizations of the narratives based on descriptive words (64%) than on rating scales (44%), questioning the notion that rating scales are more precise in measuring emotional states than language-based measures. Using participants’ self-experienced emotions as ground truth, emotional states were more often categorized correctly using descriptive words analyzed with natural language processing as compared to traditional rating scales.

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在量化情绪状态方面,基于问题的计算语言方法优于评级量表
心理结构通常采用封闭式评分量表进行量化。然而,自然语言处理(NLP)的最新进展使得开放式语言反应的量化成为可能。我们在此证明,与传统的评分量表相比,使用 NLP 分析的描述性词语回答在对情绪状态进行分类时显示出更高的准确性。一组参与者(N = 297)产生了与抑郁、焦虑、满意或和谐相关的叙述,用五个描述性词语对其进行了总结,并使用评分表对其进行了评分。另一组参与者(434 人)则从作者的角度对这些叙述(使用描述性词语和评分表)进行评价。使用 NLP 对描述性词语进行量化,并使用机器学习将反应归类为相应的情绪状态。结果显示,根据描述性词语对叙述进行准确分类的比例(64%)明显高于根据评分标准进行分类的比例(44%),这对评分标准在测量情绪状态方面比基于语言的测量方法更精确的观点提出了质疑。以参与者的自我情绪体验作为基本事实,与传统的评分表相比,使用自然语言处理技术分析的描述性词语更能正确地对情绪状态进行分类。
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