Department of Psychology, Wayne State University.
J Appl Psychol. 2023 Jun;108(6):1027-1045. doi: 10.1037/apl0001061. Epub 2022 Dec 1.
Researchers and practitioners are often interested in assessing employee attitudes and work perceptions. Although such perceptions are typically measured using Likert surveys or some other closed-end numerical rating format, many organizations also have access to large amounts of qualitative employee data. For example, open-ended comments from employee surveys allow workers to provide rich and contextualized perspectives about work. Unfortunately, there are practical challenges when trying to understand employee perceptions from qualitative data. Given this, the present study investigated whether natural language processing (NLP) algorithms could be developed to automatically score employee comments according to important work attitudes and perceptions. Using a large sample of employees, algorithms were developed to translate text into scores that reflect what comments were about (theme scores) and how positively targeted constructs were described (valence scores) for 28 work constructs. The resulting algorithms and scores are labeled the Text-Based Attitude and Perception Scoring (TAPS) dictionaries, which are made publicly available and were built using a mix of count-based scoring and transformer neural networks. The psychometric properties of the TAPS scores were then investigated. Results showed that theme scores differentiated responses based on their likelihood to discuss specific constructs. Additionally, valence scores exhibited strong evidence of reliability and validity, particularly, when analyzed on text responses that were more relevant to the construct of interest. This suggests that researchers and practitioners should explicitly design text prompts to elicit construct-related information if they wish to accurately assess work attitudes and perceptions via NLP. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
研究人员和从业者通常有兴趣评估员工的态度和工作认知。尽管这些认知通常使用李克特量表或其他一些封闭式数字评分格式进行测量,但许多组织也可以访问大量的定性员工数据。例如,员工调查中的开放式评论允许员工提供关于工作的丰富和背景化的观点。不幸的是,当试图从定性数据中理解员工认知时,存在实际挑战。鉴于此,本研究调查了自然语言处理(NLP)算法是否可以开发出来,以便根据重要的工作态度和认知自动对员工评论进行评分。使用大量员工样本,开发了算法将文本转换为反映评论内容(主题得分)和目标结构描述的积极程度(效价得分)的分数,这些算法适用于 28 个工作结构。由此产生的算法和分数被标记为基于文本的态度和感知评分(TAPS)字典,这些字典是公开提供的,是使用基于计数的评分和变压器神经网络的混合体构建的。然后研究了 TAPS 分数的心理测量学特性。结果表明,主题得分根据其讨论特定结构的可能性来区分响应。此外,效价得分表现出很强的可靠性和有效性证据,特别是在分析与感兴趣的结构更相关的文本响应时。这表明,如果研究人员和从业者希望通过 NLP 准确评估工作态度和认知,他们应该明确设计文本提示以引出与结构相关的信息。(PsycInfo 数据库记录(c)2023 APA,保留所有权利)。