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Sounds of silence: Data for analysing muted safety voice in speech

机译:沉默的声音:用于分析言论中的静音安全声音的数据

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Transcribed text from simulated hazards contains important content relevant for preventing harm. By capturing and analysing the content of speech when people raise (safety voice) or withhold safety concerns (safety silence), communication patterns may be identified for when individuals perceive risk, and safety management may be improved through identifying potential antecedents. This dataset contains transcribed speech from 404 participants (nstudents?=?377; nfemale?=?277, Age M(sd)?=?22.897(5.386)) engaged in a simulated hazardous scenario (walking across an unsafe plank), capturing 18,078 English words (M(sd)?=?46.117(37.559)). The data was collected through the Walking the plank paradigm (Noort et?al, 2019), which provides a validated laboratory experiment designed for the direct observation of communication in response to hazardous scenarios that elicit safety concerns. Three manipulations were included in the design: hazard salience (salient vs not salient), responsibilities (clear vs diffuse) and encouragements (encouraged vs discouraged). Speech between two set timepoints in the hazardous scenario was transcribed based on video recordings and coded in terms of the extent to which speech involved safety voice or safety silence. Files contain i) a .csv containing the raw data, ii) a .csv providing variable description, iii) a Jupyter notebook (v. 3.7) providing the statistical code for the accompanying research article, iv) a .html version of the Jupyter notebook, v) a .html file providing the graph for the .html Jupyter notebook, vi) speech dictionaries, and vii) a copy of the electronic questionnaire. The data and supplemental files enable future research through providing a dataset in which participants can be distinguished in terms of the extent to which they are concerned and raise or withhold this. It enables speech and conversation analyses and the Jupyter notebook may be adapted to enable the parsing and coding of text using provided, existing and custom dictionaries. This may lead to the identification of communication patterns and potential interventions for unmuting safety voice. This data-in-brief is published alongside the research article: M. C. Noort, T.W. Reader, A. Gillespie. (2021). The sounds of safety silence: Interventions and temporal patterns unmute unique safety voice content in speech. Safety Science.
机译:来自模拟危险的转录文本包含与防止伤害相关的重要内容。通过捕获和分析人们提高(安全语音)或扣留安全问题(安全沉默)时,可以通过识别潜在的前一种来识别个人感知风险时,可以识别通信模式。该数据集包含来自404名参与者的转录语音(nstudents?=?377; nfemale?=?277,年龄m(sd)?=?22.897(5.386))从事模拟危险场景(走过不安全的木板),捕获18,078英语单词(M(SD)?=?46.117(37.559))。通过步行Plank Paradigm收集数据(Noort et?al,2019),为验证的实验室实验提供了专为引发安全问题的危险情景而直接观察通信的实验室实验。设计中包含三种操作:危险显着(显着与突出者),职责(明确与弥漫)和鼓励(鼓励VS不鼓励)。在危险场景中的两个设置时间点之间的语音基于视频录制转录,并根据语音涉及安全语音或安全沉默的程度进行编码。文件包含i).csv包含原始数据,ii)a .csv提供变量描述,iii)一个jupyter笔记本(v.3.7)为jupyter提供的伴随的研究文章,iv)提供了jupyter的统计代码笔记本,v)一​​个.html文件,为.html jupyter notebook,vi)语音词典和vii提供了电子问卷的副本。数据和补充文件通过提供一个数据集,可以通过提供与他们所关注的程度和提高或扣留这方面的参与者来区分参与者。它能够启用语音和会话分析,并且可以调整jupyter笔记本,以便使用提供的,现有和自定义词典解析和编码文本。这可能导致识别不断安全语音的通信模式和潜在干预措施。这种数据在研究中公布了研究文章:M. C. Noort,T.W.读者,A. Gillespie。 (2021)。安全沉默的声音:干预和时间模式在语音中取消了独特的安全语音内容。安全科学。

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