2018
DOI: 10.1177/0093650217751733
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Who Takes the Lead? Investigating the Reciprocal Relationship Between Organizational and News Agendas

Abstract: This study introduces the element of time to investigate the causal relation between organizational and news media agendas. Reciprocal time-series analyses were applied to daily-level aggregated press releases (n = 17,221) and news articles (n = 74,067). Results indicate that on the first level of agenda building, organizational and news agendas are intertwined in an intimate relation of reciprocal influence, in which organizations more often take the lead. Conversely, results suggest that on the second level … Show more

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Cited by 9 publications
(9 citation statements)
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References 47 publications
(96 reference statements)
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“…To measure emotion valence and emotion strength in the tweets, the textual information was further analyzed by the computer-assisted content analysis software SentiStrength (Thelwall et al, 2010). SentiStrength has been widely recognized as a state-of-art sentiment analysis tool to process short texts (Kroon and Van der Meer, 2021;Thelwall et al, 2010;Vargo et al, 2014). It has been rated among the bestautomated sentiment analysis approaches in terms of human-level accuracy (Kroon and Van der Meer, 2021;Vargo et al, 2014), especially for organizational messages (Kroon and Van der Meer, 2021).…”
Section: Data Collection and Samplementioning
confidence: 99%
“…To measure emotion valence and emotion strength in the tweets, the textual information was further analyzed by the computer-assisted content analysis software SentiStrength (Thelwall et al, 2010). SentiStrength has been widely recognized as a state-of-art sentiment analysis tool to process short texts (Kroon and Van der Meer, 2021;Thelwall et al, 2010;Vargo et al, 2014). It has been rated among the bestautomated sentiment analysis approaches in terms of human-level accuracy (Kroon and Van der Meer, 2021;Vargo et al, 2014), especially for organizational messages (Kroon and Van der Meer, 2021).…”
Section: Data Collection and Samplementioning
confidence: 99%
“…The SentiStrength algorithm is increasingly used in communication research (e.g., Vargo, Guo, McCombs, & Shaw, 2014) and has been shown to perform well compared with similar approaches (Gonçalves, Araújo, Benevenuto & Cha, 2013;González-Bailón & Paltoglou, 2015). The algorithm is also increasingly used in communication research on the effects of company news (e.g., Kroon & Van der Meer, 2018).…”
Section: Content Analysismentioning
confidence: 99%
“…Because SentiStrength creates separate measures for negativity and positivity, articles can score either low or high on positivity and negativity. For example, a very neutral article may have values of 1 for positivity and −1 for negativity, whereas a very opinionated report that highlights different sides of an issue may score +3 and −4 or even +5 and −5 (see for a recent application and evaluation of this method Kroon & Van der Meer, 2018). In our news data, we obtain a Pearson correlation of −0.29 (p < .001) between positivity and negativity, indicating that, on average, articles are skewed toward either positivity or negativity rather than completely neutral.…”
Section: Content Analysismentioning
confidence: 99%
See 1 more Smart Citation
“…Tone in the news was measured with the SentiStrength algorithm (Thelwall et al 2010), an algorithm that performs well (see, e.g. Vargo et al 2014;González-Bailón and Paltoglou 2015), also specifically with regard to company news (Kroon and Van der Meer 2018). The algorithm measures positivity and negativity in texts on a 5-point scale that ranges from −1 (not negative) to −5 (very negative) for negativity and 1 (not positive) to 5 (very positive) for positivity.…”
Section: Dependent Variablesmentioning
confidence: 99%