2018
DOI: 10.1177/0095327x18811382
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Micro-Sociology and New Wars: Visual Analysis of Terror Attacks During the “Intifada of the Individuals”

Abstract: This study explores the “black box” of face-to-face violence during terror attacks. It is based upon visual analysis of a representative sample of terror attacks that occurred in Israel during 2015–2016, a period which is labeled “The Intifada of Individuals.” We offer a new method for this purpose by using available materials that military sociologists can retrieve and employ when they use the “macro”-level framework in their study of “micro”-level actions. The abundance of audiovisual devices allows a new pe… Show more

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Cited by 6 publications
(1 citation statement)
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References 22 publications
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“…At this stage we ignored all other aspects raised in the conversationsas issues concerning the greater IDFand focused only on the topic of gender integration. The time of the data collection was during intense security challenges following the 'Intifada of the Individuals' (Ben-Shalom, Moshe, Mash, & Dvir, 2018). During this period the actions of mixed-gender operational battalions were tested a number of times.…”
Section: Information and Analysismentioning
confidence: 99%
“…At this stage we ignored all other aspects raised in the conversationsas issues concerning the greater IDFand focused only on the topic of gender integration. The time of the data collection was during intense security challenges following the 'Intifada of the Individuals' (Ben-Shalom, Moshe, Mash, & Dvir, 2018). During this period the actions of mixed-gender operational battalions were tested a number of times.…”
Section: Information and Analysismentioning
confidence: 99%