What is it about?

Our study examines collective identity development in the early stages of a social movement as it narratively unfolded on Twitter during the 2019 October revolution in Lebanon. Based on a sample extraction of Twitter content from the first month of the revolution and using both thematic and narrative analyses, our study uncovers an entangled temporality where past, present and future strands of narrative time intervene in online identity narratives. Disentangling these digital narratives enabled us to identify three temporal-thematic categories that outline the contours of the emergent online identity: a revisited narrative past evoking collective nostalgia, a disruptive narrative present creating an urgent “presence in the now,” and a prefigurative narrative future that allows online members to collectively re-imagine and co-create their collective selfhood. Taken together, these findings support better understandings of collective identity emergence in digitally-mediated social movements in three different ways. First, building on the organizational literature on temporality in collective identity formation, we highlight how temporal narratives online support and accelerate a nascent collective identity through their immediacy and global reach. Second, by approaching narrated time theoretically and not chronologically, we address recent calls that challenge linear temporal narratives.

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Why is it important?

We highlight how entangled temporality contributes to the emergence of a social movement’s online collective identity. Ultimately, from a methodological perspective, we offer an approach for “disentangling” digital temporality and propose (ante)narrative theory as a useful interpretive lens for better apprehending identity-relevant social media content.

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This page is a summary of: People on the tweets: Online collective identity narratives and temporality in the #LebaneseRevolution, Organization, December 2022, SAGE Publications,
DOI: 10.1177/13505084221137990.
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