Item

Exploring temporal dynamics in digital trace data: mining user-sequences for communication research

Date

2025

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arXiv

Abstract

Communication is commonly considered a process that is dynamically situated in a temporal context. However, there remains a disconnection between such theoretical dynamicality and the non-dynamical character of communication scholars' preferred methodologies. In this paper, we argue for a new research framework that uses computational approaches to leverage the fine-grained timestamps recorded in digital trace data. In particular, we propose to maintain the hyper-longitudinal information in the trace data and analyze time-evolving 'user-sequences,' which provide rich information about user activity with high temporal resolution. To illustrate our proposed framework, we present a case study that applied six approaches (e.g., sequence analysis, process mining, and language-based models) to real-world user-sequences containing 1,262,775 timestamped traces from 309 unique users, gathered via data donations. Overall, our study suggests a conceptual reorientation towards a better understanding of the temporal dimension in communication processes, resting on the exploding supply of digital trace data and the technical advances in analytical approaches.

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Keywords

Digital trace data, sequence analysis, longitudinal data, platform research, computational method

Citation

Fan, Y., Ohme, J., & Wedel, L. (2025). Exploring temporal dynamics in digital trace data: Mining user-sequences for communication research (Version 1). arXiv. https://doi.org/10.48550/ARXIV.2505.18790

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Except where otherwised noted, this item's license is described as open access