4.5 Article

DiVA: A Scalable, Interactive and Customizable Visual Analytics Platform for Information Diffusion on Large Networks

Journal

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3558771

Keywords

Information diffusion; diffusion visualization; diffusion analytics

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This article introduces a tool called DiVA, which provides a scalable web interface and extendable APIs for analyzing different diffusion trends on networks. DiVA stands out from other available interfaces by allowing simultaneous comparison of two competing diffusion models and comparison with ground-truth results, facilitating a coherent understanding of real-world scenarios. Through a user study, it was found that evaluators had a seamless user experience, particularly when analyzing diffusion on large networks.
With an increasing outreach of digital platforms in our lives, researchers have taken a keen interest in studying different facets of social interactions. Analyzing the spread of information (aka diffusion) has brought forth multiple research areas such as modelling user engagement, determining emerging topics, forecasting the virality of online posts and predicting information cascades. Despite such ever-increasing interest, there remains a vacuum among easy-to-use interfaces for large-scale visualization of diffusion models. In this article, we introduce DiVA-Diffusion Visualization andAnalysis, a tool that provides a scalableweb interface and extendable APIs to analyze various diffusion trends on networks. DiVA uniquely offers support for simultaneous comparison of two competing diffusion models and even the comparison with the ground-truth results, which help develop a coherent understanding of real-world scenarios. Along with performing an exhaustive feature comparison and system evaluation of DiVA against publicly-available web interfaces for information diffusion, we conducted a user study to understand the strengths and limitations of DiVA. We noticed that evaluators had a seamless user experience, especially when analyzing diffusion on large networks.

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