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Where Are We So Far? Understanding Data Storytelling Tools from the Perspective of Human-AI Collaboration (2309.15723v2)

Published 27 Sep 2023 in cs.HC and cs.AI

Abstract: Data storytelling is powerful for communicating data insights, but it requires diverse skills and considerable effort from human creators. Recent research has widely explored the potential for AI to support and augment humans in data storytelling. However, there lacks a systematic review to understand data storytelling tools from the perspective of human-AI collaboration, which hinders researchers from reflecting on the existing collaborative tool designs that promote humans' and AI's advantages and mitigate their shortcomings. This paper investigated existing tools with a framework from two perspectives: the stages in the storytelling workflow where a tool serves, including analysis, planning, implementation, and communication, and the roles of humans and AI in each stage, such as creators, assistants, optimizers, and reviewers. Through our analysis, we recognize the common collaboration patterns in existing tools, summarize lessons learned from these patterns, and further illustrate research opportunities for human-AI collaboration in data storytelling.

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Authors (3)
  1. Haotian Li (72 papers)
  2. Yun Wang (229 papers)
  3. Huamin Qu (141 papers)
Citations (20)

Summary

Understanding Data Storytelling Tools from the Perspective of Human-AI Collaboration

The intersection of data storytelling and human-AI collaboration represents an evolving and complex research area, as highlighted in the paper “Where Are We So Far? Understanding Data Storytelling Tools from the Perspective of Human-AI Collaboration” by Li et al. This research serves as a much-needed synthesis of how AI can be implemented to enhance human efforts in creating data narratives, providing a comprehensive survey of existing tools and their applications in various stages of data storytelling workflows.

Overview of Human-AI Collaboration in Data Storytelling

The paper presents a systematic analysis of the roles AI performs in data storytelling, broadly categorized into four stages: analysis, planning, implementation, and communication. Each stage represents a distinct phase in the data storytelling workflow, with specific tasks that AI can augment or automate.

  1. Analysis: This stage involves exploring data sets to unearth insights and forming narratives based on those insights. AI is positioned as both a creator and an assistant, identifying patterns and offering data-driven insights that humans can then refine or directly use. While AI creators process data autonomously, AI assistants complement human creators who retain control over the analytical process.
  2. Planning: The planning phase involves structuring a narrative to guide the audience through the data story. AI can support this stage as planners or assistants by helping to organize insights or suggesting narrative structures. The paper notes that AI's role as a creator here is less frequent, highlighting challenges in modeling narrative coherence and satisfying human creative standards.
  3. Implementation: This stage encompasses the actual crafting of the data story, such as creating visualizations or writing accompanying text. AI entities often serve as creators here, automating the generation of charts or narrative elements based on identified data insights. Human collaborators might refine or edit these elements to align with specific narrative goals.
  4. Communication: Tools in this stage are relatively scarce compared to others, focusing on enhancing how data stories are presented to audiences. AI assists presenters with augmented interaction techniques, such as auto-completion of narratives or interactive adjustments through gestures.

Implications and Future Research Directions

The methodology highlights several implications for creating more effective data storytelling tools:

  • Maximizing Automation and Agency: The paper underscores a significant trend towards balancing AI automation with human agency. This suggests a future roadmap where AI performs highly repetitive or computationally complex tasks, while human creators maintain oversight and infuse creativity, tailoring stories to specific audiences or contexts.
  • Technological Advances: The integration of advanced AI systems, such as LLMs and deep learning, into data storytelling promises richer personalization and more dynamically adaptive narratives. These technologies can potentially streamline the conversion of complex data sets into intuitive and engaging stories.
  • Exploration of Underutilized Roles: While AI creators and assistants are frequently utilized, roles such as AI reviewers or optimizers are less explored. Understanding the potential of these roles could revolutionize how data stories are not only crafted but refined and presented.
  • Collaborative Paradigms: The narrative posits an intriguing vision of future storytelling tools that interface multiple human and AI collaborators, adapting to diverse user needs across varied stages of the storytelling process.

In conclusion, the paper by Li et al. offers an insightful framework for understanding the current landscape and future potential of human-AI collaboration in data storytelling. It identifies a promising pathway for leveraging AI in automating tedious parts of the storytelling process while preserving the nuanced creativity brought by human authors. As AI technologies evolve, the opportunity to develop more sophisticated, user-centric storytelling aids that enhance human creativity without supplanting it continues to expand, promising significant advancements in how data narratives are generated and consumed.