The content presents a method for enabling natural language-driven manipulation of existing visualizations. Key highlights:
The authors propose a design space for representing visualization-related tasks, which includes operations such as filtering, identification, comparison, aggregation, and derivation.
They introduce a deep learning-based natural language-to-task translator (NL-task translator) that can parse natural language queries into structured and hierarchical task descriptions.
To train the NL-task translator, the authors leverage large-scale language models to assist in curating a diverse cross-domain dataset of natural language expressions and associated tasks.
The authors define a four-level and seven-type visualization manipulation space to facilitate in-situ manipulations of visualizations, enabling fine-grained control over visual elements.
The NL-task translator and visualization manipulation parser work together to transform natural language queries into a sequence of atomic visualization manipulations, which are then applied to the existing visualization.
The effectiveness of the approach is demonstrated through real-world examples and experimental results, highlighting the precision of natural language parsing and the smooth transformation of visualization manipulations.
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