Research Post
Abstract: A method uses natural language for visual analysis of a dataset. The method displays a data visualization based on a first dataset. The method then extracts analytic phrases from a first natural language command related to the data visualization. The method computes conversation centers associated with the first natural language command based on the analytic phrases and computes analytical functions for the conversation centers, thereby creating functional phrases. The method updates the data visualization based on the functional phrases. The method extracts new analytic phrases from a second natural language command related to the updated data visualization and computes a temporary conversation centers associated with the second natural language command based on the new analytic phrases. The method derives new conversation centers from the original conversation centers and the temporary conversation centers using transitional rules. The method then updates the data visualization based on the new conversation centers.
Jul 22nd 2022
Research Post
Read this research paper, co-authored by Canada CIFAR AI Chair Angel Chang: D3Net: A Unified Speaker-Listener Architecture for 3D Dense Captioning and Visual Grounding
Jul 7th 2022
Research Post
Read this research paper, co-authored by Fellow & Canada CIFAR AI Chair Russ Greiner: Prediction of Obsessive-Compulsive Disorder: Importance of neurobiology-aided feature design and cross-diagnosis transfer learning
Mar 30th 2022
Research Post
Read this research paper co-authored by Canada CIFAR AI Chair Angel Chang: OPD: Single-view 3D Openable Part Detection
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