ConceptExplorer: Visual Analysis of Concept Driftsin Multi-source Time-series Data
July 30, 2020 Β· Declared Dead Β· π IEEE Conference on Visual Analytics Science and Technology
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Authors
Xumeng Wang, Wei Chen, Jiazhi Xia, Zexian Chen, Dongshi Xu, Xiangyang Wu, Mingliang Xu, Tobias Schreck
arXiv ID
2007.15272
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.GR
Citations
37
Venue
IEEE Conference on Visual Analytics Science and Technology
Last Checked
3 months ago
Abstract
Time-series data is widely studied in various scenarios, like weather forecast, stock market, customer behavior analysis. To comprehensively learn about the dynamic environments, it is necessary to comprehend features from multiple data sources. This paper proposes a novel visual analysis approach for detecting and analyzing concept drifts from multi-sourced time-series. We propose a visual detection scheme for discovering concept drifts from multiple sourced time-series based on prediction models. We design a drift level index to depict the dynamics, and a consistency judgment model to justify whether the concept drifts from various sources are consistent. Our integrated visual interface, ConceptExplorer, facilitates visual exploration, extraction, understanding, and comparison of concepts and concept drifts from multi-source time-series data. We conduct three case studies and expert interviews to verify the effectiveness of our approach.
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