On Integrating Information Visualization Techniques into Data Mining: A Review
Keqian Li

TL;DR
This paper surveys recent research and systems that integrate information visualization techniques into data mining processes to enhance data analysis, model construction, and evaluation for more effective and efficient insights.
Contribution
It provides a comprehensive review of how visualization can complement various stages of data mining, bridging the two fields for improved data analytics.
Findings
Visualization improves data understanding in initial analysis
Enhanced model interpretability through visualization tools
Visualization accelerates model evaluation and validation
Abstract
The exploding growth of digital data in the information era and its immeasurable potential value has called for different types of data-driven techniques to exploit its value for further applications. Information visualization and data mining are two research field with such goal. While the two communities advocates different approaches of problem solving, the vision of combining the sophisticated algorithmic techniques from data mining as well as the intuitivity and interactivity of information visualization is tempting. In this paper, we attempt to survey recent researches and real world systems integrating the wisdom in two fields towards more effective and efficient data analytics. More specifically, we study the intersection from a data mining point of view, explore how information visualization can be used to complement and improve different stages of data mining through…
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Taxonomy
TopicsData Visualization and Analytics · Advanced Text Analysis Techniques · Data Mining Algorithms and Applications
