Clustrophile 2: Guided Visual Clustering Analysis
Marco Cavallo, \c{C}a\u{g}atay Demiralp

TL;DR
Clustrophile 2 is an interactive visualization tool that guides users through clustering analysis, helping them select parameters, interpret clusters, and compare results efficiently, especially in high-dimensional, unlabeled data.
Contribution
The paper introduces Clustrophile 2, a novel interactive tool with a Clustering Tour feature that enhances exploratory clustering analysis and user guidance.
Findings
Improves analysis speed and effectiveness for data scientists.
Facilitates interpretation and comparison of clustering results.
Supports both experts and non-experts in exploratory data analysis.
Abstract
Data clustering is a common unsupervised learning method frequently used in exploratory data analysis. However, identifying relevant structures in unlabeled, high-dimensional data is nontrivial, requiring iterative experimentation with clustering parameters as well as data features and instances. The number of possible clusterings for a typical dataset is vast, and navigating in this vast space is also challenging. The absence of ground-truth labels makes it impossible to define an optimal solution, thus requiring user judgment to establish what can be considered a satisfiable clustering result. Data scientists need adequate interactive tools to effectively explore and navigate the large clustering space so as to improve the effectiveness of exploratory clustering analysis. We introduce \textit{Clustrophile~2}, a new interactive tool for guided clustering analysis.…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
