2018
DOI: 10.1109/tvcg.2017.2744805
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SOMFlow: Guided Exploratory Cluster Analysis with Self-Organizing Maps and Analytic Provenance

Abstract: Clustering is a core building block for data analysis, aiming to extract otherwise hidden structures and relations from raw datasets, such as particular groups that can be effectively related, compared, and interpreted. A plethora of visual-interactive cluster analysis techniques has been proposed to date, however, arriving at useful clusterings often requires several rounds of user interactions to fine-tune the data preprocessing and algorithms. We present a multi-stage Visual Analytics (VA) approach for iter… Show more

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Cited by 71 publications
(55 citation statements)
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“…We layout the SOM-based relevance model in a tree structure, because it is explainable and an intuitive way of reading a classifier. Techniques introduced by Sacha et al [53] can be used to enhance its descriptive ability. This addition can lead to novel SOM interactions focused on classification rather than exploratory cluster analysis.…”
Section: Discussion and Future Workmentioning
confidence: 99%
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“…We layout the SOM-based relevance model in a tree structure, because it is explainable and an intuitive way of reading a classifier. Techniques introduced by Sacha et al [53] can be used to enhance its descriptive ability. This addition can lead to novel SOM interactions focused on classification rather than exploratory cluster analysis.…”
Section: Discussion and Future Workmentioning
confidence: 99%
“…Visual interactive approaches for cluster evaluation and understanding were presented by Nam et al for general high-dimensional data [46] and by Ruppert et al [52] for the clustering of text documents. Sacha et al present SOMFlow [53], an exploration system that uses Self-Organizing Maps (SOM) to guide the user through an iterative cluster refinement task, leveraging the proximity-preserving property of SOMs [7,59] for clustering and data partitioning tasks. In a model creation task, the user needs to be guided towards areas of high uncertainty.…”
Section: Model Visualization and Understandingmentioning
confidence: 99%
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“…Sedlmair et al [SHB∗14] provide a comprehensive survey of visual analytics tools for analyzing the parameter space of models. Example types of models used by these visual analytics tools include regression [MP13], clustering [NHM∗07, CD19, KEV∗18, SKB∗18], classification [VDEvW11, CLKP10], dimension reduction [CLL∗13, JZF∗09, NM13, AWD12, LWT∗15], and domain‐specific modeling approaches including climate models [WLSL17]. In these examples, the user directly constructs or modifies the parameters of the model through the interaction of sliders or interactive visual elements within the visualization.…”
Section: Related Workmentioning
confidence: 99%
“…SOM not only includes an input layer but also contains a competitive layer, and the input layer is the status of full mesh with the competitive layer through each neuron which refers to one category [39]. According to the rules of learning, the objective of capturing the feature of each of the input models can be attained by repeated learning, and the self-organizing clustering will be carried out in these features.…”
Section: Dsom Introduction Finnish Scholar Kohonen Firstmentioning
confidence: 99%