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HPCGen: Hierarchical K-Means Clustering and Level Based Principal Components for Scan Path Genaration

Wolfgang Fuhl, Enkelejda Kasneci

202233 citationsDOI

Abstract

In this paper, we present a new approach for decomposing scan paths and its utility for generating new scan paths. For this purpose, we use the K-Means clustering procedure to the raw gaze data and subsequently iteratively to find more clusters in the found clusters. The found clusters are grouped for each level in the hierarchy, and the most important principal components are computed from the data contained in them. Using this tree hierarchy and the principal components, new scan paths can be generated that match the human behavior of the original data. We show that this generated data is very useful for generating new data for scan path classification but can also be used to generate fake scan paths. Code can be downloaded here https://atreus.informatik.uni-tuebingen.de/seafile/d/8e2ab8c3fdd444e1a135/?p=%2FHPCGen&mode=list.

Topics & Concepts

HierarchyComputer scienceCluster analysisPath (computing)Hierarchical clusteringPrincipal component analysisTree (set theory)Principal (computer security)Code (set theory)Data miningPattern recognition (psychology)Artificial intelligenceMathematicsSet (abstract data type)Operating systemMarket economyMathematical analysisEconomicsProgramming languageIntegrated Circuits and Semiconductor Failure AnalysisMolecular Biology Techniques and ApplicationsAdvanced Proteomics Techniques and Applications
HPCGen: Hierarchical K-Means Clustering and Level Based Principal Components for Scan Path Genaration | Litcius