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Trustworthy dimension reduction for visualization different data sets Presenter: NENG-KAI, HONG Authors: SAFA A. NAJIM, IK SOO LIM 2014, IS Intelligent Database Systems Lab Outlines Motivation Objectives Methodology Experiments Conclusions Comments 1 Intelligent Database Systems Lab Motivation • The current dimension reduction methods used in visualization may face the problem of false colors. • Metrics used to measure the trustworthiness of each pixel in the visualization are just give only measurement value. 2 Intelligent Database Systems Lab Objectives • To introduce a novel new version of SPE which shows trustworthy behavior—TSPE. • To add a new point-wise metric to measure the trustworthiness of each pixel in the visualization . 3 Intelligent Database Systems Lab Methodology • dimensionality reduction 4 Intelligent Database Systems Lab Methodology • Measurement of the quality of visualization Residual variance (Stress) Correlation function (γ) Local continuity (LC) 5 Intelligent Database Systems Lab Methodology • SPE • TSPE 6 Intelligent Database Systems Lab Experiment 7 Intelligent Database Systems Lab Experiment 8 Intelligent Database Systems Lab Experiment 9 Intelligent Database Systems Lab Methodology • Point-wise quality metric 10 Intelligent Database Systems Lab Experiment 11 Intelligent Database Systems Lab Experiment 12 Intelligent Database Systems Lab Experiment 13 Intelligent Database Systems Lab Experiment 14 Intelligent Database Systems Lab Experiment 15 Intelligent Database Systems Lab Experiment 16 Intelligent Database Systems Lab Experiment 17 Intelligent Database Systems Lab Experiment 18 Intelligent Database Systems Lab Experiment 19 Intelligent Database Systems Lab Experiment 20 Intelligent Database Systems Lab Experiment 21 Intelligent Database Systems Lab Experiment 22 Intelligent Database Systems Lab Experiment 23 Intelligent Database Systems Lab Experiment 24 Intelligent Database Systems Lab Experiment 25 Intelligent Database Systems Lab Experiment 26 Intelligent Database Systems Lab Conclusions • TSPE has a good ability to unfold the curved cylinder data set and preserve the neighborhood distances efficiently. • Visualizations by TSPE can overcome the false colors problem as well as possible. • TSPE can discover more things which are invisible by other methods 27 Intelligent Database Systems Lab Comments • Advantage – A new way to improve dimension reduction performance, but it still needs to be aware of whether there’re some unsuitable data to this method. • Applications – Dimensionality reduction, visualization and tensor image 28 Intelligent Database Systems Lab