Haruka Suematsu’s research while affiliated with Ochanomizu University and other places

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Publications (3)


Scatterplot layout for high-dimensional data visualization
  • Article

February 2015

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74 Reads

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19 Citations

Journal of Visualization

Yunzhu Zheng

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Haruka Suematsu

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[...]

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Yoshinobu Kawahara

Multi-dimensional data visualization is an important research topic that has been receiving increasing attention. Several techniques that apply scatterplot matrices have been proposed to represent multi-dimensional data as a collection of two-dimensional data visualization spaces. Typically, when using the scatterplot-based approach it is easier to understand relations between particular pairs of dimensions, but it often requires too large display spaces to display all possible scatterplots. This paper presents a technique to display meaningful sets of scatterplots generated from high-dimensional datasets. Our technique first evaluates all possible scatterplots generated from high-dimensional datasets, and selects meaningful sets. It then calculates the similarity between arbitrary pairs of the selected scatterplots, and places relevant scatterplots closer together in the display space while they never overlap each other. This design policy makes users easier to visually compare relevant sets of scatterplots. This paper presents algorithms to place the scatterplots by the combination of ideal position calculation and rectangle packing algorithms, and two examples demonstrating the effectiveness of the presented technique. Graphical Abstract


A Heatmap-Based Time-Varying Multi-variate Data Visualization Unifying Numeric and Categorical Variables

July 2014

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26 Reads

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6 Citations

Most time-varying data in our daily life is multi-variate. Moreover, most of such time-varying data contains both numeric and categorical values. It is often meaningful to visualize both of them as they are often correlated. We aim to visualize every value in such time-varying data in a single display space so that we can discover interesting relationships among the values of the time-varying data. This paper presents a heat map-based time-varying data visualization technique which displays both numeric and categorical values in a single display space. The technique assigns time to the horizontal axis of the display space, and vertically arranges the series of colored belts corresponding to the time-sequence values. It generates one belt for a numeric value, and multiple belts for a categorical value. It clusters the belts according to the similarity of color sequences, and re-arranges the belts based on the clustering result. This paper shows an example of the visualization result applying a time-varying multi-variate marketing dataset.


Arrangement of Low-Dimensional Parallel Coordinate Plots for High-Dimensional Data Visualization

July 2013

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32 Reads

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17 Citations

Multidimensional data visualization is an important research topic that has been receiving increasing attention. Several techniques that use parallel coordinate plots have been proposed to represent all dimensions of data in a single display space. In addition, several other techniques that apply scatter plot matrices have been proposed to represent multidimensional data as a collection of low-dimensional data visualization spaces. Typically, when using the latter approach it is easier to understand relations among particular dimensions, but it is often difficult to observe relations between dimensions separated into different visualization spaces. This paper presents a framework for displaying an arrangement of low-dimensional data visualization spaces that are generated from high-dimensional datasets. Our proposed technique first divides the dimensions of the input datasets into groups of lower dimensions based on their correlations or other relationships. If the groups of lower dimensions can be visualized in independent rectangular spaces, our technique packs the set of low-dimensional data visualizations into a single display space. Because our technique places relevant low-dimensions closer together in the display space, it is easier to visually compare relevant sets of low-dimensional data visualizations. In this paper, we describe in detail how we implement our framework using parallel coordinate plots, and present several results demonstrating its effectiveness.

Citations (3)


... The preprocessed trace output in Step 2 is used to produce a heatmap structure in Step 3 . The heatmap is a compact two-dimensional graphical representation of measured values of numerical data using a chosen color scheme, with one end of the color scheme representing the high values and the other end representing the low values [19]. The variation in color may be by hue or intensity, giving visual insights to the reader about how a phenomenon is clustered or varies over space and time. ...

Reference:

A trace-driven methodology to evaluate and optimize memory management services of distributed operating systems for lightweight manycores
A Heatmap-Based Time-Varying Multi-variate Data Visualization Unifying Numeric and Categorical Variables
  • Citing Conference Paper
  • July 2014

... Claessen et al. [2] visualized high-dimensional datasets by representing a set of low-dimensional subspaces as a combination of PCPs and scatterplots. Suematsu et al. [15] and Zheng et al. [22] also converted high-dimensional datasets into low-dimensional subsets and visualized these subsets using multiple PCPs or scatterplots respectively. These techniques did not provide rich interaction mechanisms to freely select the numbers of dimensions. ...

Scatterplot layout for high-dimensional data visualization
  • Citing Article
  • February 2015

Journal of Visualization