Treffer: Optimization for Large-Scale n-ary Family Tree Visualization.

Title:
Optimization for Large-Scale n-ary Family Tree Visualization.
Source:
Journal of Information & Communication Convergence Engineering; Mar2023, Vol. 21 Issue 1, p54-61, 8p
Database:
Complementary Index

Weitere Informationen

The family tree is one of the key elements of humanities classics research and is very important for accurately understanding people or families. In this paper, we introduce a method for automatically generating a family tree using information on interpersonal relationships (IIPR) from the Korean Classics Database (KCDB) and visualize interpersonal searches within a family tree using data-driven document JavaScript (d3.js). To date, researchers of humanities classics have wasted considerable time manually drawing family trees to understand people's influence relationships. An automatic family tree builder analyzes a database that visually expresses the desired family tree. Because a family tree contains a large amount of data, we analyze the performance and bottlenecks according to the amount of data for visualization and propose an optimal way to construct a family tree. To this end, we create an n-ary tree with fake data, visualize it, and analyze its performance using simulation results. [ABSTRACT FROM AUTHOR]

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