Rosen, PaulSuh, AshleySalgado, ChristopherHajij, MustafaKerren, Andreas and Garth, Christoph and Marai, G. Elisabeta2020-05-242020-05-242020978-3-03868-106-9https://doi.org/10.2312/evs.20201053https://diglib.eg.org:443/handle/10.2312/evs20201053Line charts are commonly used to visualize a series of data values. When the data are noisy, smoothing is applied to make the signal more apparent. Conventional methods used to smooth line charts, e.g., using subsampling or filters, such as median, Gaussian, or low-pass, each optimize for different properties of the data. The properties generally do not include retaining peaks (i.e., local minima and maxima) in the data, which is an important feature for certain visual analytics tasks. We present TopoLines, a method for smoothing line charts using techniques from Topological Data Analysis. The design goal of TopoLines is to maintain prominent peaks in the data while minimizing any residual error. We evaluate TopoLines for 2 visual analytics tasks by comparing to 5 popular line smoothing methods with data from 4 application domains.Attribution 4.0 International LicenseHuman centered computingInformation visualizationVisualization design and evaluation methodsTopoLines: Topological Smoothing for Line Charts10.2312/evs.2020105385-89