259 research outputs found
Highlights from the Fourth International Society for Computational Biology Student Council Symposium at the Sixteenth Annual International Conference on Intelligent Systems for Molecular Biology
RIGHTS : This article is licensed under the BioMed Central licence at http://www.biomedcentral.com/about/license which is similar to the 'Creative Commons Attribution Licence'. In brief you may : copy, distribute, and display the work; make derivative works; or make commercial use of the work - under the following conditions: the original author must be given credit; for any reuse or distribution, it must be made clear to others what the license terms of this work are.Abstract In this meeting report we give an overview of the talks and presentations from the Fourth International Society for Computational Biology (ISCB) Student Council Symposium held as part of the annual Intelligent Systems for Molecular Biology (ISMB) conference in Toronto, Canada. Furthermore, we detail the role of the Student Council (SC) as an international student body in organizing this symposium series in the context of large, international conferences.Published versio
LineUp: Visual Analysis of Multi-Attribute Rankings
Rankings are a popular and universal approach to structuring otherwise unorganized collections of items by computing a rank for each item based on the value of one or more of its attributes. This allows us, for example, to prioritize tasks or to evaluate the performance of products relative to each other. While the visualization of a ranking itself is straightforward, its interpretation is not, because the rank of an item represents only a summary of a potentially complicated relationship between its attributes and those of the other items. It is also common that alternative rankings exist which need to be compared and analyzed to gain insight into how multiple heterogeneous attributes affect the rankings. Advanced visual exploration tools are needed to make this process efficient. In this paper we present a comprehensive analysis of requirements for the visualization of multi-attribute rankings. Based on these considerations, we propose LineUp - a novel and scalable visualization technique that uses bar charts. This interactive technique supports the ranking of items based on multiple heterogeneous attributes with different scales and semantics. It enables users to interactively combine attributes and flexibly refine parameters to explore the effect of changes in the attribute combination. This process can be employed to derive actionable insights as to which attributes of an item need to be modiïŹed in order for its rank to change. Additionally, through integration of slope graphs, LineUp can also be used to compare multiple alternative rankings on the same set of items, for example, over time or across different attribute combinations. We evaluate the effectiveness of the proposed multi-attribute visualization technique in a qualitative study. The study shows that users are able to successfully solve complex ranking tasks in a short period of time.Engineering and Applied Science
Periphery Plots for Contextualizing Heterogeneous Time-Based Charts
Patterns in temporal data can often be found across different scales, such as
days, weeks, and months, making effective visualization of time-based data
challenging. Here we propose a new approach for providing focus and context in
time-based charts to enable interpretation of patterns across time scales. Our
approach employs a focus zone with a time and a second axis, that can either
represent quantities or categories, as well as a set of adjacent periphery
plots that can aggregate data along the time, value, or both dimensions. We
present a framework for periphery plots and describe two use cases that
demonstrate the utility of our approach.Comment: To Appear in IEEE VIS 2019 Short Papers. Open source software and
other materials available on github:
https://github.com/PrecisionVISSTA/PeripheryPlots Video figure available on
Vimeo: https://vimeo.com/34967814
A Generic Framework and Library for Exploration of Small Multiples through Interactive Piling
Small multiples are miniature representations of visual information used
generically across many domains. Handling large numbers of small multiples
imposes challenges on many analytic tasks like inspection, comparison,
navigation, or annotation. To address these challenges, we developed a
framework and implemented a library called Piling.js for designing interactive
piling interfaces. Based on the piling metaphor, such interfaces afford
flexible organization, exploration, and comparison of large numbers of small
multiples by interactively aggregating visual objects into piles. Based on a
systematic analysis of previous work, we present a structured design space to
guide the design of visual piling interfaces. To enable designers to
efficiently build their own visual piling interfaces, Piling.js provides a
declarative interface to avoid having to write low-level code and implements
common aspects of the design space. An accompanying GUI additionally supports
the dynamic configuration of the piling interface. We demonstrate the
expressiveness of Piling.js with examples from machine learning,
immunofluorescence microscopy, genomics, and public health.Comment: - Extended Section 4 to improve the clarity of our rationale -
Expanded Section 7 to elaborate on the intended target user, the lessons
learned from implementing the use cases, and the limitations of visual piling
interfaces - Added Figure S1 and S4 and Table S1 to the supplementary
material - Improved the clarity of our writing in several other sections, and
we corrected grammar and typo
Recommended from our members
Interactive visual exploration and refinement of cluster assignments
Background: With ever-increasing amounts of data produced in biology research, scientists are in need of efficient data analysis methods. Cluster analysis, combined with visualization of the results, is one such method that can be used to make sense of large data volumes. At the same time, cluster analysis is known to be imperfect and depends on the choice of algorithms, parameters, and distance measures. Most clustering algorithms donât properly account for ambiguity in the source data, as records are often assigned to discrete clusters, even if an assignment is unclear. While there are metrics and visualization techniques that allow analysts to compare clusterings or to judge cluster quality, there is no comprehensive method that allows analysts to evaluate, compare, and refine cluster assignments based on the source data, derived scores, and contextual data. Results: In this paper, we introduce a method that explicitly visualizes the quality of cluster assignments, allows comparisons of clustering results and enables analysts to manually curate and refine cluster assignments. Our methods are applicable to matrix data clustered with partitional, hierarchical, and fuzzy clustering algorithms. Furthermore, we enable analysts to explore clustering results in context of other data, for example, to observe whether a clustering of genomic data results in a meaningful differentiation in phenotypes. Conclusions: Our methods are integrated into Caleydo StratomeX, a popular, web-based, disease subtype analysis tool. We show in a usage scenario that our approach can reveal ambiguities in cluster assignments and produce improved clusterings that better differentiate genotypes and phenotypes. Electronic supplementary material The online version of this article (doi:10.1186/s12859-017-1813-7) contains supplementary material, which is available to authorized users
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