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Dive into the research topics where Hendrik Strobelt is active.

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Featured researches published by Hendrik Strobelt.


IEEE Transactions on Visualization and Computer Graphics | 2014

UpSet: Visualization of Intersecting Sets

Alexander Lex; Nils Gehlenborg; Hendrik Strobelt; Romain Vuillemot; Hanspeter Pfister

Understanding relationships between sets is an important analysis task that has received widespread attention in the visualization community. The major challenge in this context is the combinatorial explosion of the number of set intersections if the number of sets exceeds a trivial threshold. In this paper we introduce UpSet, a novel visualization technique for the quantitative analysis of sets, their intersections, and aggregates of intersections. UpSet is focused on creating task-driven aggregates, communicating the size and properties of aggregates and intersections, and a duality between the visualization of the elements in a dataset and their set membership. UpSet visualizes set intersections in a matrix layout and introduces aggregates based on groupings and queries. The matrix layout enables the effective representation of associated data, such as the number of elements in the aggregates and intersections, as well as additional summary statistics derived from subset or element attributes. Sorting according to various measures enables a task-driven analysis of relevant intersections and aggregates. The elements represented in the sets and their associated attributes are visualized in a separate view. Queries based on containment in specific intersections, aggregates or driven by attribute filters are propagated between both views. We also introduce several advanced visual encodings and interaction methods to overcome the problems of varying scales and to address scalability. UpSet is web-based and open source. We demonstrate its general utility in multiple use cases from various domains.


IEEE Transactions on Visualization and Computer Graphics | 2014

NeuroLines: A Subway Map Metaphor for Visualizing Nanoscale Neuronal Connectivity

Ali K. Al-Awami; Johanna Beyer; Hendrik Strobelt; Narayanan Kasthuri; Jeff W. Lichtman; Hanspeter Pfister; Markus Hadwiger

We present NeuroLines, a novel visualization technique designed for scalable detailed analysis of neuronal connectivity at the nanoscale level. The topology of 3D brain tissue data is abstracted into a multi-scale, relative distance-preserving subway map visualization that allows domain scientists to conduct an interactive analysis of neurons and their connectivity. Nanoscale connectomics aims at reverse-engineering the wiring of the brain. Reconstructing and analyzing the detailed connectivity of neurons and neurites (axons, dendrites) will be crucial for understanding the brain and its development and diseases. However, the enormous scale and complexity of nanoscale neuronal connectivity pose big challenges to existing visualization techniques in terms of scalability. NeuroLines offers a scalable visualization framework that can interactively render thousands of neurites, and that supports the detailed analysis of neuronal structures and their connectivity. We describe and analyze the design of NeuroLines based on two real-world use-cases of our collaborators in developmental neuroscience, and investigate its scalability to large-scale neuronal connectivity data.


IEEE Transactions on Visualization and Computer Graphics | 2018

LSTMVis: A Tool for Visual Analysis of Hidden State Dynamics in Recurrent Neural Networks

Hendrik Strobelt; Sebastian Gehrmann; Hanspeter Pfister; Alexander M. Rush

Recurrent neural networks, and in particular long short-term memory (LSTM) networks, are a remarkably effective tool for sequence modeling that learn a dense black-box hidden representation of their sequential input. Researchers interested in better understanding these models have studied the changes in hidden state representations over time and noticed some interpretable patterns but also significant noise. In this work, we present LSTMVis, a visual analysis tool for recurrent neural networks with a focus on understanding these hidden state dynamics. The tool allows users to select a hypothesis input range to focus on local state changes, to match these states changes to similar patterns in a large data set, and to align these results with structural annotations from their domain. We show several use cases of the tool for analyzing specific hidden state properties on dataset containing nesting, phrase structure, and chord progressions, and demonstrate how the tool can be used to isolate patterns for further statistical analysis. We characterize the domain, the different stakeholders, and their goals and tasks. Long-term usage data after putting the tool online revealed great interest in the machine learning community.


eurographics | 2014

Comparative Exploration of Document Collections: a Visual Analytics Approach

Daniela Oelke; Hendrik Strobelt; Christian Rohrdantz; Iryna Gurevych; Oliver Deussen

We present an analysis and visualization method for computing what distinguishes a given document collection from others. We determine topics that discriminate a subset of collections from the remaining ones by applying probabilistic topic modeling and subsequently approximating the two relevant criteria distinctiveness and characteristicness algorithmically through a set of heuristics. Furthermore, we suggest a novel visualization method called DiTop‐View, in which topics are represented by glyphs (topic coins) that are arranged on a 2D plane. Topic coins are designed to encode all information necessary for performing comparative analyses such as the class membership of a topic, its most probable terms and the discriminative relations. We evaluate our topic analysis using statistical measures and a small user experiment and present an expert case study with researchers from political sciences analyzing two real‐world datasets.


IEEE Transactions on Visualization and Computer Graphics | 2014

ConTour: Data-Driven Exploration of Multi-Relational Datasets for Drug Discovery

Christian Partl; Alexander Lex; Marc Streit; Hendrik Strobelt; Anne Mai Wassermann; Hanspeter Pfister; Dieter Schmalstieg

Large scale data analysis is nowadays a crucial part of drug discovery. Biologists and chemists need to quickly explore and evaluate potentially effective yet safe compounds based on many datasets that are in relationship with each other. However, there is a lack of tools that support them in these processes. To remedy this, we developed ConTour, an interactive visual analytics technique that enables the exploration of these complex, multi-relational datasets. At its core ConTour lists all items of each dataset in a column. Relationships between the columns are revealed through interaction: selecting one or multiple items in one column highlights and re-sorts the items in other columns. Filters based on relationships enable drilling down into the large data space. To identify interesting items in the first place, ConTour employs advanced sorting strategies, including strategies based on connectivity strength and uniqueness, as well as sorting based on item attributes. ConTour also introduces interactive nesting of columns, a powerful method to show the related items of a child column for each item in the parent column. Within the columns, ConTour shows rich attribute data about the items as well as information about the connection strengths to other datasets. Finally, ConTour provides a number of detail views, which can show items from multiple datasets and their associated data at the same time. We demonstrate the utility of our system in case studies conducted with a team of chemical biologists, who investigate the effects of chemical compounds on cells and need to understand the underlying mechanisms.


bioRxiv | 2017

HiGlass: Web-based Visual Comparison And Exploration Of Genome Interaction Maps

Peter Kerpedjiev; Nezar Abdennur; Fritz Lekschas; Chuck McCallum; Kasper Dinkla; Hendrik Strobelt; Jacob M. Luber; Scott Ouellette; Alaleh Ahzir; Nikhil Kumar; Jeewon Hwang; Burak H. Alver; Hanspeter Pfister; Leonid A. Mirny; Peter J. Park; Nils Gehlenborg

We present HiGlass (http://higlass.io). a web-based viewer for genome interaction maps featuring synchronized navigation of multiple views as well as continuous zooming and panning for navigation across genomic loci and resolutions. We demonstrate how visual comparison of Hi-C and other genomic data from different experimental conditions can be used to efficiently identify salient outcomes of experimental perturbations, generate new hypotheses, and share the results with the community.


IEEE Transactions on Visualization and Computer Graphics | 2016

Vials: Visualizing Alternative Splicing of Genes

Hendrik Strobelt; Bilal Alsallakh; Joseph Botros; Brant Peterson; Mark Borowsky; Hanspeter Pfister; Alexander Lex

Alternative splicing is a process by which the same DNA sequence is used to assemble different proteins, called protein isoforms. Alternative splicing works by selectively omitting some of the coding regions (exons) typically associated with a gene. Detection of alternative splicing is difficult and uses a combination of advanced data acquisition methods and statistical inference. Knowledge about the abundance of isoforms is important for understanding both normal processes and diseases and to eventually improve treatment through targeted therapies. The data, however, is complex and current visualizations for isoforms are neither perceptually efficient nor scalable. To remedy this, we developed Vials, a novel visual analysis tool that enables analysts to explore the various datasets that scientists use to make judgments about isoforms: the abundance of reads associated with the coding regions of the gene, evidence for junctions, i.e., edges connecting the coding regions, and predictions of isoform frequencies. Vials is scalable as it allows for the simultaneous analysis of many samples in multiple groups. Our tool thus enables experts to (a) identify patterns of isoform abundance in groups of samples and (b) evaluate the quality of the data. We demonstrate the value of our tool in case studies using publicly available datasets.


IEEE Computer Graphics and Applications | 2014

Ontologies in Biological Data Visualization

Sheelagh Carpendale; Min Chen; Daniel Evanko; Nils Gehlenborg; Carsten Görg; Lawrence Hunter; Francis Rowland; Margaret-Anne D. Storey; Hendrik Strobelt

In computer science, an ontology is essentially a graph-based knowledge representation in which each node corresponds to a concept and each edge specifies a relation between two concepts. Ontological development in biology can serve as a focus to discuss the challenges and possible research directions for ontologies in visualization. The principle challenges are the dynamic and evolving nature of ontologies, the ever-present issue of scale, the diversity and richness of the relationships in ontologies, and the need to better understand the relationship between ontologies and the data analysis tasks scientists wish to support. Research directions include visualizing ontologies; visualizing semantically or ontologically annotated texts, documents, and corpora; automated generation of visualizations using ontologies; and visualizing ontological context to support search. Although this discussion uses issues of ontologies in biological data visualization as a springboard, these topics are of general relevance to visualization.


IEEE Transactions on Visualization and Computer Graphics | 2017

booc.io: An Education System with Hierarchical Concept Maps and Dynamic Non-linear Learning Plans

Michail Schwab; Hendrik Strobelt; James Tompkin; Colin Fredericks; Connor Huff; Dana Higgins; Anton Strezhnev; Mayya Komisarchik; Gary King; Hanspeter Pfister

Information hierarchies are difficult to express when real-world space or time constraints force traversing the hierarchy in linear presentations, such as in educational books and classroom courses. We present booc.io, which allows linear and non-linear presentation and navigation of educational concepts and material. To support a breadth of material for each concept, booc.io is Web based, which allows adding material such as lecture slides, book chapters, videos, and LTIs. A visual interface assists the creation of the needed hierarchical structures. The goals of our system were formed in expert interviews, and we explain how our design meets these goals. We adapt a real-world course into booc.io, and perform introductory qualitative evaluation with students.


Genome Biology | 2018

HiGlass: web-based visual exploration and analysis of genome interaction maps

Peter Kerpedjiev; Nezar Abdennur; Fritz Lekschas; Chuck McCallum; Kasper Dinkla; Hendrik Strobelt; Jacob M. Luber; Scott Ouellette; Alaleh Azhir; Nikhil Kumar; Jeewon Hwang; Soohyun Lee; Burak H. Alver; Hanspeter Pfister; Leonid A. Mirny; Peter J. Park; Nils Gehlenborg

We present HiGlass, an open source visualization tool built on web technologies that provides a rich interface for rapid, multiplex, and multiscale navigation of 2D genomic maps alongside 1D genomic tracks, allowing users to combine various data types, synchronize multiple visualization modalities, and share fully customizable views with others. We demonstrate its utility in exploring different experimental conditions, comparing the results of analyses, and creating interactive snapshots to share with collaborators and the broader public. HiGlass is accessible online at http://higlass.io and is also available as a containerized application that can be run on any platform.

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