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AuthorBäuerle, Alexdc.contributor.author
Date of accession2023-03-21T10:11:40Zdc.date.accessioned
Available in OPARU since2023-03-21T10:11:40Zdc.date.available
Year of creation2022dc.date.created
Date of first publication2023-03-21dc.date.issued
AbstractArtificial intelligence (AI) and the use of neural networks have become omnipresent in recent years. Neural networks model complex mathematical functions that can be based on billions, or even trillions, of parameters. At the same time, neural networks make decisions that can deeply impact our lives. Therefore, understanding, testing, and interpreting these networks and their decisions is an integral part of model development and deployment. While there exist introspection techniques that support such understanding, testing, and interpretation, their adoption for diagnosing systems and explaining decisions can be difficult. Current problems with the adoption of introspection techniques are that they are not easily implemented in one's framework, do not work well in combination to create more meaningful analyses, and are difficult to interpret. Through the integration of existing and novel introspection techniques into visualization interfaces, extensive analysis, actionable insights, and effective diagnosis are made widely available. These visualization interfaces can be incorporated into existing development workflows and are designed to support bespoke analysis needs, which makes the interpretation of findings easier. In this thesis, we present published visualization interfaces in three different areas, namely quality assurance, communication, and AI education. These publications include a visualization approach for correcting mislabeled training data, an interface for automatic network figure generation to communicate network architectures, and an educational environment for recurrent neural networks (RNNs). Finally, to unify the diverse landscape of AI visualization interfaces, we also present a framework for composing, reusing, exploring, and sharing such interactive machine learning (ML) interfaces.dc.description.abstract
Languageen_USdc.language.iso
PublisherUniversität Ulmdc.publisher
Has partBäuerle, A., Neumann, H. and Ropinski, T. (2020), Classifier-Guided Visual Correction of Noisy Labels for Image Classification Tasks. Computer Graphics Forum, 39: 195-205. https://doi.org/10.1111/cgf.13973dc.relation.haspart
Has partAlex Bäuerle, Ángel Alexander Cabrera, Fred Hohman, Megan Maher, David Koski, Xavier Suau, Titus Barik, and Dominik Moritz. 2022. Symphony: Composing Interactive Interfaces for Machine Learning. In Proceedings of the 2022 CHI Conference on Human Factors in Computing Systems (CHI '22). Association for Computing Machinery, New York, NY, USA, Article 210, 1–14. https://doi.org/10.1145/3491102.3502102dc.relation.haspart
Has partBäuerle, A., Albus, P., Störk, R. et al. exploRNN: teaching recurrent neural networks through visual exploration. Vis Comput (2022). https://doi.org/10.1007/s00371-022-02593-0dc.relation.haspart
Has partAlex Bäuerle, Christian van Onzenoodt, and Timo Ropinski. “Net2Vis– A Visual Grammar for Automatically Generating Publication-Tailored CNN Architecture Visualizations.” In: IEEE Transactions on Visualization and Computer Graphics 27.6 (2021), pp. 2980–2991. https://doi.org/10.1109/TVCG.2021.3057483dc.relation.haspart
LicenseCC BY-NC-SA 4.0 Internationaldc.rights
Link to license texthttps://creativecommons.org/licenses/by-nc-sa/4.0dc.rights.uri
KeywordNeural Network Visualizationdc.subject
KeywordNeural Network Introspectiondc.subject
KeywordExplainabilitydc.subject
Dewey Decimal GroupDDC 620 / Engineering & allied operationsdc.subject.ddc
LCSHNeural networks (Computer science)dc.subject.lcsh
TitleVisualization-based neural network introspectiondc.title
Resource typeDissertationdc.type
Date of acceptance2022-12-21dcterms.dateAccepted
RefereeRopinski, Timodc.contributor.referee
RefereeWattenberg, Martindc.contributor.referee
DOIhttp://dx.doi.org/10.18725/OPARU-47825dc.identifier.doi
PPN1840071060dc.identifier.ppn
URNhttp://nbn-resolving.de/urn:nbn:de:bsz:289-oparu-47901-8dc.identifier.urn
GNDNeuronales Netzdc.subject.gnd
FacultyFakultät für Ingenieurwissenschaften, Informatik und Psychologieuulm.affiliationGeneral
InstitutionInstitut für Medieninformatikuulm.affiliationSpecific
Grantor of degreeFakultät für Ingenieurwissenschaften, Informatik und Psychologieuulm.thesisGrantor
DCMI TypeTextuulm.typeDCMI
CategoryPublikationenuulm.category
Bibliographyuulmuulm.bibliographie


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