<div class="csl-bib-body">
<div class="csl-entry">Babaiee, Z., Mohseni Kiasari, P., Daniela L Rus, & Grosu, R. (2025). The Quest for Universal Master Key Filters in DS-CNNs. In <i>Advances in Neural Information Processing Systems 39: Annual Conference on Neural Information Processing Systems 2025, NeurIPS 2025, Mexico City, MX, November 30 - December 5, 2025</i>. NeurIPS 2025, United States of America (the).</div>
</div>
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/222788
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dc.description.abstract
A recent study has proposed the ``Master Key Filters Hypothesis" for convolutional neural network filters. This paper extends this hypothesis by radically constraining its scope to a single set of just 8 universal filters that depthwise separable convolutional networks inherently converge to. While conventional DS-CNNs employ thousands of distinct trained filters, our analysis reveals these filters are predominantly linear shifts (ax+b) of our discovered universal set. Through systematic unsupervised search, we extracted these fundamental patterns across different architectures and datasets. Remarkably, networks initialized with these 8 unique frozen filters achieve over 80% ImageNet accuracy, and even outperform models with thousands of trainable parameters when applied to smaller datasets. The identified master key filters closely match Difference of Gaussians (DoGs), Gaussians, and their derivatives, structures that are not only fundamental to classical image processing but also strikingly similar to receptive fields in mammalian visual systems. Our findings provide compelling evidence that depthwise convolutional layers naturally gravitate toward this fundamental set of spatial operators regardless of task or architecture. This work offers new insights for understanding generalization and transfer learning through the universal language of these master key filters.
The Quest for Universal Master Key Filters in DS-CNNs
en
dc.type
Inproceedings
en
dc.type
Konferenzbeitrag
de
dc.contributor.affiliation
Massachusetts Institute of Technology
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dc.type.category
Full-Paper Contribution
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tuw.booktitle
Advances in Neural Information Processing Systems 39: Annual Conference on Neural Information Processing Systems 2025, NeurIPS 2025, Mexico City, MX, November 30 - December 5, 2025
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tuw.peerreviewed
true
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tuw.researchTopic.id
I2
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tuw.researchTopic.name
Computer Engineering and Software-Intensive Systems
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tuw.researchTopic.value
100
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tuw.publication.orgunit
E191-01 - Forschungsbereich Cyber-Physical Systems
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tuw.publication.orgunit
E056-17 - Fachbereich Trustworthy Autonomous Cyber-Physical Systems
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tuw.author.orcid
0000-0002-8219-005X
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tuw.author.orcid
0000-0001-5473-3566
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tuw.author.orcid
0000-0001-5715-2142
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tuw.event.name
NeurIPS 2025
en
tuw.event.startdate
30-11-2025
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tuw.event.enddate
05-12-2025
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tuw.event.online
On Site
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tuw.event.type
Event for scientific audience
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tuw.event.country
US
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tuw.event.presenter
Babaiee, Zahra
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wb.sciencebranch
Informatik
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wb.sciencebranch.oefos
1020
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wb.sciencebranch.value
100
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item.openairetype
conference paper
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item.openairecristype
http://purl.org/coar/resource_type/c_5794
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item.cerifentitytype
Publications
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item.languageiso639-1
en
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item.grantfulltext
none
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item.fulltext
no Fulltext
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crisitem.author.dept
E191-01 - Forschungsbereich Cyber-Physical Systems
-
crisitem.author.dept
E191-01 - Forschungsbereich Cyber-Physical Systems
-
crisitem.author.dept
Massachusetts Institute of Technology
-
crisitem.author.dept
E191-01 - Forschungsbereich Cyber-Physical Systems