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ConferenceCall 2024 03 20: Difference between revisions

Ontolog Forum

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== Resources ==
== Resources ==
* [https://bit.ly/3TDfNqM Slides]
* [https://bit.ly/3Tzib0u Video Recording]
* [https://bit.ly/3Tzib0u Video Recording]



Revision as of 01:48, 21 March 2024

Session Foundations and Architectures
Duration 1 hour
Date/Time 20 Mar 2024 16:00 GMT
9:00am PDT/12:00pm EDT
4:00pm GMT/5:00pm CST
Convener Ravi Sharma

Ontology Summit 2024 Foundations and Architectures

Agenda

  • Till Mossakowski Neuro-symbolic integration for ontology-based classification of structured objects Slides
    • Abstract: Reference ontologies play an essential role in organising knowledge in the life sciences and other domains. They are built and maintained manually. Since this is an expensive process, many reference ontologies only cover a small fraction of their domain. We develop techniques that enable the automatic extension of the coverage of a reference ontology by extending it with entities that have not been manually added yet. The extension shall be faithful to the (often implicit) design decisions by the developers of the reference ontology. While this is a generic problem, our use case addresses the Chemical Entities of Biological Interest (ChEBI) ontology with classes of molecules, since the chemical domain is particularly suited to our approach. ChEBI provides annotations that represent the structure of chemical entities (e.g., molecules and functional groups).
      We show that classical machine learning approaches can outperform ClassyFire, a rule-based system representing the state of the art for the task of classifying new molecules, and is already being used for the extension of ChEBI. Moreover, we develop RoBERTa and Electra transformer neural networks that achieve even better performance. In addition, the axioms of the ontology can be used during the training of prediction models as a form of semantic loss function. Furthermore, we show that ontology pre-training can improve the performance of transformer networks for the task of prediction of toxicity of chemical molecules. Finally, we show that our model learns to focus attention on more meaningful chemical groups when making predictions with ontology pre-training than without, paving a path towards greater robustness and interpretability. This strategy has general applicability as a neuro-symbolic approach to embed meaningful semantics into neural networks.
    • Bio: Till Mossakowski is a professor of theoretical computer science at Otto-von-Guericke University of Magdeburg, Germany. He has co-designed the distributed ontology, model and specification language DOL, as well as the corresponding Heterogeneous Tool Set. His research interests are logic, knowledge representation, semantics, and neural-symbolic integration, as well as applications in energy network simulation models, chemistry and material sciences.
    • Video Recording

Conference Call Information

  • Date: Wednesday, 20 March 2024
  • Start Time: 9:00am PDT / 12:00pm EDT / 5:00pm CET / 4:00pm GMT / 1600 UTC
    • ref: World Clock
    • Note: The US and Canada are on Daylight Saving Time while Europe has not yet changed.
  • Expected Call Duration: 1 hour

The unabbreviated URL is: https://us02web.zoom.us/j/87630453240?pwd=YVYvZHRpelVqSkM5QlJ4aGJrbmZzQT09

Participants

Discussion

Resources

Previous Meetings

 Session
ConferenceCall 2024 03 13LLMs, Ontologies and KGs
ConferenceCall 2024 03 06LLMs, Ontologies and KGs
ConferenceCall 2024 02 28Foundations and Architectures
... further results

Next Meetings

 Session
ConferenceCall 2024 03 27Foundations and Architectures
ConferenceCall 2024 04 03Synthesis
ConferenceCall 2024 04 10Synthesis
... further results