Very proud of the last effort from our group! Our tutorial paper on deep learning for graphs will be published as an invited paper on the Neural Networks journal!
Check out a preliminary version on the Arxiv!
Very proud of the last effort from our group! Our tutorial paper on deep learning for graphs will be published as an invited paper on the Neural Networks journal!
Check out a preliminary version on the Arxiv!
If you work in AI and you are willing to contribute to the worldwide fight against COVID-19 please consider joining the CLAIRE-COVID19 task force. I am coordinating the workgroup on omics, chemical and clinical data processing.
You can have a look at the first result of our pan-european collaboration which has been released here: it is a curated repository of protein-viral-drug-disease interactions for helping research in drug repurposing, bio-informatics, etc.
Congratulations to Alessio Gravina, for his joint Stanford-UNIPI thesis on deep learning for graphs hitting the news:
Many congratulations to Francesca Lizzi for winning the best Ph.D. project award at BIOSTEC 2020 with her thesis project on “Deep-learning based analysis of mammograms to improve the estimation of breast cancer risk”. Terrific job!
The 2019/20 edition of the ISPR course will start with the first lecture on
THURSDAY 20 FEBRUARY 2020 – h. 14-16
CLASSROOM L1 – POLO FIBONACCI (First Floor)
See you there!
Great success at ESANN this year, with 5 papers in: congrats to Daniele, Francesco, Federico and Marco!!
The H2020 project TEACHING “A computing Toolkit for building Efficient Autonomous appliCations leveraging Humanistic INtelliGence” is about to take off! Kickoff meeting in Bruxelles this week. Stay tuned…
Our work on MusAE, an adversarial autoencoder for music generation, has just been accepted at ECAI2020. Congratulations to Andrea for his first paper! Soon on the Arxiv..
Check out our newly accepted journal paper on discovering and measuring the confounding effect of data attributes in biomedical tasks. Preprint available on the Arvix. Congratulations to Elisa!
Our paper on fragment-based molecule generation just got accepted at AISTATS 2020: congratulations to Marco Podda for the achievement! Soon on the Arxiv.